SlideShare ist ein Scribd-Unternehmen logo
1 von 2
Downloaden Sie, um offline zu lesen
IJSRD - International Journal for Scientific Research & Development| Vol. 3, Issue 10, 2015 | ISSN (online): 2321-0613
All rights reserved by www.ijsrd.com 1016
Product Quality Analysis based on online Reviews
Miss. Awhale Kaveri Tukaram1 Miss. Iyer Pooja Bhaskar2 Mr. Ghodekar Kalpesh Santaram3
Mr. G. B. Deshmukh4
1,2,3,4
Department of Computer Engineering
1,2,3,4
MES, College of Engineering Pune, India
Abstract— Customers satisfaction is the most important
criteria before buying any product. Technology today has
grown to such an extent that every smallest possible query is
found on internet. An individual can express his reviews
towards a product through Internet. This allows others to have
a brief idea about the product before buying one for them. In
this paper, we take into account all the challenges and
limitations encountered while reading the online reviews and
time being consumed in understanding quality of the product
from the reviews. We include several methods and algorithms
that help the consumer to understand the Quality of the
product in better way.
Key words: Aspect, Summarization, Categorization,
Reviews, comments
I. INTRODUCTION
As we know, we all are fond of shopping. In early days we
have to remove time from your busy schedule for shopping.
We all know technology is increasing day by day. Due to
advancement in technology shopping has become easy now
as has step to our house itself in the form of online shopping.
We simply sit at home and shop what we want and what we
need.
In early days before buying any product we ask other
people there opinion about the product, its quality and many
more. Whereas now it become easy as the information is
already available on the internet. The users are being given
the opportunity to write their reviews about the product
through internet. This has proved to be useful to other
consumers as well.
Apart from the star rating system, reading reviews
and getting a brief idea about the product is the preferred
choice. One of the main drawbacks of this review system is
that, ‘n’ number of users of a single product writes their
views. So before buying any product it has become a habit for
the users to refer the reviews at once and proceed with their
selection. But reading the number of reviews and then coming
to a conclusion is quite difficult. We come up with a solution
by making a categorization method.
II. RELATED WORKS
Multi-Document Summarization of Evaluative Text – When
an individual uploads review about any product it becomes
very easy for him/her to rate the quality or specify any defect
about a particular aspect. A product quality is decided after
analyzing the reviews obtained considering number of
aspects of the product. Also it becomes difficult for the
producer to identify the aspect of the product where
improvement is required. This leads to a situation where
summarization of the data is the must. This paper mainly
focuses on large amount of data that is been collected by
numerous websites.
In recent times many survey were conducted. A
survey conducted by JAKPAT, to find how many people refer
online reviews before buying any product. The conclusion of
the inspection turned out to be that, out of the total number of
consumers, 82.41% consumers believe in referring online
reviews before buying products, whether it be for online or
offline shopping. 95.41% of people often compare the
product reviews with reviews on other e-commerce websites.
Also 51.56% people believe in uploading positive reviews
once they buy a product, while the rest believe in uploading
negative reviews about a product.
Product Aspect Ranking and Its Applications:
Addresses an issue of enhancing the review system for the
benefit of companies, which use feedbacks of customer to
improve the quality of product in particular aspect. Consumer
reviews are important for both firms and the exploiter as it
has valuable knowledge. Huge number of reviews of product
is available based on different aspect of the commodity. The
customer always specifies the aspect while writing a review.
T But every person analyzing the reviews doesn’t take in
account every review in the system. Its time consuming and
confusing to go through each and every comment and to
decide which one to consider. There are 3 basic components:
1) every aspect of the product is identified and sorted, 2)
classifies on the basis of user’s expressions, 3) Lastly, ranking
is done. Using these algorithms are beneficial as it reduces
the difficulty. Probabilistic aspect ranking algorithm
recognizes important aspects, deferring the main aspect
quality is improvised.
III. FRAMEWORK
To get a convinced review about the product without reading
the number of comments is no easy. Here we are trying to
make it more convenient for the consumer to understand the
quality of the product. All that the consumer has to do is open
an e-commerce website, select the product of his own desire,
then simple pass the comments on the website as input to the
system. The system will pre-process the given comments
according to the product. The product quality will be
analyzed based on the aspects and the keywords that are
obtained from the reviews. The aspects will be analyzed
based on the reviews obtained and a short conclusion will be
made. Here we will be using two main algorithms namely –
Probabilistic Aspect Ranking Algorithm and Porter stemming
Algorithm.
In Probabilistic Aspect Ranking Algorithm the
aspects of the product are selected along with its related
reviews from the comment. For example, for the comment
say the “the touch is as smooth as butter”, here the aspect
touch is related to smooth as butter, so when we apply the
algorithm to this comment we get the relation as touch –
smooth. So on we can the relation for each and every aspect
mentioned in the comment.
Porter Stemming Algorithm plays the most
important role here. The consumer has complete freedom to
express his/her reviews about each aspect of the product. We
also know that when an individual is express his views, the
Product Quality Analysis based on online Reviews
(IJSRD/Vol. 3/Issue 10/2015/232)
All rights reserved by www.ijsrd.com 1017
words are not in their original form for example, the word
connect is often expressed as connections, connected etc. We
can come to a short conclusion saying that reviews are
expressed by adding prefixes, suffixes, using superlative
degrees, sometimes plural form of the word is used etc. So it
becomes necessary for the system to eliminate the extras and
form original word. The main reason in doing so is that, it is
not possible to store meaning of each and every form of the
word in the database.
IV. FUTURE WORK
We will further be expanding the idea as our project. Initially
we are planning to implement the idea for few electronic
products. The comments passed to the system as input will be
pre-processed and undergo through the probabilistic
algorithm so as to obtain the relation between the aspects and
its reviews. Then further undergo through the porter
stemming algorithm so as to obtain the original word and its
meaning as mentioned above. Once when the result is
obtained it is stored in the database too for the further use.
Next time when the comments of same product are passed to
the system, the system can directly display the output which
helps in reducing the processing time. It can further prove to
be helpful to the organizations. We know that whenever
improvement of a product is considered the organization has
to concentrate on all the aspect of the product as they are only
aware of the overall quality of the product. This review
system can also prove to be helpful to the organizations by
notifying the organizations about quality of each aspect.
Hence the rate of improvement in the product can change
drastically.
ACKNOWLEDGMENT
It gives us great pleasure in presenting a paper on
`PRODUCT QUALITY ANALYSIS BASED ON ONLINE
RE-VIEWS.'. We are really grateful to them for their kind
support. Their valuable suggestions were very helpful. I am
also grateful to Prof. N. F. Shaikh, Head of Computer
Engineering Department, Modern Education Society College
of Engineering, Pune for his indispensable support,
suggestions. In the end our special thanks to Other Professors
for providing various resources.
REFERENCES
[1] An Efiicient product aspect ranking and its application: A
reivew Shahuraj Patil, Joti Raghatwan International Journal
of Science and Research (IJSR) ISSN (Online): 2319-7064
Impact Factor (2012): 3.358
[2] Multi-Document Summarization of Evaluative Text
Giuseppe Carenini, Raymond Ng, and Adam Pauls
University of British Columbia Vancouver, Canada
[3] Product Aspect Ranking and its Applications Zheng-Jun Zha,
Jianxing Yu, Jinhui Tang, Meng Wang, Tat-Seng Chua IEEE
TRANSACTIONS ON KNOWLEDGE AND DATA
ENGINEERING, VOL. 26, NO. 5, MAY 2014
[4] Product Aspect Ranking Techniques: A Survey Rutuja Tikait,
Ranjana Badre, Mayura Kinikar International Journal of
Innovative Research in Computer and Communication
Engineering (An ISO 3297: 2007 Certified Organization)
Vol. 2, Issue 11, November 2014.

