SlideShare a Scribd company logo
1 of 33
Differential Adaptive DiffusionUnderstanding Diversity and Learning Whom to Trust in Viral Marketing Hossam Sharara, William Rand, LiseGetoorICWSM, Jul 18th 2011
Introduction Viral marketing techniques rely on the social network among customers to spread product recommendations Key Assumption Peer-influence is both static, and independent of the product type
Motivation Ann Janet John Bob and Mary will definitely be interested. However, I think Ann is not much into movies Mary WOW… I’ll send it over to everyone Women’s fashion Store(Invite a friend and get 10% off your next purchase) MovieRental.com(Refer a friend and get $10 off your next rental) Bob
Motivation Peer-influence is dynamic Dependent on previous user interactions Viral marketing strategies have an implicit effect on the underlying social network 	Sometimes changing the structure of	the underlying network altogether
Motivation Peer-influence is dependent on the type of product being spread Users have varying preferences for different products Both factors play a role in product adoption
Background Popular Diffusion Models Threshold Models (e.g. Linear threshold model) Cascade Models     (e.g. Independent cascade model) Influence probabilities are assumed to be static, insensitive to the product type, and known in advance
Objectives Capture the diversity in user preferences for different products Model the change in influence probabilities across multiple campaigns Design a viral marketing strategy that takes these factors into account
Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
Case Study: Digg.com Social news website Users “submit” stories in differenttopics, which can then be “digged”by other users Users can “follow” other users to get their submissions and diggs on their homepage
Case Study: Digg.com Following links define the social network User submissions serve as  proxy of user preferences for different topics User diggs are analogous to product adoptions
Dataset Social Network (user-user following links) 11,942 users 1.3M follow edges Digg Network (user-story digging links) 48,554 news stories 1.9M digg edges 6 months (Jul 2010 – Dec 2010)
Observation 1User Submissions vs. Diggs Smaller percentage of users who digg stories in topics that vary significantly from the topics they post in  Most users adopt only stories of interest to them
Characterizing User Submissions Focused UsersHighly skewed preferences toward one or two topics Biased UsersLess skewed preferences toward a larger set of topics Balanced (Casual) UsersAlmost uniform preference across all topics
Observation 2Effect of Homophily on Adoption Peers with different topic preferences lose confidence in each other’s recommendations over time (followed diggs/adoption     ) Peers with similar topic preferences gain confidence in each other’s recommendations over time (followed diggs/adoption     )
Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
Differential Adaptive Diffusion The influence probability between two peers (u,v) for product category c can be re-written as Confidence of user vin u at campaign i Preference of user vin product type c ,[object Object],[object Object]
Experimental Evaluation Evaluate the model performance in predicting future adoptions We use the first four months in Digg.com dataset for learning the influence probabilities, and the last two months for testing
Baselines We compare our approach with two baselines* that incorporate temporal dynamics in learning the influence probabilities Bernoulli Each product recommendation  Bernoulli Trial Influence probabilities are estimated using MLE over a given contagion time for each user Bernoulli-PC Same Bernoulli representation Partial credit for each recommending peer within the contagion period *A. Goval, F. Bonchi, and L. Lakshmanan. “Learning influence probabilities in social networks.” In Proceedings of the Third ACM International Conference on Web Search and Data Mining (WSDM’10), 2010
Results The Adaptive model, taking both the  diffusion dynamics and the  users heterogeneity into  account, yields better performance
Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
Adaptive Viral Marketing User recommendations are most effective when recommended to the right subset of friends Highly selective behavior  Limited exposure Spamming  lower confidence levels, limited returns What is the appropriate mechanism for maximizing both the product spread and adoption?
Adaptive Rewards Successful recommendations are awarded (αxr)units, while failed ones are penalized ((1-α) xr) units α  conservation parameter Most existing viral marketing strategies assume α=1 (no reason for the user to be selective) The penalty term helps maintain the average overall confidence level  between different peers
Experimental Setup Agent-based models to simulate the behavior of customers in different settings When an agent adopts the product, it makes a probabilistic decision to send a recommendation based on its knowledge about the peers’ preferences The objective of each agent is to maximize its expected reward according to the existing strategy
Experimental Setup Two sets of experiments Fully observable: The agents are allowed to directly observe the preferences of their peers  Learning preferences: The agents have to learn the peer’s preferences based on their response to previous recommendations Simulate the diffusion of 500 campaigns for products from 5 different categories  We use a linear kernel for adjusting the confidence levels between peers after each campaign
Fully Observable Intermediate values for α (e.g. α= 0.5) consistently maintains high adoption rates and high overall confidence over large number of marketing campaigns
Learning Preferences Allowing agents to learn the preferences accounts for both the product preference as well as the confidence level
Effect of Spammers To test the robustness of our proposed method, we inserted spamming agents in the network A spamming agent forwards all product recommendation for all its peers, regardless of their preferences We set (α = 0.5)  for all the other agents, and vary the number of seeded spammers
Effect of Spammers The network adapts to the presence of spammers (dropping their confidence levels), and continues to maintain adoption levels through trusted links
Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
Conclusion Network dynamics and users heterogeneity have a considerable impact on user interactions The proposed adaptive diffusion model incorporates both aspects to better model the diffusion process Adaptive rewarding mechanism for viral marketing maintains higher confidence levels over time
Future Work Potential Applications Social Recommendation Collaborative Filtering Analyzing the impact of the proposed model on opinion leader identification Incorporating the time-variability aspect of user-product preferences in the model
Thank You Questions?
Differential Adaptive Diffusion: Understanding Diversity and Learning whom to Trust in Viral Marketing

