SlideShare ist ein Scribd-Unternehmen logo
1 von 23
Submitted by
II MCA,
PSNACET.
A review paper on various data mining techniques
Survey on varoius types of credit fraud and security
measures
Data mining in cloud computing
Survey paper on clustering techniques
A data mining framework for prevention and detection
of financial statement fraud
 A review paper:mining educational data to forecast
failure of engineering students
Data mining model for insurance trade in CRM system
Data mining
• Data mining is the exploration and analysis of large data sets, inorder to discover
meaningful pattern and rules.
• The objective of data mining is to design and work efficiently with large data sets.
• Data mining is the component of wider process called knowledge discovery from
database.
• Data mining is the process of analysing data from different perspectives and
summarizing the results as useful information
• Data mining is a multi-step process,requires accessing and preparing data for a
mining the data, data mining algorithm, analysing results and taking appropriate
action.
Why Data mining?
• Database analysis and decision support
 Market analysis and management : Target marketing, customer relation
management,market basket analysis ,cross selling,market segmentation
 Risk analysis and management: Forecasting,customer retention,improved under
writing,quality control,competitive analysis
 Fraud detection and management
• Other applications
Text mining
Intelligent query answering
In data mining the data is mined using two learning approaches i.e.supervised
learning and unsupervised learning
supervised learning
In supervised learning (often also called directed data mining) the variables
under investigation can be split into two groups: explanatory variables and other is
dependent variable.The goal of analysis is to specify a relationship between the
dependent variable and explanatory variable the as it is done in regression analysis.
Unsupervised learning
In unsupervised learning , all the variables are treated in same way, there is no
distinction between dependent and explantory variables.
Tasks Of Data Mining
Data Mining as a term for the specific classes of six activities or tasks as
follows:
Classification
Estimation
Prediction
Affinity grouping or association rules
Clustering
Description and visualization
The first three tasks- classification, estimation,and prediction rules are
examples of directed data mining or supervised learning. The next three
tasks are the examples of undirected data mining.
Classification
classification consits 0f examining the features of a newly
presented object and assigning to it a predefined class.
Estimation
Estimation deals with continuously valued outcomes.
Prediction
Any prediction can be thought of as classification or estimation.
Predictive tasks feel different because the records are classified according to
some predicted future behavior or estimated future value.
Association Rules
An association rule is a rule which implies certain association
relationships among a set of objects in a database.
Clustering
Clustering is the task of segmenting a diverse group into a number of
similar subgroup or cluster. In clustering , there are no predefined classes.
General Types of Cluster
Well separated cluster
Center-based cluster
Contiguous cluster
Density-based cluster
Shared property or conceptual cluster
Well separated cluster
A cluster is a set of point so that any point in acluster is nearest to every
other point in the cluster as compared to any other point that is not in the
cluster.
Center-based cluster
A cluster is a set of object such that an object in a cluster is nearest to the
“center” of a cluster, than to the center of any other cluster.The center of
cluster is often centroid.
Contiguous cluster
A cluster is a set of point so that a point in a cluster is nearest to one or
more other point in the cluster as compared to any point that is not in the
cluster.
Density-based cluster
A cluster is a dense region of points, which is separated by according to the
low-density regions, from other regions that is of high density.
Shared property
Find clusters that share some common property or represent a particular
concept.
Description and visualization
Data visualization is a powerful form of descriptive data mining. It is not
always easy to come up with meaning visualizations, but the right picture really
can be worth a thousand association rules since the human beings are extremely
practiced at extracting meaning from visual scenes.
Data mining: KDD process
Steps of a KDD process
•Learning the application domain
relevant prior knowledge and goals of application
•Creating a target data set: data selection