Weitere Àhnliche Inhalte

Was ist angesagt?

APPLYING OPINION MINING TO ORGANIZE WEB OPINIONS
APPLYING OPINION MINING TO ORGANIZE WEB OPINIONSAPPLYING OPINION MINING TO ORGANIZE WEB OPINIONS
APPLYING OPINION MINING TO ORGANIZE WEB OPINIONSIJCSEA Journal
 
Recommending the Appropriate Products for target user in E-commerce using SBT...
Recommending the Appropriate Products for target user in E-commerce using SBT...Recommending the Appropriate Products for target user in E-commerce using SBT...
Recommending the Appropriate Products for target user in E-commerce using SBT...IRJET Journal
 
IRJET - Online Product Scoring based on Sentiment based Review Analysis
IRJET - Online Product Scoring based on Sentiment based Review AnalysisIRJET - Online Product Scoring based on Sentiment based Review Analysis
IRJET - Online Product Scoring based on Sentiment based Review AnalysisIRJET Journal
 
IRJET- E-Commerce Recommendation based on Users Rating Data
IRJET-  	  E-Commerce Recommendation based on Users Rating DataIRJET-  	  E-Commerce Recommendation based on Users Rating Data
IRJET- E-Commerce Recommendation based on Users Rating DataIRJET Journal
 

Was ist angesagt? (6)

Usability Testing
Usability TestingUsability Testing
Usability Testing
 
APPLYING OPINION MINING TO ORGANIZE WEB OPINIONS
APPLYING OPINION MINING TO ORGANIZE WEB OPINIONSAPPLYING OPINION MINING TO ORGANIZE WEB OPINIONS
APPLYING OPINION MINING TO ORGANIZE WEB OPINIONS
 
Recommending the Appropriate Products for target user in E-commerce using SBT...
Recommending the Appropriate Products for target user in E-commerce using SBT...Recommending the Appropriate Products for target user in E-commerce using SBT...
Recommending the Appropriate Products for target user in E-commerce using SBT...
 
