Social media provides valuable resources to analyze user behaviors and capture user preferences. This article focuses on analyzing user behaviors in social media systems and designing a latent class statistical mixture model, named temporal context-aware mixture model (TCAM), to account for the intentions and preferences behind user behaviors. Based on the observation that the behaviors of a user in social media systems are generally influenced by intrinsic interest as well as the temporal context (e.g., the public's attention at that time), TCAM simultaneously models the topics related to users' intrinsic interests and the topics related to temporal context and then combines the influences from the two factors to model user behav...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Collaborative tagging systems are now deployed extensivelyto help users share and organize resources...
Thousands of new users join social media website everyday, generating huge amounts of new data. Twit...
© 2015 ACM 1046-8188/2015/03-ART10 $15.00. Social media provides valuable resources to analyze user ...
Social media provides valuable resources to analyze user behaviors and capture user preferences. Thi...
Users’ behaviors in social media systems are generally influenced by intrinsic interest as well as t...
Personalized recommender system has become an essential means to help people discover attractive and...
An essential problem in real-world recommender systems is that user preferences are not static and u...
User modeling for individual users on the Social Web plays an important role and is a fundamental s...
Social media is assuming a crucial role in purchasing decisions, and most companies are using social...
Capturing users’ preference that change over time is a great challenge in recommendation systems. Wh...
Time information plays a crucial role on social media popularity. Existing research on popularity pr...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Personalized ranking methods are at the core of many systems that learn to produce recommendations f...
Web 2.0 users generate and spread huge amounts of messages in online social media. Such user-generat...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Collaborative tagging systems are now deployed extensivelyto help users share and organize resources...
Thousands of new users join social media website everyday, generating huge amounts of new data. Twit...
© 2015 ACM 1046-8188/2015/03-ART10 $15.00. Social media provides valuable resources to analyze user ...
Social media provides valuable resources to analyze user behaviors and capture user preferences. Thi...
Users’ behaviors in social media systems are generally influenced by intrinsic interest as well as t...
Personalized recommender system has become an essential means to help people discover attractive and...
An essential problem in real-world recommender systems is that user preferences are not static and u...
User modeling for individual users on the Social Web plays an important role and is a fundamental s...
Social media is assuming a crucial role in purchasing decisions, and most companies are using social...
Capturing users’ preference that change over time is a great challenge in recommendation systems. Wh...
Time information plays a crucial role on social media popularity. Existing research on popularity pr...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Personalized ranking methods are at the core of many systems that learn to produce recommendations f...
Web 2.0 users generate and spread huge amounts of messages in online social media. Such user-generat...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Collaborative tagging systems are now deployed extensivelyto help users share and organize resources...
Thousands of new users join social media website everyday, generating huge amounts of new data. Twit...