•Data cleaning and preprocessing: (may take 60% of effort!)
•Data reduction and transformation
Find useful features, dimensionality/variable reduction, invariant representation
•Choosing functions of data mining
 summarization, classification, regression, association, clustering
•Choosing the mining algorithm(s)
•Data mining: search for patterns of interest
•Pattern evaluation and knowledge presentation
visualization, transformation, removing redundant patterns, etc.
•Use of discovered knowledge
Major Issues in Data Mining
Mining methodology
•Mining different kinds of knowledge from diverse data types, e.g., bio, stream, Web
•Performance: efficiency, effectiveness, and scalability
•Pattern evaluation: the interestingness problem
•Incorporation of background knowledge
•Handling noise and incomplete data
•Parallel, distributed and incremental mining methods
•Integration of the discovered knowledge with existing one: knowledge fusion
Data mining in various fields
Market Analysis and Management
• Where does the data come from?—Credit card transactions, loyalty cards,
discount coupons, customer complaint calls, plus (public) lifestyle studies
• Target marketing
Find clusters of “model” customers who share the same characteristics:
interest, income level, spending habits, etc.,
Determine customer purchasing patterns over time
• Cross-market analysis—Find associations/co-relations between product sales,
& predict based on such association
• Customer profiling—What types of customers buy what products
(clustering or classification)
Market Analysis and Management (cont)
•Customer requirement analysis
Identify the best products for different customers
Predict what factors will attract new customers
• Provision of summary information
Multidimensional summary reports
Statistical summary information (data central tendency and
variation)
Corporate Analysis & Risk Management
•Finance planning and asset evaluation
cash flow analysis and prediction
contingent claim analysis to evaluate assets
cross-sectional and time series analysis (financial-ratio, trend analysis, etc.)
•Resource planning
summarize and compare the resources and spending
•Competition
monitor competitors and market directions
group customers into classes and a class-based pricing procedure
set pricing strategy in a highly competitive market
Fraud Detection & Mining Unusual Patterns
•Approaches: Clustering & model construction for frauds, outlier analysis
•Applications: Health care, retail, credit card service, telecomm.
Auto insurance: ring of collisions
Money laundering: suspicious monetary transactions
Medical insurance
Professional patients, ring of doctors, and ring of references
Unnecessary or correlated screening tests
Telecommunications: phone-call fraud
Phone call model: destination of the call, duration, time of day or
week. Analyze patterns that deviate from an expected norm
Fraud Detection & Mining Unusual Patterns(contd)
Credit card fraud
Application fraud
Fake doctored card
Lost and stolen card
Duplicate site
Intercept fraud(postal service)
Mining to forecast failure of engineering students
Using this mining what are the problems affected by engineering
students and what is the solution to solve that particular problem.
Mining in Insurance trade in CRM system
The large data stored in CRM database is increasing rapidly. Many things are
hidden in database . Using this data mining technique we can retrieve the
data about CRM relationship in insurance.
Mining in cloud computing
Advantage in cloud:
 Reduced cost
 Increased storage
 Highly automated and high mobility
There are three types of services in cloud
Iaas(virtual machines, servers)
Paas(execution runtime,database,webserver)
Saas(email,games)
Conclusions
Data mining involves useful rules or interesting patterns from huge historical
data. Many data mining tasks are available and each of them further has many
techniques. Data mining is an interdisciplinary, artificial and intelligence,
integrated database, machine learning, statistics, etc. Data mining is a large
number of incomplete, noisy, fuzzy, random application of the data found in
hidden, regularity which are noy known by people in advance, but is potentially
useful and ultimately understandable information and knowledge of non-trivial
process.
Reference
[1]V.Saurkar,Vaibhav,Bhujade(data mining techniques)
[2]Amandeep Kaur Mann,Navneet Kaur(clustering)
[3]Avinash Ingole, DR.R.C.Thool(credit card fraud)
[4]Parikshit Prasad,Rattan Lal( cloud computing)
[5]Nasib Singh Gill, Rajan gupta(financial statement fraud)
[6]Komal S.Sahedani, B.Supriya Reddy(failure of Engineering students)
[7]C.Verhoef,Bas Donkers( Insurance in CRM model)
Data mining