IRJET - Online Product Scoring based on Sentiment based Review Analysis
IRJET - Online Product Scoring based on Sentiment based Review AnalysisIRJET - Online Product Scoring based on Sentiment based Review Analysis
IRJET - Online Product Scoring based on Sentiment based Review Analysis
 
Mahendra nath
Mahendra nathMahendra nath
Mahendra nath
 
IRJET- E-Commerce Recommendation based on Users Rating Data
IRJET-  	  E-Commerce Recommendation based on Users Rating DataIRJET-  	  E-Commerce Recommendation based on Users Rating Data
IRJET- E-Commerce Recommendation based on Users Rating Data
 

Andere mochten auch

Karomi Technology Corporate Capability Showcase
Karomi Technology Corporate Capability ShowcaseKaromi Technology Corporate Capability Showcase
Karomi Technology Corporate Capability ShowcaseKaromi Technology
 
Karomi Brand Asset Management
Karomi Brand Asset ManagementKaromi Brand Asset Management
Karomi Brand Asset ManagementKaromi Technology
 
alumni interaciton nvitation - 08-07-16
alumni interaciton nvitation - 08-07-16alumni interaciton nvitation - 08-07-16
alumni interaciton nvitation - 08-07-16ANNAPURANI VAIDYANATHAN
 
Dobeles Valsts ģimnāzijas dejotāji_2015
Dobeles Valsts ģimnāzijas dejotāji_2015Dobeles Valsts ģimnāzijas dejotāji_2015
Dobeles Valsts ģimnāzijas dejotāji_2015Kristine Pakule
 
research audit
research auditresearch audit
research auditAmira Amer
 
Content marketing for the addiction treatment community
Content marketing for the addiction treatment communityContent marketing for the addiction treatment community
Content marketing for the addiction treatment communityDouglas J. Edwards
 
Didactic aproach By Juan Carlos Corrales
Didactic aproach By Juan Carlos CorralesDidactic aproach By Juan Carlos Corrales
Didactic aproach By Juan Carlos Corraleslagarto28
 
Jaunatnes akadēmija Lietuvā
Jaunatnes akadēmija Lietuvā Jaunatnes akadēmija Lietuvā
Jaunatnes akadēmija Lietuvā Kristine Pakule
 
Apostila de redação
Apostila de redaçãoApostila de redação
Apostila de redaçãoELISA SABINO
 
Sargā savu Tēvu zemi_2016
Sargā savu Tēvu zemi_2016Sargā savu Tēvu zemi_2016
Sargā savu Tēvu zemi_2016Kristine Pakule
 
Blackout vecākiem 2015
Blackout vecākiem 2015Blackout vecākiem 2015
Blackout vecākiem 2015Kristine Pakule
 
Erasmus + Projektbespraechung Oktober 2015
Erasmus + Projektbespraechung Oktober 2015Erasmus + Projektbespraechung Oktober 2015
Erasmus + Projektbespraechung Oktober 2015Kristine Pakule
 

Andere mochten auch (16)

Karomi Technology Corporate Capability Showcase
Karomi Technology Corporate Capability ShowcaseKaromi Technology Corporate Capability Showcase
Karomi Technology Corporate Capability Showcase
 
Chess31
Chess31Chess31
Chess31
 
Karomi Brand Asset Management
Karomi Brand Asset ManagementKaromi Brand Asset Management
Karomi Brand Asset Management
 
alumni interaciton nvitation - 08-07-16
alumni interaciton nvitation - 08-07-16alumni interaciton nvitation - 08-07-16
alumni interaciton nvitation - 08-07-16
 
Dobeles Valsts ģimnāzijas dejotāji_2015
Dobeles Valsts ģimnāzijas dejotāji_2015Dobeles Valsts ģimnāzijas dejotāji_2015
Dobeles Valsts ģimnāzijas dejotāji_2015
 
LAS MARAVILLAS
LAS MARAVILLASLAS MARAVILLAS
LAS MARAVILLAS
 
Psychology
PsychologyPsychology
Psychology
 
research audit
research auditresearch audit
research audit
 
Content marketing for the addiction treatment community
Content marketing for the addiction treatment communityContent marketing for the addiction treatment community
Content marketing for the addiction treatment community
 
Didactic aproach By Juan Carlos Corrales
Didactic aproach By Juan Carlos CorralesDidactic aproach By Juan Carlos Corrales
Didactic aproach By Juan Carlos Corrales
 
Jaunatnes akadēmija Lietuvā
Jaunatnes akadēmija Lietuvā Jaunatnes akadēmija Lietuvā
Jaunatnes akadēmija Lietuvā
 
Apostila de redação
Apostila de redaçãoApostila de redação
Apostila de redação
 
Sargā savu Tēvu zemi_2016
Sargā savu Tēvu zemi_2016Sargā savu Tēvu zemi_2016
Sargā savu Tēvu zemi_2016
 
Blackout vecākiem 2015
Blackout vecākiem 2015Blackout vecākiem 2015
Blackout vecākiem 2015
 
java program
java programjava program
java program
 
Erasmus + Projektbespraechung Oktober 2015
Erasmus + Projektbespraechung Oktober 2015Erasmus + Projektbespraechung Oktober 2015
Erasmus + Projektbespraechung Oktober 2015
 