More Related Content

Similar to Differential Adaptive Diffusion: Understanding Diversity and Learning whom to Trust in Viral Marketing

Recommender System _Module 1_Introduction to Recommender System.pptx
Recommender System _Module 1_Introduction to Recommender System.pptxRecommender System _Module 1_Introduction to Recommender System.pptx
Recommender System _Module 1_Introduction to Recommender System.pptxSatyam Sharma
 
Automated by Omniconvert
Automated by Omniconvert Automated by Omniconvert
Automated by Omniconvert Omniconvert
 
The application of data mining to recommender systems
The application of data mining to recommender systems The application of data mining to recommender systems
The application of data mining to recommender systems sunsine123
 
GeneralizibilityFairness - DEFirst Reading Group
GeneralizibilityFairness - DEFirst Reading GroupGeneralizibilityFairness - DEFirst Reading Group
GeneralizibilityFairness - DEFirst Reading GroupHossein A. (Saeed) Rahmani
 
Attention-Streams Recommendations
Attention-Streams RecommendationsAttention-Streams Recommendations
Attention-Streams RecommendationsGregoire Burel
 
Consumer choice and social media
Consumer choice and social mediaConsumer choice and social media
Consumer choice and social mediaAndrey Markin
 
IRJET- Hybrid Book Recommendation System
IRJET- Hybrid Book Recommendation SystemIRJET- Hybrid Book Recommendation System
IRJET- Hybrid Book Recommendation SystemIRJET Journal
 
Fuzzy Logic Based Recommender System
Fuzzy Logic Based Recommender SystemFuzzy Logic Based Recommender System
Fuzzy Logic Based Recommender SystemRSIS International
 
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...Shakas Technologies
 
International Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentInternational Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentIJERD Editor
 
Social Recommender Systems Tutorial - WWW 2011
Social Recommender Systems Tutorial - WWW 2011Social Recommender Systems Tutorial - WWW 2011
Social Recommender Systems Tutorial - WWW 2011idoguy
 
Dna data summary& model setting 0515
Dna data summary& model setting 0515Dna data summary& model setting 0515
Dna data summary& model setting 0515GahyunKim15
 
Impersonal Recommendation system on top of Hadoop
Impersonal Recommendation system on top of HadoopImpersonal Recommendation system on top of Hadoop
Impersonal Recommendation system on top of HadoopKostiantyn Kudriavtsev
 
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...IJMTST Journal
 
Experiments on Generalizability of User-Oriented Fairness in Recommender Systems
Experiments on Generalizability of User-Oriented Fairness in Recommender SystemsExperiments on Generalizability of User-Oriented Fairness in Recommender Systems
Experiments on Generalizability of User-Oriented Fairness in Recommender SystemsHossein A. (Saeed) Rahmani
 

Similar to Differential Adaptive Diffusion: Understanding Diversity and Learning whom to Trust in Viral Marketing (20)

20120140506003
2012014050600320120140506003
20120140506003
 
Recommender System _Module 1_Introduction to Recommender System.pptx
Recommender System _Module 1_Introduction to Recommender System.pptxRecommender System _Module 1_Introduction to Recommender System.pptx
Recommender System _Module 1_Introduction to Recommender System.pptx
 
