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ACM International Conference on Information and Knowledge Management (CIKM) - 2014 Analysis of Physical Activity Propagation in a Health Social Network.

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Presentation on theme: "ACM International Conference on Information and Knowledge Management (CIKM) - 2014 Analysis of Physical Activity Propagation in a Health Social Network."— Presentation transcript:

1 ACM International Conference on Information and Knowledge Management (CIKM) - 2014 Analysis of Physical Activity Propagation in a Health Social Network Nhathai Phan, Dejing Dou, Xiao Xiao, Brigitte Piniewski, David Kil 1

2 Outline SMASH Project & Motivation Community - Level Physical Activity Propagation Experimental Results Conclusions & Future Works 2

3 Obesity & Physical Activity Interventions 18 states (30% = 35%) Medical cost: – $147 billion (in 2008) 30 minutes, 5 days Interventions – Telephone (16) – Website (15) – Effective in short term 3 Prevalence* of Self-Reported Obesity Among U.S. Adults CDC, http://www.cdc.gov/obesity/data/prevalence-maps.html-2014http://www.cdc.gov/obesity/data/prevalence-maps.html E.G. Eakin et al. 2007 C. Vadelanotte et al. 2007 G.J. Norman et al. 2007

4 SMASH Project 254 Overweight and Obese individuals with personal information in the YesiWell study Social activities – Online social network, text messages, posts, comments, … – Social games, competitions, … Daily physical activities – Walking, running, jogging, distance, speed, intensity, … Biomarkers, biometric measures – Cholesterol, triglyceride, BMI, … 4

5 Motivation Utilize social networks to help the physical activity propagation process improve the intervention approaches with affordable cost How can social communications effect the physical activity propagations? – Social interactions – Different granularities – Physical activity propagations & health outcomes 5

6 Outline SMASH Project & Motivation Community - Level Physical Activity Propagation Experimental Results Conclusions & Future Works 6

7 ……………………. A Trace of Physical Activity Propagation 7 m, t v u [t, t+t w ]

8 Problem Statement A directed graph – represents an influence relationship – represents the strength of the arc A set of traces 8 K. Saito, R. Nakano, and M. Kimura. Prediction of information diffusion probabilities for independent cascade model. In KES’08, pages 67-75. Y. Mehmood, N. Barbieri, F. Bonchi, and A. Ukkonen. Csi: Community-level social inuence analysis. In ECML-PKDD’13, pages 48-63. CPP Model

9 CPP Model Definition (1) Log likelihood of the traces given Users’ responsibility: 9

10 CPP Model Definition (2) CPP model learning Probability function is a selection function 10

11 Learning & Model Selection (1) Complete expectation log likelihood of the observed propagations: Solving We have 11

12 Learning & Model Selection (2) Users’ responsibilities will not change Run EM algorithm without clustering structure – step 1: estimate – step 2: update Keep fixed, update Bayesian Information Criterion (BIC) 12

13 Outline SMASH Project & Motivation Community - Level Physical Activity Propagation Experimental Results Conclusions & Future Works 13

14 Experiment Setting YesiWell dataset – 254 users – Oct 2010 – Aug 2011 BMI value Wellness score Parameter setting: – t w is a day, is a week 14

15 Detected Communities Influencers: circle nodes Influenced users: rectangle nodes Non-Influenced users: triangle nodes 15

16 Detected Communities with Health Outcome Measures 16 avg(BMI)avg(WS) avg(#steps)

17 Consistency of Detected Communities 17 Standard deviation of BMIStandard deviation of WS

18 CPP vs Social Link, CSI Model Apply optimal clustering on friend network 18 Wellness score #steps

19 Outline SMASH Project & Motivation Community - Level Physical Activity Propagation Experimental Results Conclusions & Future Works 19

20 Conclusions and Future Works Propose the CPP model Observations: – Social networks have great potential to propagate physical activities – The propagation network found is almost acyclic – The physical activity-based influence behavior has a strong correlation to health outcome measures (BMI, lifestyles, and Wellness score) Which types of messages are important? Which messages could influence non-influenced users? 20

21 ACM International Conference on Information and Knowledge Management (CIKM) - 2014 Thanks you! {haiphan, dou}@cs.uoregon.edu 21


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