M odeling and Predicting Personal Information Dissemination Behavior

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Modeling and Predicting Personal Information Dissemination Behavior Authors: Ching-Yung Lin Belle L. Tseng Ming-Ting Sun Speaker: Yi-Ching Huang

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M odeling and Predicting Personal Information Dissemination Behavior. A uthors: C hing-Yung Lin B elle L. Tseng Ming-Ting Sun Speaker: Yi-Ching Huang. O utline. I ntroduction CommuntiyNet Community Analysis Individual Analysis CommunityNet Applications Conclusions. I ntroduction. - PowerPoint PPT Presentation

Transcript of M odeling and Predicting Personal Information Dissemination Behavior

Page 1: M odeling and Predicting Personal Information Dissemination Behavior

Modeling and Predicting Personal Information Dissemination BehaviorModeling and Predicting Personal

Information Dissemination BehaviorAuthors:

Ching-Yung Lin Belle L. TsengMing-Ting Sun

Speaker: Yi-Ching Huang

Authors:Ching-Yung Lin Belle L. TsengMing-Ting Sun

Speaker: Yi-Ching Huang

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Outline Introduction CommuntiyNet Community Analysis Individual Analysis CommunityNet Applications Conclusions

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Introduction Not what you know, but who you know

A social network plays a fundamental role as a medium for the spread of information, ideas, and influence

We develop user-centric modeling technology Dynamically describe and update a PSN Infer , predict and filter some questrions

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Overview

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CommunityNet Personal Social Network

ERGM (p* model)

Content-Time-Relation Algorithm Predictive Algorithm

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CTR Algorithm Joint probabilistic model

Sourcesemail contentSender and receiver informationTime stamps

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CTR algorithm Training phase

Input: old information from emails (content, sender, and receiver)

Output:

Steps: Estimate

Estimate

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CTR algorithm Testing phase

Input: new emails with content and time stamps

Output: Steps

Estimate Estimate Update the model by incorporate the new topics

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Inference, filtering, prediction Q1: Which is to answer a question of whom

we should send the message d to during the time period t?

Q2: If we receive an email, who will be possibly the sender?

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Predictive algorithm Use personal social network model Use LDA combined with PSN model

Use CTR model Use Adaptive CTR model

Aggregative update : t(0) ~ t(i-1) Recent data update : t(i-n) ~ t(i-1)

sliding window: choose efficient data

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Community Analysis Topic analysis

Topic distribution Topic trend analysis

Prediction Community patterns share information int the community

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Individual Analysis Role Discovery Predicting Receivers Inferring Senders Adaptive Prediction

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Role Discovery Show how people’s roles in an event

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Predicting Receivers Infer who will possibly be the receivers by

historic communication records the content of the email-to-send

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Inferring Senders

Infer who will possibly be the senders by Person’s CommunityNet The email content

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Adaptive Prediction Apply adaptive algorihtm to solve the

email change problem over time

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Adaptive Prediction

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Community Applications Sensing Informal Networks

Personal Social Network Personal Topic-Community Network

Personal Social Capital Management-Receiver Recommendation Demo

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Personal Social Network

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Personal Social Network

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Personal Social Network

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Personal Topic-Community Network

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Personal Social Capital Management-Receiver Recommendation Demo

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Personal Social Capital Management-Receiver Recommendation Demo

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Conclusions CTR algorithm incorporates contact, content,

and time information simultaneously

CommunityNet can model and predict the community behavior as well as personal behavior

Multi-modality algorithm performs better than both the social network-based and content-based predictions