Automated by Omniconvert
Automated by Omniconvert Automated by Omniconvert
Automated by Omniconvert
 
The application of data mining to recommender systems
The application of data mining to recommender systems The application of data mining to recommender systems
The application of data mining to recommender systems
 
GeneralizibilityFairness - DEFirst Reading Group
GeneralizibilityFairness - DEFirst Reading GroupGeneralizibilityFairness - DEFirst Reading Group
GeneralizibilityFairness - DEFirst Reading Group
 
Attention-Streams Recommendations
Attention-Streams RecommendationsAttention-Streams Recommendations
Attention-Streams Recommendations
 
Consumer choice and social media
Consumer choice and social mediaConsumer choice and social media
Consumer choice and social media
 
IRJET- Hybrid Book Recommendation System
IRJET- Hybrid Book Recommendation SystemIRJET- Hybrid Book Recommendation System
IRJET- Hybrid Book Recommendation System
 
Fuzzy Logic Based Recommender System
Fuzzy Logic Based Recommender SystemFuzzy Logic Based Recommender System
Fuzzy Logic Based Recommender System
 
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...
Mitigating Influence of Disinformation Propagation Using Uncertainty-Based Op...
 
A1060104
A1060104A1060104
A1060104
 
International Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentInternational Journal of Engineering Research and Development
International Journal of Engineering Research and Development
 
A1060104
A1060104A1060104
A1060104
 
Social Recommender Systems Tutorial - WWW 2011
Social Recommender Systems Tutorial - WWW 2011Social Recommender Systems Tutorial - WWW 2011
Social Recommender Systems Tutorial - WWW 2011
 
How online social ties and product-related risks influence purchase intention...
How online social ties and product-related risks influence purchase intention...How online social ties and product-related risks influence purchase intention...
How online social ties and product-related risks influence purchase intention...
 
Dna data summary& model setting 0515
Dna data summary& model setting 0515Dna data summary& model setting 0515
Dna data summary& model setting 0515
 
Impersonal Recommendation system on top of Hadoop
Impersonal Recommendation system on top of HadoopImpersonal Recommendation system on top of Hadoop
Impersonal Recommendation system on top of Hadoop
 
Viral
ViralViral
Viral
 
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...
Effective Cross-Domain Collaborative Filtering using Temporal Domain – A Brie...
 
Experiments on Generalizability of User-Oriented Fairness in Recommender Systems
Experiments on Generalizability of User-Oriented Fairness in Recommender SystemsExperiments on Generalizability of User-Oriented Fairness in Recommender Systems
Experiments on Generalizability of User-Oriented Fairness in Recommender Systems
 

Recently uploaded

Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...amitlee9823
 
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escort
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂EscortCall Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escort
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escortdlhescort
 
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfDr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfAdmir Softic
 
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 MonthsSEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 MonthsIndeedSEO
 
Falcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investorsFalcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investorsFalcon Invoice Discounting
 
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...allensay1
 
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort ServiceMalegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort ServiceDamini Dixit
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsP&CO
 
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...amitlee9823
 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel
 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...Aggregage
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Sheetaleventcompany
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxWorkforce Group
 
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...Anamikakaur10
 
Call Girls In Noida 959961⊹3876 Independent Escort Service Noida
Call Girls In Noida 959961⊹3876 Independent Escort Service NoidaCall Girls In Noida 959961⊹3876 Independent Escort Service Noida
Call Girls In Noida 959961⊹3876 Independent Escort Service Noidadlhescort
 
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...rajveerescorts2022
 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876dlhescort
 
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...lizamodels9
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...amitlee9823
 

Recently uploaded (20)

Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
 
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escort
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂EscortCall Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escort
Call Girls In Nangloi Rly Metro ꧂…….95996 … 13876 Enjoy ꧂Escort
 
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfDr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
 
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 MonthsSEO Case Study: How I Increased SEO Traffic & Ranking by 50-60%  in 6 Months
SEO Case Study: How I Increased SEO Traffic & Ranking by 50-60% in 6 Months
 
(Anamika) VIP Call Girls Napur Call Now 8617697112 Napur Escorts 24x7
(Anamika) VIP Call Girls Napur Call Now 8617697112 Napur Escorts 24x7(Anamika) VIP Call Girls Napur Call Now 8617697112 Napur Escorts 24x7
(Anamika) VIP Call Girls Napur Call Now 8617697112 Napur Escorts 24x7
 
Falcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investorsFalcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investors
 
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...
Call Girls Service In Old Town Dubai ((0551707352)) Old Town Dubai Call Girl ...
 