Weitere ähnliche Inhalte

Was ist angesagt?

Introduction To Data Mining
Introduction To Data Mining   Introduction To Data Mining
Introduction To Data Mining
Phi Jack
 

Was ist angesagt? (20)

Knowledge discovery process
Knowledge discovery process Knowledge discovery process
Knowledge discovery process
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSE
 
Data mining
Data miningData mining
Data mining
 
Data mining
Data mining Data mining
Data mining
 
Clustering in Data Mining
Clustering in Data MiningClustering in Data Mining
Clustering in Data Mining
 
01 Data Mining: Concepts and Techniques, 2nd ed.
01 Data Mining: Concepts and Techniques, 2nd ed.01 Data Mining: Concepts and Techniques, 2nd ed.
01 Data Mining: Concepts and Techniques, 2nd ed.
 
Kdd process
Kdd processKdd process
Kdd process
 
OLAP operations
OLAP operationsOLAP operations
OLAP operations
 
Introduction To Data Mining
Introduction To Data Mining   Introduction To Data Mining
Introduction To Data Mining
 
Data Mining
Data MiningData Mining
Data Mining
 
Data mining techniques unit 1
Data mining techniques  unit 1Data mining techniques  unit 1
Data mining techniques unit 1
 
Knowledge discovery thru data mining
Knowledge discovery thru data miningKnowledge discovery thru data mining
Knowledge discovery thru data mining
 
Datamining - On What Kind of Data
Datamining - On What Kind of DataDatamining - On What Kind of Data
Datamining - On What Kind of Data
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processing
 
Introduction data mining
Introduction data miningIntroduction data mining
Introduction data mining
 
Architecture of data mining system
Architecture of data mining systemArchitecture of data mining system
Architecture of data mining system
 
Data mining
Data miningData mining
Data mining
 
Data Mining : Concepts
Data Mining : ConceptsData Mining : Concepts
Data Mining : Concepts
 

Andere mochten auch (6)

Prediction of rainfall using image processing
Prediction of rainfall using image processingPrediction of rainfall using image processing
Prediction of rainfall using image processing
 
Implementation of Data Mining Techniques for Meteorological Data Analysis
Implementation of Data Mining Techniques for Meteorological Data Analysis Implementation of Data Mining Techniques for Meteorological Data Analysis
Implementation of Data Mining Techniques for Meteorological Data Analysis
 
Data analysis of weather forecasting
Data analysis of weather forecastingData analysis of weather forecasting
Data analysis of weather forecasting
 
Weather forecasting
Weather forecastingWeather forecasting
Weather forecasting
 
Forecasting Techniques
Forecasting TechniquesForecasting Techniques
Forecasting Techniques
 
Data mining
Data miningData mining
Data mining
 

Ähnlich wie Data mining

Data mining Basics and complete description onword
Data mining Basics and complete description onwordData mining Basics and complete description onword
Data mining Basics and complete description onword
Sulman Ahmed
 

Ähnlich wie Data mining (20)

Unit 4 Advanced Data Analytics
Unit 4 Advanced Data AnalyticsUnit 4 Advanced Data Analytics
Unit 4 Advanced Data Analytics
 
What is Data mining? Data mining Presentation
What is Data mining? Data mining Presentation What is Data mining? Data mining Presentation
What is Data mining? Data mining Presentation
 
Data Mining - The Big Picture!
Data Mining - The Big Picture!Data Mining - The Big Picture!
Data Mining - The Big Picture!
 
Seminar Presentation
Seminar PresentationSeminar Presentation
Seminar Presentation
 
Data Mining
Data MiningData Mining
Data Mining
 
Dma unit 1
Dma unit   1Dma unit   1
Dma unit 1
 
Data mining
Data miningData mining
Data mining
 
Data mining
Data miningData mining
Data mining
 
Data Mining Presentation.pptx
Data Mining Presentation.pptxData Mining Presentation.pptx
Data Mining Presentation.pptx
 
01 Introduction to Data Mining
01 Introduction to Data Mining01 Introduction to Data Mining
01 Introduction to Data Mining
 
Data Mining
Data MiningData Mining
Data Mining
 
Data mining
Data miningData mining
Data mining
 
Talk
TalkTalk
Talk
 
Data mining Basics and complete description onword
Data mining Basics and complete description onwordData mining Basics and complete description onword
Data mining Basics and complete description onword
 
data mining
data miningdata mining
data mining
 
Week-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptxWeek-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptx
 
Unit i
Unit iUnit i
Unit i
 
Data Mining .pptx
Data Mining .pptxData Mining .pptx
Data Mining .pptx
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
 

Kürzlich hochgeladen

Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
KarakKing
 

Kürzlich hochgeladen (20)

Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptx
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - English
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docx
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structure
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...
 
Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptx
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptx
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17
 

Data mining

  • 2. A review paper on various data mining techniques Survey on varoius types of credit fraud and security measures Data mining in cloud computing Survey paper on clustering techniques A data mining framework for prevention and detection of financial statement fraud  A review paper:mining educational data to forecast failure of engineering students Data mining model for insurance trade in CRM system
  • 3. Data mining • Data mining is the exploration and analysis of large data sets, inorder to discover meaningful pattern and rules. • The objective of data mining is to design and work efficiently with large data sets. • Data mining is the component of wider process called knowledge discovery from database. • Data mining is the process of analysing data from different perspectives and summarizing the results as useful information • Data mining is a multi-step process,requires accessing and preparing data for a mining the data, data mining algorithm, analysing results and taking appropriate action.
  • 4. Why Data mining? • Database analysis and decision support  Market analysis and management : Target marketing, customer relation management,market basket analysis ,cross selling,market segmentation  Risk analysis and management: Forecasting,customer retention,improved under writing,quality control,competitive analysis  Fraud detection and management • Other applications Text mining Intelligent query answering
  • 5. In data mining the data is mined using two learning approaches i.e.supervised learning and unsupervised learning supervised learning In supervised learning (often also called directed data mining) the variables under investigation can be split into two groups: explanatory variables and other is dependent variable.The goal of analysis is to specify a relationship between the dependent variable and explanatory variable the as it is done in regression analysis. Unsupervised learning In unsupervised learning , all the variables are treated in same way, there is no distinction between dependent and explantory variables.
  • 6. Tasks Of Data Mining Data Mining as a term for the specific classes of six activities or tasks as follows: Classification Estimation Prediction Affinity grouping or association rules Clustering Description and visualization The first three tasks- classification, estimation,and prediction rules are examples of directed data mining or supervised learning. The next three tasks are the examples of undirected data mining.
  • 7. Classification classification consits 0f examining the features of a newly presented object and assigning to it a predefined class. Estimation Estimation deals with continuously valued outcomes. Prediction Any prediction can be thought of as classification or estimation. Predictive tasks feel different because the records are classified according to some predicted future behavior or estimated future value. Association Rules An association rule is a rule which implies certain association relationships among a set of objects in a database.
  • 8. Clustering Clustering is the task of segmenting a diverse group into a number of similar subgroup or cluster. In clustering , there are no predefined classes. General Types of Cluster Well separated cluster Center-based cluster Contiguous cluster Density-based cluster Shared property or conceptual cluster
  • 9. Well separated cluster A cluster is a set of point so that any point in acluster is nearest to every other point in the cluster as compared to any other point that is not in the cluster. Center-based cluster A cluster is a set of object such that an object in a cluster is nearest to the “center” of a cluster, than to the center of any other cluster.The center of cluster is often centroid.
  • 10. Contiguous cluster A cluster is a set of point so that a point in a cluster is nearest to one or more other point in the cluster as compared to any point that is not in the cluster. Density-based cluster A cluster is a dense region of points, which is separated by according to the low-density regions, from other regions that is of high density. Shared property Find clusters that share some common property or represent a particular concept.
  • 11. Description and visualization Data visualization is a powerful form of descriptive data mining. It is not always easy to come up with meaning visualizations, but the right picture really can be worth a thousand association rules since the human beings are extremely practiced at extracting meaning from visual scenes.
  • 12. Data mining: KDD process
