SlideShare ist ein Scribd-Unternehmen logo
Inferring Win–Lose Product Network
from User Behavior
Shuhei Iitsuka†
, Kazuya Kawakami‡
, Seigen Hagiwara*
,
Takayoshi Kawakami**
, Takayuki Hamada***
, Yutaka Matsuo†
1
† The University of Tokyo, Japan
‡ University of Oxford, UK
* Recruit Marketing Partners Co., Ltd., Japan
** Industrial Growth Platform, Inc., Japan
*** IGPI Business Analytics & Intelligence, Inc., Japan
Background
● E-commerce is expanding, and various data
mining methods have been proposed.
● However, few data mining techniques have been
proposed to provide:
○ superiority relations of product
attractiveness.
○ why that superiority is formed.
→ Understanding competitive advantages is
important for product marketers.
INTRODUCTION
2
Data mining is playing an important
role in e-commerce marketing.
https://www.amazon.com/dp/B005EOWBHC/
Objective
● We propose a new method to examine
win–lose relation.
○ Superiority relation among substitute
products in terms of attractiveness.
● We also propose a review mining method to
extract why that superiority is formed.
● Our method uses the difference between users’
browsing and purchasing behavior.
3
INTRODUCTION
browse browse
purchasepurchase
SUPERIORITY SUPERIORITY
・・・
USER #1 USER #N
stylish,
modern
compact,
light
win–lose network
Product Relation
Substitute or Complementary
● Common means of perceiving product relations
in consumer theory.
● Have been used in e-commerce mining to
understand product relations.
Network Analysis
● Network analysis methods have been imported
to e-commerce marketing.
→ Few studies have examined directed relation of
products.
4
RELATED WORKS
SUBSTITUTE COMPLEMENTARY
Win–Lose Product Relation
● Competitive relation
Item A and B are browsed by the same user.
= Item A and B are in competition. (A ↔ B)
● Win–lose relation
Item A is purchased after item A and B are browsed.
= Item A is superior to item B. (A ← B)
5
PROPOSED METHOD
User Browsed (Purchased)
1 B, C
2 A, B, C
3 B, C
Competitive network Win–lose network
Access Log
Superiority Factor Analysis
● Examines why the superiority is formed in a form of keywords (superiority factors).
● Item A’s superiority factors to item B comes from the reviews of products purchased by
patrons who prefer item A to B.
6
PROPOSED METHOD
Users who
supports
A > B
superiority
Zexy http://zexy.net/
● Japanese largest wedding portal website.
● Browse = browse a venue page
Purchase = reserve a venue tour
● Used log data
○ Jan 1, 2012 — Oct 31, 2012
○ User ID, URL, Flag for tour reservation
7
ANALYSIS RESULTS
Tour reservation made!
BROWSE
PURCHASE
VENUE PAGE
LIST PAGE
Product Network
Competitive network of wedding venues in Japan
The color segments match well with the competition
cluster. → Competition takes place per region.
8
ANALYSIS RESULTS
Win–lose network of selected venues in Tokyo
Directed relation of attractiveness is shown.
→ E-commerce owners can expect users’ tendency
to make conversion actions.
Superiority Factor Analysis
9
ANALYSIS RESULTS
● ceremony
● garden
● banquet
● solemnity
● photograph
● Japanese dish
● Japanese-style room
● ceremony
● garden
● bus
Venue H
Venue J Venue A
Experimental Setup
● Evaluate how much our method can estimate
the actual product relations.
● Conducted a user survey of couples to observe
actual user perceptions.
○ Jan 23, 2012 — Dec 14, 2013
○ Couples who used Zexy for tour reservation
and held a ceremony
○ Selected 10 venues in Tokyo
10
EVALUATION EXPERIMENT
Log data
User survey
USER (N=202)
PRODUCT
USER (N=173)
PRODUCT
BROWSE A VENUE
RESERVE A TOUR
ATTEND A TOUR
HOLD A CEREMONY
Results
Experiment #1: Correlation of network weights
● Correlation between the weights of the product
network: user survey VS log data.
● Significant correlation was found between them
for both of competition and win–lose network.
→ Log data can be a good alternative of the user
survey.
11
EVALUATION EXPERIMENT
Correlation of competitive relation
0.685 (p < 0.01)
Correlation of win–lose relation
0.648 (p < 0.01)
Results
Experiment #2: Superiority factor analysis
● Actual factor: Responses to the question
“Reason for selection”.
● Baseline method: Regards the winner product’s
review as the superiority factors.
● Across all venues, proposed method estimated
more actual factor words significantly (p < 0.05).
● Proposed method shows interesting findings
while Baseline method only shows general and
well-known property of the product.
EVALUATION EXPERIMENT
ATTENDED
A TOUR
HELD A
CEREMONY
Reason for selection Actual factor words
Method Factor Words of product D against G
Proposed
(13/20)
chapel, hospitality, ceremony, guest,
feeling, day, impression, staff,
stained glass, banquet, dish,
atmosphere, church, location, San,
photograph, lovely, venue,
Omotesando, weddings
Baseline
(3/20)
map, cathedral, forbidden, she, Akka,
order, impression, problem, standard,
cloud, stained glass, church,
European, minute, overall, exchange,
movie, ring, Omotesando, bringing 12
Discussion & Conclusion
● Our proposed method is useful to estimate the superiority relation of products and why that
superiority is formed.
● Our text mining method does not consider polarity of the sentence.
→ Our method captures aspects which users care.
● Analysis needs to be done in the same category of products and only between substitutes.
Contribution
● Proposed a new data mining method to analyze superiority product relation.
● Proposed a text mining method to analyze superiority factors.
→ E-commerce owners can plan effective marketing or promotion strategies.
● Evaluated if log data can be a good alternative of user survey.
→ Huge costs (distribution, data input etc.) can be saved.
13
Thank you for listening.
14
https://tushuhei.com
iitsuka@weblab.t.u-tokyo.ac.jp