Ähnlich wie Product Quality Analysis based on online Reviews

IRJET- A New Approach to Product Recommendation Systems
IRJET-  	  A New Approach to Product Recommendation SystemsIRJET-  	  A New Approach to Product Recommendation Systems
IRJET- A New Approach to Product Recommendation SystemsIRJET Journal
 
IRJET- Spotting and Removing Fake Product Review in Consumer Rating Reviews
IRJET- Spotting and Removing Fake Product Review in Consumer Rating ReviewsIRJET- Spotting and Removing Fake Product Review in Consumer Rating Reviews
IRJET- Spotting and Removing Fake Product Review in Consumer Rating ReviewsIRJET Journal
 
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSSentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSIRJET Journal
 
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSSentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSIRJET Journal
 
Automatic Recommendation of Trustworthy Users in Online Product Rating Sites
Automatic Recommendation of Trustworthy Users in Online Product Rating SitesAutomatic Recommendation of Trustworthy Users in Online Product Rating Sites
Automatic Recommendation of Trustworthy Users in Online Product Rating SitesIRJET Journal
 
Sentimental Analysis and Opinion Mining on Online Customer Review
Sentimental Analysis and Opinion Mining on Online Customer ReviewSentimental Analysis and Opinion Mining on Online Customer Review
Sentimental Analysis and Opinion Mining on Online Customer ReviewIRJET Journal
 
IRJET- Physical Design of Approximate Multiplier for Area and Power Efficiency
IRJET- Physical Design of Approximate Multiplier for Area and Power EfficiencyIRJET- Physical Design of Approximate Multiplier for Area and Power Efficiency
IRJET- Physical Design of Approximate Multiplier for Area and Power EfficiencyIRJET Journal
 
IRJET- Product Aspect Ranking and its Application
IRJET-  	  Product Aspect Ranking and its ApplicationIRJET-  	  Product Aspect Ranking and its Application
IRJET- Product Aspect Ranking and its ApplicationIRJET Journal
 
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...kevig
 
E-Commerce Product Rating Based on Customer Review
E-Commerce Product Rating Based on Customer ReviewE-Commerce Product Rating Based on Customer Review
E-Commerce Product Rating Based on Customer ReviewIRJET Journal
 
FAKE PRODUCT PAPER PRESENTATION.pptx
FAKE PRODUCT PAPER PRESENTATION.pptxFAKE PRODUCT PAPER PRESENTATION.pptx
FAKE PRODUCT PAPER PRESENTATION.pptxNareshKumar675331
 
Product Aspect Ranking using Sentiment Analysis: A Survey
Product Aspect Ranking using Sentiment Analysis: A SurveyProduct Aspect Ranking using Sentiment Analysis: A Survey
Product Aspect Ranking using Sentiment Analysis: A SurveyIRJET Journal
 
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE IAEME Publication
 
iaetsd Co extracting opinion targets and opinion words from online reviews ba...
iaetsd Co extracting opinion targets and opinion words from online reviews ba...iaetsd Co extracting opinion targets and opinion words from online reviews ba...
iaetsd Co extracting opinion targets and opinion words from online reviews ba...Iaetsd Iaetsd
 
Opinion mining of customer reviews
Opinion mining of customer reviewsOpinion mining of customer reviews
Opinion mining of customer reviewsIJDKP
 
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...Review on Opinion Targets and Opinion Words Extraction Techniques from Online...
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...IRJET Journal
 
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...IRJET Journal
 
IRJET- Efficiently Analyzing and Detecting Fake Reviews
IRJET- Efficiently Analyzing and Detecting Fake ReviewsIRJET- Efficiently Analyzing and Detecting Fake Reviews
IRJET- Efficiently Analyzing and Detecting Fake ReviewsIRJET Journal
 
Book recommendation system using opinion mining technique
Book recommendation system using opinion mining techniqueBook recommendation system using opinion mining technique
Book recommendation system using opinion mining techniqueeSAT Journals
 
Recommender System- Analyzing products by mining Data Streams
Recommender System- Analyzing products by mining Data StreamsRecommender System- Analyzing products by mining Data Streams
Recommender System- Analyzing products by mining Data StreamsIRJET Journal
 

Ähnlich wie Product Quality Analysis based on online Reviews (20)

IRJET- A New Approach to Product Recommendation Systems
IRJET-  	  A New Approach to Product Recommendation SystemsIRJET-  	  A New Approach to Product Recommendation Systems
IRJET- A New Approach to Product Recommendation Systems
 
IRJET- Spotting and Removing Fake Product Review in Consumer Rating Reviews
IRJET- Spotting and Removing Fake Product Review in Consumer Rating ReviewsIRJET- Spotting and Removing Fake Product Review in Consumer Rating Reviews
IRJET- Spotting and Removing Fake Product Review in Consumer Rating Reviews
 
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSSentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
 
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRSSentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
Sentiment Analysis of Product Reviews and Trustworthiness Evaluation using TRS
 
Automatic Recommendation of Trustworthy Users in Online Product Rating Sites
Automatic Recommendation of Trustworthy Users in Online Product Rating SitesAutomatic Recommendation of Trustworthy Users in Online Product Rating Sites
Automatic Recommendation of Trustworthy Users in Online Product Rating Sites
 