  • 13. Steps of a KDD process •Learning the application domain relevant prior knowledge and goals of application •Creating a target data set: data selection •Data cleaning and preprocessing: (may take 60% of effort!) •Data reduction and transformation Find useful features, dimensionality/variable reduction, invariant representation •Choosing functions of data mining  summarization, classification, regression, association, clustering •Choosing the mining algorithm(s) •Data mining: search for patterns of interest •Pattern evaluation and knowledge presentation visualization, transformation, removing redundant patterns, etc. •Use of discovered knowledge
  • 14. Major Issues in Data Mining Mining methodology •Mining different kinds of knowledge from diverse data types, e.g., bio, stream, Web •Performance: efficiency, effectiveness, and scalability •Pattern evaluation: the interestingness problem •Incorporation of background knowledge •Handling noise and incomplete data •Parallel, distributed and incremental mining methods •Integration of the discovered knowledge with existing one: knowledge fusion
  • 15. Data mining in various fields Market Analysis and Management • Where does the data come from?—Credit card transactions, loyalty cards, discount coupons, customer complaint calls, plus (public) lifestyle studies • Target marketing Find clusters of “model” customers who share the same characteristics: interest, income level, spending habits, etc., Determine customer purchasing patterns over time • Cross-market analysis—Find associations/co-relations between product sales, & predict based on such association • Customer profiling—What types of customers buy what products (clustering or classification)
  • 16. Market Analysis and Management (cont) •Customer requirement analysis Identify the best products for different customers Predict what factors will attract new customers • Provision of summary information Multidimensional summary reports Statistical summary information (data central tendency and variation)
  • 17. Corporate Analysis & Risk Management •Finance planning and asset evaluation cash flow analysis and prediction contingent claim analysis to evaluate assets cross-sectional and time series analysis (financial-ratio, trend analysis, etc.) •Resource planning summarize and compare the resources and spending •Competition monitor competitors and market directions group customers into classes and a class-based pricing procedure set pricing strategy in a highly competitive market
  • 18. Fraud Detection & Mining Unusual Patterns •Approaches: Clustering & model construction for frauds, outlier analysis •Applications: Health care, retail, credit card service, telecomm. Auto insurance: ring of collisions Money laundering: suspicious monetary transactions Medical insurance Professional patients, ring of doctors, and ring of references Unnecessary or correlated screening tests Telecommunications: phone-call fraud Phone call model: destination of the call, duration, time of day or week. Analyze patterns that deviate from an expected norm
  • 19. Fraud Detection & Mining Unusual Patterns(contd) Credit card fraud Application fraud Fake doctored card Lost and stolen card Duplicate site Intercept fraud(postal service) Mining to forecast failure of engineering students Using this mining what are the problems affected by engineering students and what is the solution to solve that particular problem.
  • 20. Mining in Insurance trade in CRM system The large data stored in CRM database is increasing rapidly. Many things are hidden in database . Using this data mining technique we can retrieve the data about CRM relationship in insurance. Mining in cloud computing Advantage in cloud:  Reduced cost  Increased storage  Highly automated and high mobility There are three types of services in cloud Iaas(virtual machines, servers) Paas(execution runtime,database,webserver) Saas(email,games)
  • 21. Conclusions Data mining involves useful rules or interesting patterns from huge historical data. Many data mining tasks are available and each of them further has many techniques. Data mining is an interdisciplinary, artificial and intelligence, integrated database, machine learning, statistics, etc. Data mining is a large number of incomplete, noisy, fuzzy, random application of the data found in hidden, regularity which are noy known by people in advance, but is potentially useful and ultimately understandable information and knowledge of non-trivial process.
  • 22. Reference [1]V.Saurkar,Vaibhav,Bhujade(data mining techniques) [2]Amandeep Kaur Mann,Navneet Kaur(clustering) [3]Avinash Ingole, DR.R.C.Thool(credit card fraud) [4]Parikshit Prasad,Rattan Lal( cloud computing) [5]Nasib Singh Gill, Rajan gupta(financial statement fraud) [6]Komal S.Sahedani, B.Supriya Reddy(failure of Engineering students) [7]C.Verhoef,Bas Donkers( Insurance in CRM model)