Weitere ähnliche Inhalte

Ähnlich wie Inferring win–lose product network from user behavior

The art and science of website optimization
The art and science of website optimizationThe art and science of website optimization
The art and science of website optimization
Raj Lal
 
Big data: Bringing competition policy to the digital era – VARIAN – November ...
Big data: Bringing competition policy to the digital era – VARIAN – November ...Big data: Bringing competition policy to the digital era – VARIAN – November ...
Big data: Bringing competition policy to the digital era – VARIAN – November ...
OECD Directorate for Financial and Enterprise Affairs
 
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdfPost eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
WP Engine
 
Digital analytics: Optimization (Lecture 10)
Digital analytics: Optimization (Lecture 10)Digital analytics: Optimization (Lecture 10)
Digital analytics: Optimization (Lecture 10)
Joni Salminen
 
How to Best Research Your Problem Area & Product by fmr eBay PM
How to Best Research Your Problem Area & Product by fmr eBay PMHow to Best Research Your Problem Area & Product by fmr eBay PM
How to Best Research Your Problem Area & Product by fmr eBay PM
Product School
 
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015  Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
ThisIsNansen
 
A_B Testing Personalized Meditation Recommendations.pdf
A_B Testing Personalized Meditation Recommendations.pdfA_B Testing Personalized Meditation Recommendations.pdf
A_B Testing Personalized Meditation Recommendations.pdf
VWO
 
Quantitative Or Qualitative
Quantitative Or QualitativeQuantitative Or Qualitative
Quantitative Or Qualitative
✔ Antony Slabinck
 
Leverage The Power of Small Data
Leverage The Power of Small DataLeverage The Power of Small Data
Leverage The Power of Small Data
Karyn Zuidinga
 
Webinar: Common Mistakes in A/B Testing
Webinar: Common Mistakes in A/B TestingWebinar: Common Mistakes in A/B Testing
Webinar: Common Mistakes in A/B Testing
Optimizely
 
Ranking System for travel search (PoC)
Ranking System for travel search (PoC)Ranking System for travel search (PoC)
Ranking System for travel search (PoC)
M Baddar
 