Sentimental Analysis and Opinion Mining on Online Customer Review
Sentimental Analysis and Opinion Mining on Online Customer ReviewSentimental Analysis and Opinion Mining on Online Customer Review
Sentimental Analysis and Opinion Mining on Online Customer Review
 
IRJET- Physical Design of Approximate Multiplier for Area and Power Efficiency
IRJET- Physical Design of Approximate Multiplier for Area and Power EfficiencyIRJET- Physical Design of Approximate Multiplier for Area and Power Efficiency
IRJET- Physical Design of Approximate Multiplier for Area and Power Efficiency
 
IRJET- Product Aspect Ranking and its Application
IRJET-  	  Product Aspect Ranking and its ApplicationIRJET-  	  Product Aspect Ranking and its Application
IRJET- Product Aspect Ranking and its Application
 
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...
SENTIMENT ANALYSIS ON PRODUCT FEATURES BASED ON LEXICON APPROACH USING NATURA...
 
E-Commerce Product Rating Based on Customer Review
E-Commerce Product Rating Based on Customer ReviewE-Commerce Product Rating Based on Customer Review
E-Commerce Product Rating Based on Customer Review
 
FAKE PRODUCT PAPER PRESENTATION.pptx
FAKE PRODUCT PAPER PRESENTATION.pptxFAKE PRODUCT PAPER PRESENTATION.pptx
FAKE PRODUCT PAPER PRESENTATION.pptx
 
Product Aspect Ranking using Sentiment Analysis: A Survey
Product Aspect Ranking using Sentiment Analysis: A SurveyProduct Aspect Ranking using Sentiment Analysis: A Survey
Product Aspect Ranking using Sentiment Analysis: A Survey
 
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE
PRODUCT REPUTATION AND GLOBAL RATING IN E-COMMERCE
 
iaetsd Co extracting opinion targets and opinion words from online reviews ba...
iaetsd Co extracting opinion targets and opinion words from online reviews ba...iaetsd Co extracting opinion targets and opinion words from online reviews ba...
iaetsd Co extracting opinion targets and opinion words from online reviews ba...
 
Opinion mining of customer reviews
Opinion mining of customer reviewsOpinion mining of customer reviews
Opinion mining of customer reviews
 
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...Review on Opinion Targets and Opinion Words Extraction Techniques from Online...
Review on Opinion Targets and Opinion Words Extraction Techniques from Online...
 
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...
IRJET - Sentiment Similarity Analysis and Building Users Trust from E-Commerc...
 
IRJET- Efficiently Analyzing and Detecting Fake Reviews
IRJET- Efficiently Analyzing and Detecting Fake ReviewsIRJET- Efficiently Analyzing and Detecting Fake Reviews
IRJET- Efficiently Analyzing and Detecting Fake Reviews
 
Book recommendation system using opinion mining technique
Book recommendation system using opinion mining techniqueBook recommendation system using opinion mining technique
Book recommendation system using opinion mining technique
 
Recommender System- Analyzing products by mining Data Streams
Recommender System- Analyzing products by mining Data StreamsRecommender System- Analyzing products by mining Data Streams
Recommender System- Analyzing products by mining Data Streams
 

Mehr von IJSRD

#IJSRD #Research Paper Publication
#IJSRD #Research Paper Publication#IJSRD #Research Paper Publication
#IJSRD #Research Paper PublicationIJSRD
 
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...Maintaining Data Confidentiality in Association Rule Mining in Distributed En...
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...IJSRD
 
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...Performance and Emission characteristics of a Single Cylinder Four Stroke Die...
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...IJSRD
 
Preclusion of High and Low Pressure In Boiler by Using LABVIEW
Preclusion of High and Low Pressure In Boiler by Using LABVIEWPreclusion of High and Low Pressure In Boiler by Using LABVIEW
Preclusion of High and Low Pressure In Boiler by Using LABVIEWIJSRD
 
Prevention and Detection of Man in the Middle Attack on AODV Protocol
Prevention and Detection of Man in the Middle Attack on AODV ProtocolPrevention and Detection of Man in the Middle Attack on AODV Protocol
Prevention and Detection of Man in the Middle Attack on AODV ProtocolIJSRD
 
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...IJSRD
 
Evaluation the Effect of Machining Parameters on MRR of Mild Steel
Evaluation the Effect of Machining Parameters on MRR of Mild SteelEvaluation the Effect of Machining Parameters on MRR of Mild Steel
Evaluation the Effect of Machining Parameters on MRR of Mild SteelIJSRD
 
Filter unwanted messages from walls and blocking nonlegitimate user in osn
Filter unwanted messages from walls and blocking nonlegitimate user in osnFilter unwanted messages from walls and blocking nonlegitimate user in osn
Filter unwanted messages from walls and blocking nonlegitimate user in osnIJSRD
 
Keystroke Dynamics Authentication with Project Management System
Keystroke Dynamics Authentication with Project Management SystemKeystroke Dynamics Authentication with Project Management System
Keystroke Dynamics Authentication with Project Management SystemIJSRD
 