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort ServiceMalegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
Malegaon Call Girls Service ☎ ️82500–77686 ☎️ Enjoy 24/7 Escort Service
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
 
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024
 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptx
 
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...
Call Now ☎️🔝 9332606886🔝 Call Girls ❤ Service In Bhilwara Female Escorts Serv...
 
Call Girls In Noida 959961⊹3876 Independent Escort Service Noida
Call Girls In Noida 959961⊹3876 Independent Escort Service NoidaCall Girls In Noida 959961⊹3876 Independent Escort Service Noida
Call Girls In Noida 959961⊹3876 Independent Escort Service Noida
 
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
👉Chandigarh Call Girls 👉9878799926👉Just Call👉Chandigarh Call Girl In Chandiga...
 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
 
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...
Call Girls From Raj Nagar Extension Ghaziabad❤️8448577510 ⊹Best Escorts Servi...
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
 

Differential Adaptive Diffusion: Understanding Diversity and Learning whom to Trust in Viral Marketing

  • 1. Differential Adaptive DiffusionUnderstanding Diversity and Learning Whom to Trust in Viral Marketing Hossam Sharara, William Rand, LiseGetoorICWSM, Jul 18th 2011
  • 2. Introduction Viral marketing techniques rely on the social network among customers to spread product recommendations Key Assumption Peer-influence is both static, and independent of the product type
  • 3. Motivation Ann Janet John Bob and Mary will definitely be interested. However, I think Ann is not much into movies Mary WOW… I’ll send it over to everyone Women’s fashion Store(Invite a friend and get 10% off your next purchase) MovieRental.com(Refer a friend and get $10 off your next rental) Bob
  • 4. Motivation Peer-influence is dynamic Dependent on previous user interactions Viral marketing strategies have an implicit effect on the underlying social network Sometimes changing the structure of the underlying network altogether
  • 5. Motivation Peer-influence is dependent on the type of product being spread Users have varying preferences for different products Both factors play a role in product adoption
  • 6. Background Popular Diffusion Models Threshold Models (e.g. Linear threshold model) Cascade Models (e.g. Independent cascade model) Influence probabilities are assumed to be static, insensitive to the product type, and known in advance
  • 7. Objectives Capture the diversity in user preferences for different products Model the change in influence probabilities across multiple campaigns Design a viral marketing strategy that takes these factors into account
  • 8. Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
  • 9. Case Study: Digg.com Social news website Users “submit” stories in differenttopics, which can then be “digged”by other users Users can “follow” other users to get their submissions and diggs on their homepage
  • 10. Case Study: Digg.com Following links define the social network User submissions serve as proxy of user preferences for different topics User diggs are analogous to product adoptions
  • 11. Dataset Social Network (user-user following links) 11,942 users 1.3M follow edges Digg Network (user-story digging links) 48,554 news stories 1.9M digg edges 6 months (Jul 2010 – Dec 2010)
  • 12. Observation 1User Submissions vs. Diggs Smaller percentage of users who digg stories in topics that vary significantly from the topics they post in Most users adopt only stories of interest to them
  • 13. Characterizing User Submissions Focused UsersHighly skewed preferences toward one or two topics Biased UsersLess skewed preferences toward a larger set of topics Balanced (Casual) UsersAlmost uniform preference across all topics
  • 14. Observation 2Effect of Homophily on Adoption Peers with different topic preferences lose confidence in each other’s recommendations over time (followed diggs/adoption ) Peers with similar topic preferences gain confidence in each other’s recommendations over time (followed diggs/adoption )
  • 15. Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
  • 16.
  • 17. Experimental Evaluation Evaluate the model performance in predicting future adoptions We use the first four months in Digg.com dataset for learning the influence probabilities, and the last two months for testing
  • 18. Baselines We compare our approach with two baselines* that incorporate temporal dynamics in learning the influence probabilities Bernoulli Each product recommendation  Bernoulli Trial Influence probabilities are estimated using MLE over a given contagion time for each user Bernoulli-PC Same Bernoulli representation Partial credit for each recommending peer within the contagion period *A. Goval, F. Bonchi, and L. Lakshmanan. “Learning influence probabilities in social networks.” In Proceedings of the Third ACM International Conference on Web Search and Data Mining (WSDM’10), 2010
  • 19. Results The Adaptive model, taking both the diffusion dynamics and the users heterogeneity into account, yields better performance
  • 20. Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
  • 21. Adaptive Viral Marketing User recommendations are most effective when recommended to the right subset of friends Highly selective behavior  Limited exposure Spamming  lower confidence levels, limited returns What is the appropriate mechanism for maximizing both the product spread and adoption?
  • 22. Adaptive Rewards Successful recommendations are awarded (αxr)units, while failed ones are penalized ((1-α) xr) units α  conservation parameter Most existing viral marketing strategies assume α=1 (no reason for the user to be selective) The penalty term helps maintain the average overall confidence level between different peers
  • 23. Experimental Setup Agent-based models to simulate the behavior of customers in different settings When an agent adopts the product, it makes a probabilistic decision to send a recommendation based on its knowledge about the peers’ preferences The objective of each agent is to maximize its expected reward according to the existing strategy
  • 24. Experimental Setup Two sets of experiments Fully observable: The agents are allowed to directly observe the preferences of their peers Learning preferences: The agents have to learn the peer’s preferences based on their response to previous recommendations Simulate the diffusion of 500 campaigns for products from 5 different categories We use a linear kernel for adjusting the confidence levels between peers after each campaign
  • 25. Fully Observable Intermediate values for α (e.g. α= 0.5) consistently maintains high adoption rates and high overall confidence over large number of marketing campaigns
  • 26. Learning Preferences Allowing agents to learn the preferences accounts for both the product preference as well as the confidence level
  • 27. Effect of Spammers To test the robustness of our proposed method, we inserted spamming agents in the network A spamming agent forwards all product recommendation for all its peers, regardless of their preferences We set (α = 0.5) for all the other agents, and vary the number of seeded spammers
  • 28. Effect of Spammers The network adapts to the presence of spammers (dropping their confidence levels), and continues to maintain adoption levels through trusted links
  • 29. Outline Case Study: Digg.com Differential Adaptive Diffusion Model Adaptive Viral Marketing Conclusion and Future Work
  • 30. Conclusion Network dynamics and users heterogeneity have a considerable impact on user interactions The proposed adaptive diffusion model incorporates both aspects to better model the diffusion process Adaptive rewarding mechanism for viral marketing maintains higher confidence levels over time
  • 31. Future Work Potential Applications Social Recommendation Collaborative Filtering Analyzing the impact of the proposed model on opinion leader identification Incorporating the time-variability aspect of user-product preferences in the model