Excel with Enterprise SEO
Excel with Enterprise SEOExcel with Enterprise SEO
Excel with Enterprise SEO
Kirill Kronrod
 
Maximize Conversion Online Visitors to Buyers
Maximize Conversion Online Visitors to BuyersMaximize Conversion Online Visitors to Buyers
Maximize Conversion Online Visitors to Buyers
Renny Wijayanti
 
Marketplace in motion - AdKDD keynote - 2020
Marketplace in motion - AdKDD keynote - 2020 Marketplace in motion - AdKDD keynote - 2020
Marketplace in motion - AdKDD keynote - 2020
Roelof van Zwol
 
First 30 days of Your CRO Program
First 30 days of Your CRO ProgramFirst 30 days of Your CRO Program
First 30 days of Your CRO Program
VWO
 
Utilizing Email Analytics to Improve Performance
Utilizing Email Analytics to Improve PerformanceUtilizing Email Analytics to Improve Performance
Utilizing Email Analytics to Improve Performance
Tinuiti
 
Integrated Marketing Communication plan (Southwest Airlines)
Integrated Marketing Communication plan (Southwest Airlines)Integrated Marketing Communication plan (Southwest Airlines)
Integrated Marketing Communication plan (Southwest Airlines)
Yumiko (Yumi) Higuchi
 
Context Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive AnalyticsContext Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive Analytics
Julia Kiseleva
 
Red eye 2014
Red eye 2014Red eye 2014
Red eye 2014
Charlie Lines
 
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
Lviv Startup Club
 

Ähnlich wie Inferring win–lose product network from user behavior (20)

The art and science of website optimization
The art and science of website optimizationThe art and science of website optimization
The art and science of website optimization
 
Big data: Bringing competition policy to the digital era – VARIAN – November ...
Big data: Bringing competition policy to the digital era – VARIAN – November ...Big data: Bringing competition policy to the digital era – VARIAN – November ...
Big data: Bringing competition policy to the digital era – VARIAN – November ...
 
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdfPost eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
Post eCommerce Site Launch- Optimizing Your Conversion Rate.pdf
 
Digital analytics: Optimization (Lecture 10)
Digital analytics: Optimization (Lecture 10)Digital analytics: Optimization (Lecture 10)
Digital analytics: Optimization (Lecture 10)
 
How to Best Research Your Problem Area & Product by fmr eBay PM
How to Best Research Your Problem Area & Product by fmr eBay PMHow to Best Research Your Problem Area & Product by fmr eBay PM
How to Best Research Your Problem Area & Product by fmr eBay PM
 
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015  Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
Conversion rate optimization CRO breakfast seminar Stockholm, August 2015
 
A_B Testing Personalized Meditation Recommendations.pdf
A_B Testing Personalized Meditation Recommendations.pdfA_B Testing Personalized Meditation Recommendations.pdf
A_B Testing Personalized Meditation Recommendations.pdf
 
Quantitative Or Qualitative
Quantitative Or QualitativeQuantitative Or Qualitative
Quantitative Or Qualitative
 
Leverage The Power of Small Data
Leverage The Power of Small DataLeverage The Power of Small Data
Leverage The Power of Small Data
 
Webinar: Common Mistakes in A/B Testing
Webinar: Common Mistakes in A/B TestingWebinar: Common Mistakes in A/B Testing
Webinar: Common Mistakes in A/B Testing
 
Ranking System for travel search (PoC)
Ranking System for travel search (PoC)Ranking System for travel search (PoC)
Ranking System for travel search (PoC)
 
Excel with Enterprise SEO
Excel with Enterprise SEOExcel with Enterprise SEO
Excel with Enterprise SEO
 
Maximize Conversion Online Visitors to Buyers
Maximize Conversion Online Visitors to BuyersMaximize Conversion Online Visitors to Buyers
Maximize Conversion Online Visitors to Buyers
 
Marketplace in motion - AdKDD keynote - 2020
Marketplace in motion - AdKDD keynote - 2020 Marketplace in motion - AdKDD keynote - 2020
Marketplace in motion - AdKDD keynote - 2020
 