Diagnosing lungs cancer Using Neural Networks
Diagnosing lungs cancer Using Neural NetworksDiagnosing lungs cancer Using Neural Networks
Diagnosing lungs cancer Using Neural NetworksIJSRD
 
A Survey on Sentiment Analysis and Opinion Mining
A Survey on Sentiment Analysis and Opinion MiningA Survey on Sentiment Analysis and Opinion Mining
A Survey on Sentiment Analysis and Opinion MiningIJSRD
 
A Defect Prediction Model for Software Product based on ANFIS
A Defect Prediction Model for Software Product based on ANFISA Defect Prediction Model for Software Product based on ANFIS
A Defect Prediction Model for Software Product based on ANFISIJSRD
 
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...IJSRD
 
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy Numbers
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy NumbersSolving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy Numbers
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy NumbersIJSRD
 
Study of Clustering of Data Base in Education Sector Using Data Mining
Study of Clustering of Data Base in Education Sector Using Data MiningStudy of Clustering of Data Base in Education Sector Using Data Mining
Study of Clustering of Data Base in Education Sector Using Data MiningIJSRD
 
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...IJSRD
 
Investigation of Effect of Process Parameters on Maximum Temperature during F...
Investigation of Effect of Process Parameters on Maximum Temperature during F...Investigation of Effect of Process Parameters on Maximum Temperature during F...
Investigation of Effect of Process Parameters on Maximum Temperature during F...IJSRD
 
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a Rotavator
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a RotavatorReview Paper on Computer Aided Design & Analysis of Rotor Shaft of a Rotavator
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a RotavatorIJSRD
 
A Survey on Data Mining Techniques for Crime Hotspots Prediction
A Survey on Data Mining Techniques for Crime Hotspots PredictionA Survey on Data Mining Techniques for Crime Hotspots Prediction
A Survey on Data Mining Techniques for Crime Hotspots PredictionIJSRD
 
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...IJSRD
 

Mehr von IJSRD (20)

#IJSRD #Research Paper Publication
#IJSRD #Research Paper Publication#IJSRD #Research Paper Publication
#IJSRD #Research Paper Publication
 
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...Maintaining Data Confidentiality in Association Rule Mining in Distributed En...
Maintaining Data Confidentiality in Association Rule Mining in Distributed En...
 
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...Performance and Emission characteristics of a Single Cylinder Four Stroke Die...
Performance and Emission characteristics of a Single Cylinder Four Stroke Die...
 
Preclusion of High and Low Pressure In Boiler by Using LABVIEW
Preclusion of High and Low Pressure In Boiler by Using LABVIEWPreclusion of High and Low Pressure In Boiler by Using LABVIEW
Preclusion of High and Low Pressure In Boiler by Using LABVIEW
 
Prevention and Detection of Man in the Middle Attack on AODV Protocol
Prevention and Detection of Man in the Middle Attack on AODV ProtocolPrevention and Detection of Man in the Middle Attack on AODV Protocol
Prevention and Detection of Man in the Middle Attack on AODV Protocol
 
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...
Comparative Analysis of PAPR Reduction Techniques in OFDM Using Precoding Tec...
 
Evaluation the Effect of Machining Parameters on MRR of Mild Steel
Evaluation the Effect of Machining Parameters on MRR of Mild SteelEvaluation the Effect of Machining Parameters on MRR of Mild Steel
Evaluation the Effect of Machining Parameters on MRR of Mild Steel
 
Filter unwanted messages from walls and blocking nonlegitimate user in osn
Filter unwanted messages from walls and blocking nonlegitimate user in osnFilter unwanted messages from walls and blocking nonlegitimate user in osn
Filter unwanted messages from walls and blocking nonlegitimate user in osn
 
Keystroke Dynamics Authentication with Project Management System
Keystroke Dynamics Authentication with Project Management SystemKeystroke Dynamics Authentication with Project Management System
Keystroke Dynamics Authentication with Project Management System
 
Diagnosing lungs cancer Using Neural Networks
Diagnosing lungs cancer Using Neural NetworksDiagnosing lungs cancer Using Neural Networks
Diagnosing lungs cancer Using Neural Networks
 
A Survey on Sentiment Analysis and Opinion Mining
A Survey on Sentiment Analysis and Opinion MiningA Survey on Sentiment Analysis and Opinion Mining
A Survey on Sentiment Analysis and Opinion Mining
 
A Defect Prediction Model for Software Product based on ANFIS
A Defect Prediction Model for Software Product based on ANFISA Defect Prediction Model for Software Product based on ANFIS
A Defect Prediction Model for Software Product based on ANFIS
 
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...
Experimental Investigation of Granulated Blast Furnace Slag ond Quarry Dust a...
 
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy Numbers
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy NumbersSolving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy Numbers
Solving Fuzzy Matrix Games Defuzzificated by Trapezoidal Parabolic Fuzzy Numbers
 
Study of Clustering of Data Base in Education Sector Using Data Mining
Study of Clustering of Data Base in Education Sector Using Data MiningStudy of Clustering of Data Base in Education Sector Using Data Mining
Study of Clustering of Data Base in Education Sector Using Data Mining
 
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...
Fault Tolerance in Big Data Processing Using Heartbeat Messages and Data Repl...
 