Editor's Notes

  1. With the increased customer resistance
  2. ----- Meeting Notes (7/18/11 15:48) -----encouraging her
  3. Add a slide for describing digg.com / add key words (submissions vs. diggs)
  4. One interpretation for the high divergence users that they are imitatorsWe use the topic distribution of the user postings as an influence-independent source for measuring preferencesFig1: KL-divergence between the topics of user submissions and diggsFig2: KL-divergence between user submissions (prefs) and uniform distribution of topics
  5. * Reduce text- In order to capture both the heterogeneity in user preferences as well as the temporal dynamics, we split the influence probability into two components- The product preferences are either given or can be inferred from an influence-independent source (such as user submission in the case of Digg)
  6. Mention that these baselines use the independent cascade model
  7. Color the series if possible We compared against two models that take the changing dynamics of the influence probability into account, but doesn’t address the user preference / heterogeneity aspect
  8. If a user is very selective and makes each recommendation to only a few friends, then the chances of success are slim due to limited network exposure. On the other hand, recommending a product to everyone may have limited returns as well, due to the effect of irrelevant recommendations on the confidence levels between peersThe natural question to ask now is
  9. Typical viral marketing strategies reward users for successful recommendation, but don’t penalize them for failed ones 0 representing fully conservative behavior and 1 representing fully nonconservative behavior.
  10. No text for alpha=1,0 – just arrowarrows for this and next
  11. In more realistic settings, the user friends learn them from her responses to different recommendation*The settings where users are allowed to learn preferences are better than the settings where users directly observe preference (prev slide) as this one
  12. Varying the percentage of spammers (individuals recommending any product to all their peers), and analyzing the over all effect (set alpha = 0.5)As percentage of spammers increases, the overall adoption and confidence level decreases. However, the network is able to adapt to their presence by assigning lower confidence levels to
  13. *Add future work / implicationsUtilized in social recommendations (incorporate both “trust” in a friend and their preference combined with your preference to make better automated recommendations – Facebook, x like this page)