First 30 days of Your CRO Program
First 30 days of Your CRO ProgramFirst 30 days of Your CRO Program
First 30 days of Your CRO Program
 
Utilizing Email Analytics to Improve Performance
Utilizing Email Analytics to Improve PerformanceUtilizing Email Analytics to Improve Performance
Utilizing Email Analytics to Improve Performance
 
Integrated Marketing Communication plan (Southwest Airlines)
Integrated Marketing Communication plan (Southwest Airlines)Integrated Marketing Communication plan (Southwest Airlines)
Integrated Marketing Communication plan (Southwest Airlines)
 
Context Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive AnalyticsContext Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive Analytics
 
Red eye 2014
Red eye 2014Red eye 2014
Red eye 2014
 
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
Dmytro Petryk: Як керувати розробкою та релізом фічей в глобальному продукті ...
 

Mehr von Shuhei Iitsuka

Online and offline handwritten chinese character recognition a comprehensive...
Online and offline handwritten chinese character recognition  a comprehensive...Online and offline handwritten chinese character recognition  a comprehensive...
Online and offline handwritten chinese character recognition a comprehensive...
Shuhei Iitsuka
 
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
Shuhei Iitsuka
 
Machine learning meets web development
Machine learning meets web developmentMachine learning meets web development
Machine learning meets web development
Shuhei Iitsuka
 
Python と Xpath で ウェブからデータをあつめる
Python と Xpath で ウェブからデータをあつめるPython と Xpath で ウェブからデータをあつめる
Python と Xpath で ウェブからデータをあつめる
Shuhei Iitsuka
 
リミックスからはじめる DTM 入門
リミックスからはじめる DTM 入門リミックスからはじめる DTM 入門
リミックスからはじめる DTM 入門
Shuhei Iitsuka
 
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
Shuhei Iitsuka
 
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web DataAsia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
Shuhei Iitsuka
 
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
Shuhei Iitsuka
 
UT Startup Gym で人生が変わった話
UT Startup Gym で人生が変わった話UT Startup Gym で人生が変わった話
UT Startup Gym で人生が変わった話
Shuhei Iitsuka
 
ウェブサイトで収益を得る
ウェブサイトで収益を得るウェブサイトで収益を得る
ウェブサイトで収益を得るShuhei Iitsuka
 
HTML で自己紹介ページをつくる
HTML で自己紹介ページをつくるHTML で自己紹介ページをつくる
HTML で自己紹介ページをつくる
Shuhei Iitsuka
 
データベースを使おう
データベースを使おうデータベースを使おう
データベースを使おう
Shuhei Iitsuka
 
ウェブサービスの企画とデザイン
ウェブサービスの企画とデザインウェブサービスの企画とデザイン
ウェブサービスの企画とデザイン
Shuhei Iitsuka
 
データベースを使おう
データベースを使おうデータベースを使おう
データベースを使おう
Shuhei Iitsuka
 
第3期キックオフ説明会+勉強会
第3期キックオフ説明会+勉強会 第3期キックオフ説明会+勉強会
第3期キックオフ説明会+勉強会 Shuhei Iitsuka
 
かんたん Twitter アプリをつくろう
かんたん Twitter アプリをつくろう かんたん Twitter アプリをつくろう
かんたん Twitter アプリをつくろう Shuhei Iitsuka
 
ペルソナシナリオとプロトタイプ
ペルソナシナリオとプロトタイプペルソナシナリオとプロトタイプ
ペルソナシナリオとプロトタイプShuhei Iitsuka
 
ペルソナシナリオとプロトタイプ2
ペルソナシナリオとプロトタイプ2ペルソナシナリオとプロトタイプ2
ペルソナシナリオとプロトタイプ2Shuhei Iitsuka
 
UT Startup Gym とは @第2期製品発表
UT Startup Gym とは @第2期製品発表 UT Startup Gym とは @第2期製品発表
UT Startup Gym とは @第2期製品発表 Shuhei Iitsuka
 
Webサーバ、HTML
Webサーバ、HTMLWebサーバ、HTML
Webサーバ、HTML
Shuhei Iitsuka
 

Mehr von Shuhei Iitsuka (20)

Online and offline handwritten chinese character recognition a comprehensive...
Online and offline handwritten chinese character recognition  a comprehensive...Online and offline handwritten chinese character recognition  a comprehensive...
Online and offline handwritten chinese character recognition a comprehensive...
 