Investigation of Effect of Process Parameters on Maximum Temperature during F...
Investigation of Effect of Process Parameters on Maximum Temperature during F...Investigation of Effect of Process Parameters on Maximum Temperature during F...
Investigation of Effect of Process Parameters on Maximum Temperature during F...
 
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a Rotavator
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a RotavatorReview Paper on Computer Aided Design & Analysis of Rotor Shaft of a Rotavator
Review Paper on Computer Aided Design & Analysis of Rotor Shaft of a Rotavator
 
A Survey on Data Mining Techniques for Crime Hotspots Prediction
A Survey on Data Mining Techniques for Crime Hotspots PredictionA Survey on Data Mining Techniques for Crime Hotspots Prediction
A Survey on Data Mining Techniques for Crime Hotspots Prediction
 
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...
Studies on Physico - Mechanical Properties of Chloroprene Rubber Vulcanizate ...
 

KĂŒrzlich hochgeladen

How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17Celine George
 
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)lakshayb543
 
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSGRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSJoshuaGantuangco2
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Celine George
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...JhezDiaz1
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...SeĂĄn Kennedy
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptxmary850239
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Celine George
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptxmary850239
 
Full Stack Web Development Course for Beginners
Full Stack Web Development Course  for BeginnersFull Stack Web Development Course  for Beginners
Full Stack Web Development Course for BeginnersSabitha Banu
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfTechSoup
 
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptxAUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptxiammrhaywood
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfPatidar M
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatYousafMalik24
 
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxMusic 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxleah joy valeriano
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfJemuel Francisco
 

KĂŒrzlich hochgeladen (20)

How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17
 
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)
Visit to a blind student's school🧑‍🩯🧑‍🩯(community medicine)
 
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTSGRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
GRADE 4 - SUMMATIVE TEST QUARTER 4 ALL SUBJECTS
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...
 
4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx4.18.24 Movement Legacies, Reflection, and Review.pptx
4.18.24 Movement Legacies, Reflection, and Review.pptx
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx4.16.24 Poverty and Precarity--Desmond.pptx
4.16.24 Poverty and Precarity--Desmond.pptx
 
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptxYOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
 
Full Stack Web Development Course for Beginners
Full Stack Web Development Course  for BeginnersFull Stack Web Development Course  for Beginners
Full Stack Web Development Course for Beginners
 
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptxYOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
 
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptxLEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
 
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptxAUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdf
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice great
 
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptxMusic 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
Music 9 - 4th quarter - Vocal Music of the Romantic Period.pptx
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
 