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-E...
 
Machine learning meets web development
Machine learning meets web developmentMachine learning meets web development
Machine learning meets web development
 
Python と Xpath で ウェブからデータをあつめる
Python と Xpath で ウェブからデータをあつめるPython と Xpath で ウェブからデータをあつめる
Python と Xpath で ウェブからデータをあつめる
 
リミックスからはじめる DTM 入門
リミックスからはじめる DTM 入門リミックスからはじめる DTM 入門
リミックスからはじめる DTM 入門
 
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
【DBDA 勉強会 2013 夏】Chapter 12: Bayesian Approaches to Testing a Point (‘‘Null’’...
 
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web DataAsia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
Asia Trend Map: Forecasting “Cool Japan” Content Popularity on Web Data
 
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
【DBDA 勉強会 2013 夏】Doing Bayesian Data Analysis Chapter 4: Bayes’ Rule
 
UT Startup Gym で人生が変わった話
UT Startup Gym で人生が変わった話UT Startup Gym で人生が変わった話
UT Startup Gym で人生が変わった話
 
ウェブサイトで収益を得る
ウェブサイトで収益を得るウェブサイトで収益を得る
ウェブサイトで収益を得る
 
HTML で自己紹介ページをつくる
HTML で自己紹介ページをつくるHTML で自己紹介ページをつくる
HTML で自己紹介ページをつくる
 
データベースを使おう
データベースを使おうデータベースを使おう
データベースを使おう
 
ウェブサービスの企画とデザイン
ウェブサービスの企画とデザインウェブサービスの企画とデザイン
ウェブサービスの企画とデザイン
 
データベースを使おう
データベースを使おうデータベースを使おう
データベースを使おう
 
第3期キックオフ説明会+勉強会
第3期キックオフ説明会+勉強会 第3期キックオフ説明会+勉強会
第3期キックオフ説明会+勉強会
 
かんたん Twitter アプリをつくろう
かんたん Twitter アプリをつくろう かんたん Twitter アプリをつくろう
かんたん Twitter アプリをつくろう
 
ペルソナシナリオとプロトタイプ
ペルソナシナリオとプロトタイプペルソナシナリオとプロトタイプ
ペルソナシナリオとプロトタイプ
 
ペルソナシナリオとプロトタイプ2
ペルソナシナリオとプロトタイプ2ペルソナシナリオとプロトタイプ2
ペルソナシナリオとプロトタイプ2
 
UT Startup Gym とは @第2期製品発表
UT Startup Gym とは @第2期製品発表 UT Startup Gym とは @第2期製品発表
UT Startup Gym とは @第2期製品発表
 
Webサーバ、HTML
Webサーバ、HTMLWebサーバ、HTML
Webサーバ、HTML
 

Kürzlich hochgeladen

Comparative analysis between traditional aquaponics and reconstructed aquapon...
Comparative analysis between traditional aquaponics and reconstructed aquapon...Comparative analysis between traditional aquaponics and reconstructed aquapon...
Comparative analysis between traditional aquaponics and reconstructed aquapon...
bijceesjournal
 
Null Bangalore | Pentesters Approach to AWS IAM
Null Bangalore | Pentesters Approach to AWS IAMNull Bangalore | Pentesters Approach to AWS IAM
Null Bangalore | Pentesters Approach to AWS IAM
Divyanshu
 
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.pptUnit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
KrishnaveniKrishnara1
 
Welding Metallurgy Ferrous Materials.pdf
Welding Metallurgy Ferrous Materials.pdfWelding Metallurgy Ferrous Materials.pdf
Welding Metallurgy Ferrous Materials.pdf
AjmalKhan50578
 
Computational Engineering IITH Presentation
Computational Engineering IITH PresentationComputational Engineering IITH Presentation
Computational Engineering IITH Presentation
co23btech11018
 
Hematology Analyzer Machine - Complete Blood Count
Hematology Analyzer Machine - Complete Blood CountHematology Analyzer Machine - Complete Blood Count
Hematology Analyzer Machine - Complete Blood Count
shahdabdulbaset
 
The Python for beginners. This is an advance computer language.
The Python for beginners. This is an advance computer language.The Python for beginners. This is an advance computer language.
The Python for beginners. This is an advance computer language.
sachin chaurasia
 
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
ydzowc
 
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
IJECEIAES
 
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURSCompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
RamonNovais6
 
ISPM 15 Heat Treated Wood Stamps and why your shipping must have one
ISPM 15 Heat Treated Wood Stamps and why your shipping must have oneISPM 15 Heat Treated Wood Stamps and why your shipping must have one
ISPM 15 Heat Treated Wood Stamps and why your shipping must have one
Las Vegas Warehouse
 
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
IJECEIAES
 
Certificates - Mahmoud Mohamed Moursi Ahmed
Certificates - Mahmoud Mohamed Moursi AhmedCertificates - Mahmoud Mohamed Moursi Ahmed
Certificates - Mahmoud Mohamed Moursi Ahmed
Mahmoud Morsy
 
Properties Railway Sleepers and Test.pptx
Properties Railway Sleepers and Test.pptxProperties Railway Sleepers and Test.pptx
Properties Railway Sleepers and Test.pptx
MDSABBIROJJAMANPAYEL
 
International Conference on NLP, Artificial Intelligence, Machine Learning an...
International Conference on NLP, Artificial Intelligence, Machine Learning an...International Conference on NLP, Artificial Intelligence, Machine Learning an...
International Conference on NLP, Artificial Intelligence, Machine Learning an...
gerogepatton
 
Data Driven Maintenance | UReason Webinar
Data Driven Maintenance | UReason WebinarData Driven Maintenance | UReason Webinar
Data Driven Maintenance | UReason Webinar
UReason
 
Curve Fitting in Numerical Methods Regression
Curve Fitting in Numerical Methods RegressionCurve Fitting in Numerical Methods Regression
Curve Fitting in Numerical Methods Regression
Nada Hikmah
 
Software Quality Assurance-se412-v11.ppt
Software Quality Assurance-se412-v11.pptSoftware Quality Assurance-se412-v11.ppt
Software Quality Assurance-se412-v11.ppt
TaghreedAltamimi
 
artificial intelligence and data science contents.pptx
artificial intelligence and data science contents.pptxartificial intelligence and data science contents.pptx
artificial intelligence and data science contents.pptx
GauravCar
 
132/33KV substation case study Presentation
132/33KV substation case study Presentation132/33KV substation case study Presentation
132/33KV substation case study Presentation
kandramariana6
 

Kürzlich hochgeladen (20)

Comparative analysis between traditional aquaponics and reconstructed aquapon...
Comparative analysis between traditional aquaponics and reconstructed aquapon...Comparative analysis between traditional aquaponics and reconstructed aquapon...
Comparative analysis between traditional aquaponics and reconstructed aquapon...
 
Null Bangalore | Pentesters Approach to AWS IAM
Null Bangalore | Pentesters Approach to AWS IAMNull Bangalore | Pentesters Approach to AWS IAM
Null Bangalore | Pentesters Approach to AWS IAM
 
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.pptUnit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
Unit-III-ELECTROCHEMICAL STORAGE DEVICES.ppt
 
Welding Metallurgy Ferrous Materials.pdf
Welding Metallurgy Ferrous Materials.pdfWelding Metallurgy Ferrous Materials.pdf
Welding Metallurgy Ferrous Materials.pdf
 
Computational Engineering IITH Presentation
Computational Engineering IITH PresentationComputational Engineering IITH Presentation
Computational Engineering IITH Presentation
 
Hematology Analyzer Machine - Complete Blood Count
Hematology Analyzer Machine - Complete Blood CountHematology Analyzer Machine - Complete Blood Count
Hematology Analyzer Machine - Complete Blood Count
 
The Python for beginners. This is an advance computer language.
The Python for beginners. This is an advance computer language.The Python for beginners. This is an advance computer language.
The Python for beginners. This is an advance computer language.
 