Product Quality Analysis based on online Reviews

  • 1. IJSRD - International Journal for Scientific Research & Development| Vol. 3, Issue 10, 2015 | ISSN (online): 2321-0613 All rights reserved by www.ijsrd.com 1016 Product Quality Analysis based on online Reviews Miss. Awhale Kaveri Tukaram1 Miss. Iyer Pooja Bhaskar2 Mr. Ghodekar Kalpesh Santaram3 Mr. G. B. Deshmukh4 1,2,3,4 Department of Computer Engineering 1,2,3,4 MES, College of Engineering Pune, India Abstract— Customers satisfaction is the most important criteria before buying any product. Technology today has grown to such an extent that every smallest possible query is found on internet. An individual can express his reviews towards a product through Internet. This allows others to have a brief idea about the product before buying one for them. In this paper, we take into account all the challenges and limitations encountered while reading the online reviews and time being consumed in understanding quality of the product from the reviews. We include several methods and algorithms that help the consumer to understand the Quality of the product in better way. Key words: Aspect, Summarization, Categorization, Reviews, comments I. INTRODUCTION As we know, we all are fond of shopping. In early days we have to remove time from your busy schedule for shopping. We all know technology is increasing day by day. Due to advancement in technology shopping has become easy now as has step to our house itself in the form of online shopping. We simply sit at home and shop what we want and what we need. In early days before buying any product we ask other people there opinion about the product, its quality and many more. Whereas now it become easy as the information is already available on the internet. The users are being given the opportunity to write their reviews about the product through internet. This has proved to be useful to other consumers as well. Apart from the star rating system, reading reviews and getting a brief idea about the product is the preferred choice. One of the main drawbacks of this review system is that, ‘n’ number of users of a single product writes their views. So before buying any product it has become a habit for the users to refer the reviews at once and proceed with their selection. But reading the number of reviews and then coming to a conclusion is quite difficult. We come up with a solution by making a categorization method. II. RELATED WORKS Multi-Document Summarization of Evaluative Text – When an individual uploads review about any product it becomes very easy for him/her to rate the quality or specify any defect about a particular aspect. A product quality is decided after analyzing the reviews obtained considering number of aspects of the product. Also it becomes difficult for the producer to identify the aspect of the product where improvement is required. This leads to a situation where summarization of the data is the must. This paper mainly focuses on large amount of data that is been collected by numerous websites. In recent times many survey were conducted. A survey conducted by JAKPAT, to find how many people refer online reviews before buying any product. The conclusion of the inspection turned out to be that, out of the total number of consumers, 82.41% consumers believe in referring online reviews before buying products, whether it be for online or offline shopping. 95.41% of people often compare the product reviews with reviews on other e-commerce websites. Also 51.56% people believe in uploading positive reviews once they buy a product, while the rest believe in uploading negative reviews about a product. Product Aspect Ranking and Its Applications: Addresses an issue of enhancing the review system for the benefit of companies, which use feedbacks of customer to improve the quality of product in particular aspect. Consumer reviews are important for both firms and the exploiter as it has valuable knowledge. Huge number of reviews of product is available based on different aspect of the commodity. The customer always specifies the aspect while writing a review. T But every person analyzing the reviews doesn’t take in account every review in the system. Its time consuming and confusing to go through each and every comment and to decide which one to consider. There are 3 basic components: 1) every aspect of the product is identified and sorted, 2) classifies on the basis of user’s expressions, 3) Lastly, ranking is done. Using these algorithms are beneficial as it reduces the difficulty. Probabilistic aspect ranking algorithm recognizes important aspects, deferring the main aspect quality is improvised. III. FRAMEWORK To get a convinced review about the product without reading the number of comments is no easy. Here we are trying to make it more convenient for the consumer to understand the quality of the product. All that the consumer has to do is open an e-commerce website, select the product of his own desire, then simple pass the comments on the website as input to the system. The system will pre-process the given comments according to the product. The product quality will be analyzed based on the aspects and the keywords that are obtained from the reviews. The aspects will be analyzed based on the reviews obtained and a short conclusion will be made. Here we will be using two main algorithms namely – Probabilistic Aspect Ranking Algorithm and Porter stemming Algorithm. In Probabilistic Aspect Ranking Algorithm the aspects of the product are selected along with its related reviews from the comment. For example, for the comment say the “the touch is as smooth as butter”, here the aspect touch is related to smooth as butter, so when we apply the algorithm to this comment we get the relation as touch – smooth. So on we can the relation for each and every aspect mentioned in the comment. Porter Stemming Algorithm plays the most important role here. The consumer has complete freedom to express his/her reviews about each aspect of the product. We also know that when an individual is express his views, the
  • 2. Product Quality Analysis based on online Reviews (IJSRD/Vol. 3/Issue 10/2015/232) All rights reserved by www.ijsrd.com 1017 words are not in their original form for example, the word connect is often expressed as connections, connected etc. We can come to a short conclusion saying that reviews are expressed by adding prefixes, suffixes, using superlative degrees, sometimes plural form of the word is used etc. So it becomes necessary for the system to eliminate the extras and form original word. The main reason in doing so is that, it is not possible to store meaning of each and every form of the word in the database. IV. FUTURE WORK We will further be expanding the idea as our project. Initially we are planning to implement the idea for few electronic products. The comments passed to the system as input will be pre-processed and undergo through the probabilistic algorithm so as to obtain the relation between the aspects and its reviews. Then further undergo through the porter stemming algorithm so as to obtain the original word and its meaning as mentioned above. Once when the result is obtained it is stored in the database too for the further use. Next time when the comments of same product are passed to the system, the system can directly display the output which helps in reducing the processing time. It can further prove to be helpful to the organizations. We know that whenever improvement of a product is considered the organization has to concentrate on all the aspect of the product as they are only aware of the overall quality of the product. This review system can also prove to be helpful to the organizations by notifying the organizations about quality of each aspect. Hence the rate of improvement in the product can change drastically. ACKNOWLEDGMENT It gives us great pleasure in presenting a paper on `PRODUCT QUALITY ANALYSIS BASED ON ONLINE RE-VIEWS.'. We are really grateful to them for their kind support. Their valuable suggestions were very helpful. I am also grateful to Prof. N. F. Shaikh, Head of Computer Engineering Department, Modern Education Society College of Engineering, Pune for his indispensable support, suggestions. In the end our special thanks to Other Professors for providing various resources. REFERENCES [1] An Efiicient product aspect ranking and its application: A reivew Shahuraj Patil, Joti Raghatwan International Journal of Science and Research (IJSR) ISSN (Online): 2319-7064 Impact Factor (2012): 3.358 [2] Multi-Document Summarization of Evaluative Text Giuseppe Carenini, Raymond Ng, and Adam Pauls University of British Columbia Vancouver, Canada [3] Product Aspect Ranking and its Applications Zheng-Jun Zha, Jianxing Yu, Jinhui Tang, Meng Wang, Tat-Seng Chua IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, VOL. 26, NO. 5, MAY 2014 [4] Product Aspect Ranking Techniques: A Survey Rutuja Tikait, Ranjana Badre, Mayura Kinikar International Journal of Innovative Research in Computer and Communication Engineering (An ISO 3297: 2007 Certified Organization) Vol. 2, Issue 11, November 2014.