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
原版制作(Humboldt毕业证书)柏林大学毕业证学位证一模一样
 
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
 
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURSCompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
CompEx~Manual~1210 (2).pdf COMPEX GAS AND VAPOURS
 
ISPM 15 Heat Treated Wood Stamps and why your shipping must have one
ISPM 15 Heat Treated Wood Stamps and why your shipping must have oneISPM 15 Heat Treated Wood Stamps and why your shipping must have one
ISPM 15 Heat Treated Wood Stamps and why your shipping must have one
 
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
 
Certificates - Mahmoud Mohamed Moursi Ahmed
Certificates - Mahmoud Mohamed Moursi AhmedCertificates - Mahmoud Mohamed Moursi Ahmed
Certificates - Mahmoud Mohamed Moursi Ahmed
 
Properties Railway Sleepers and Test.pptx
Properties Railway Sleepers and Test.pptxProperties Railway Sleepers and Test.pptx
Properties Railway Sleepers and Test.pptx
 
International Conference on NLP, Artificial Intelligence, Machine Learning an...
International Conference on NLP, Artificial Intelligence, Machine Learning an...International Conference on NLP, Artificial Intelligence, Machine Learning an...
International Conference on NLP, Artificial Intelligence, Machine Learning an...
 
Data Driven Maintenance | UReason Webinar
Data Driven Maintenance | UReason WebinarData Driven Maintenance | UReason Webinar
Data Driven Maintenance | UReason Webinar
 
Curve Fitting in Numerical Methods Regression
Curve Fitting in Numerical Methods RegressionCurve Fitting in Numerical Methods Regression
Curve Fitting in Numerical Methods Regression
 
Software Quality Assurance-se412-v11.ppt
Software Quality Assurance-se412-v11.pptSoftware Quality Assurance-se412-v11.ppt
Software Quality Assurance-se412-v11.ppt
 
artificial intelligence and data science contents.pptx
artificial intelligence and data science contents.pptxartificial intelligence and data science contents.pptx
artificial intelligence and data science contents.pptx
 
132/33KV substation case study Presentation
132/33KV substation case study Presentation132/33KV substation case study Presentation
132/33KV substation case study Presentation
 

Inferring win–lose product network from user behavior

  • 1. Inferring Win–Lose Product Network from User Behavior Shuhei Iitsuka† , Kazuya Kawakami‡ , Seigen Hagiwara* , Takayoshi Kawakami** , Takayuki Hamada*** , Yutaka Matsuo† 1 † The University of Tokyo, Japan ‡ University of Oxford, UK * Recruit Marketing Partners Co., Ltd., Japan ** Industrial Growth Platform, Inc., Japan *** IGPI Business Analytics & Intelligence, Inc., Japan
  • 2. Background ● E-commerce is expanding, and various data mining methods have been proposed. ● However, few data mining techniques have been proposed to provide: ○ superiority relations of product attractiveness. ○ why that superiority is formed. → Understanding competitive advantages is important for product marketers. INTRODUCTION 2 Data mining is playing an important role in e-commerce marketing. https://www.amazon.com/dp/B005EOWBHC/
  • 3. Objective ● We propose a new method to examine win–lose relation. ○ Superiority relation among substitute products in terms of attractiveness. ● We also propose a review mining method to extract why that superiority is formed. ● Our method uses the difference between users’ browsing and purchasing behavior. 3 INTRODUCTION browse browse purchasepurchase SUPERIORITY SUPERIORITY ・・・ USER #1 USER #N stylish, modern compact, light win–lose network
  • 4. Product Relation Substitute or Complementary ● Common means of perceiving product relations in consumer theory. ● Have been used in e-commerce mining to understand product relations. Network Analysis ● Network analysis methods have been imported to e-commerce marketing. → Few studies have examined directed relation of products. 4 RELATED WORKS SUBSTITUTE COMPLEMENTARY
  • 5. Win–Lose Product Relation ● Competitive relation Item A and B are browsed by the same user. = Item A and B are in competition. (A ↔ B) ● Win–lose relation Item A is purchased after item A and B are browsed. = Item A is superior to item B. (A ← B) 5 PROPOSED METHOD User Browsed (Purchased) 1 B, C 2 A, B, C 3 B, C Competitive network Win–lose network Access Log
  • 6. Superiority Factor Analysis ● Examines why the superiority is formed in a form of keywords (superiority factors). ● Item A’s superiority factors to item B comes from the reviews of products purchased by patrons who prefer item A to B. 6 PROPOSED METHOD Users who supports A > B superiority
  • 7. Zexy http://zexy.net/ ● Japanese largest wedding portal website. ● Browse = browse a venue page Purchase = reserve a venue tour ● Used log data ○ Jan 1, 2012 — Oct 31, 2012 ○ User ID, URL, Flag for tour reservation 7 ANALYSIS RESULTS Tour reservation made! BROWSE PURCHASE VENUE PAGE LIST PAGE
  • 8. Product Network Competitive network of wedding venues in Japan The color segments match well with the competition cluster. → Competition takes place per region. 8 ANALYSIS RESULTS Win–lose network of selected venues in Tokyo Directed relation of attractiveness is shown. → E-commerce owners can expect users’ tendency to make conversion actions.
  • 9. Superiority Factor Analysis 9 ANALYSIS RESULTS ● ceremony ● garden ● banquet ● solemnity ● photograph ● Japanese dish ● Japanese-style room ● ceremony ● garden ● bus Venue H Venue J Venue A
  • 10. Experimental Setup ● Evaluate how much our method can estimate the actual product relations. ● Conducted a user survey of couples to observe actual user perceptions. ○ Jan 23, 2012 — Dec 14, 2013 ○ Couples who used Zexy for tour reservation and held a ceremony ○ Selected 10 venues in Tokyo 10 EVALUATION EXPERIMENT Log data User survey USER (N=202) PRODUCT USER (N=173) PRODUCT BROWSE A VENUE RESERVE A TOUR ATTEND A TOUR HOLD A CEREMONY
  • 11. Results Experiment #1: Correlation of network weights ● Correlation between the weights of the product network: user survey VS log data. ● Significant correlation was found between them for both of competition and win–lose network. → Log data can be a good alternative of the user survey. 11 EVALUATION EXPERIMENT Correlation of competitive relation 0.685 (p < 0.01) Correlation of win–lose relation 0.648 (p < 0.01)
  • 12. Results Experiment #2: Superiority factor analysis ● Actual factor: Responses to the question “Reason for selection”. ● Baseline method: Regards the winner product’s review as the superiority factors. ● Across all venues, proposed method estimated more actual factor words significantly (p < 0.05). ● Proposed method shows interesting findings while Baseline method only shows general and well-known property of the product. EVALUATION EXPERIMENT ATTENDED A TOUR HELD A CEREMONY Reason for selection Actual factor words Method Factor Words of product D against G Proposed (13/20) chapel, hospitality, ceremony, guest, feeling, day, impression, staff, stained glass, banquet, dish, atmosphere, church, location, San, photograph, lovely, venue, Omotesando, weddings Baseline (3/20) map, cathedral, forbidden, she, Akka, order, impression, problem, standard, cloud, stained glass, church, European, minute, overall, exchange, movie, ring, Omotesando, bringing 12
  • 13. Discussion & Conclusion ● Our proposed method is useful to estimate the superiority relation of products and why that superiority is formed. ● Our text mining method does not consider polarity of the sentence. → Our method captures aspects which users care. ● Analysis needs to be done in the same category of products and only between substitutes. Contribution ● Proposed a new data mining method to analyze superiority product relation. ● Proposed a text mining method to analyze superiority factors. → E-commerce owners can plan effective marketing or promotion strategies. ● Evaluated if log data can be a good alternative of user survey. → Huge costs (distribution, data input etc.) can be saved. 13
  • 14. Thank you for listening. 14 https://tushuhei.com iitsuka@weblab.t.u-tokyo.ac.jp