Trust-based Collective View Prediction

Nonfiction, Computers, Advanced Computing, Information Technology, Database Management, General Computing
Cover of the book Trust-based Collective View Prediction by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou, Springer New York
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou ISBN: 9781461472025
Publisher: Springer New York Publication: June 28, 2013
Imprint: Springer Language: English
Author: Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
ISBN: 9781461472025
Publisher: Springer New York
Publication: June 28, 2013
Imprint: Springer
Language: English

Collective view prediction is to judge the opinions of an active web user based on unknown elements by referring to the collective mind of the whole community. Content-based recommendation and collaborative filtering are two mainstream collective view prediction techniques. They generate predictions by analyzing the text features of the target object or the similarity of users’ past behaviors. Still, these techniques are vulnerable to the artificially-injected noise data, because they are not able to judge the reliability and credibility of the information sources. Trust-based Collective View Prediction describes new approaches for tackling this problem by utilizing users’ trust relationships from the perspectives of fundamental theory, trust-based collective view prediction algorithms and real case studies.

The book consists of two main parts – a theoretical foundation and an algorithmic study. The first part will review several basic concepts and methods related to collective view prediction, such as state-of-the-art recommender systems, sentimental analysis, collective view, trust management, the Relationship of Collective View and Trustworthy, and trust in collective view prediction. In the second part, the authors present their models and algorithms based on a quantitative analysis of more than 300 thousand users’ data from popular product-reviewing websites. They also introduce two new trust-based prediction algorithms, one collaborative algorithm based on the second-order Markov random walk model, and one Bayesian fitting model for combining multiple predictors.

The discussed concepts, developed algorithms, empirical results, evaluation methodologies and the robust analysis framework described in Trust-based Collective View Prediction will not only provide valuable insights and findings to related research communities and peers, but also showcase the great potential to encourage industries and business partners to integrate these techniques into new applications.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

Collective view prediction is to judge the opinions of an active web user based on unknown elements by referring to the collective mind of the whole community. Content-based recommendation and collaborative filtering are two mainstream collective view prediction techniques. They generate predictions by analyzing the text features of the target object or the similarity of users’ past behaviors. Still, these techniques are vulnerable to the artificially-injected noise data, because they are not able to judge the reliability and credibility of the information sources. Trust-based Collective View Prediction describes new approaches for tackling this problem by utilizing users’ trust relationships from the perspectives of fundamental theory, trust-based collective view prediction algorithms and real case studies.

The book consists of two main parts – a theoretical foundation and an algorithmic study. The first part will review several basic concepts and methods related to collective view prediction, such as state-of-the-art recommender systems, sentimental analysis, collective view, trust management, the Relationship of Collective View and Trustworthy, and trust in collective view prediction. In the second part, the authors present their models and algorithms based on a quantitative analysis of more than 300 thousand users’ data from popular product-reviewing websites. They also introduce two new trust-based prediction algorithms, one collaborative algorithm based on the second-order Markov random walk model, and one Bayesian fitting model for combining multiple predictors.

The discussed concepts, developed algorithms, empirical results, evaluation methodologies and the robust analysis framework described in Trust-based Collective View Prediction will not only provide valuable insights and findings to related research communities and peers, but also showcase the great potential to encourage industries and business partners to integrate these techniques into new applications.

More books from Springer New York

Cover of the book Introducing Spoken Dialogue Systems into Intelligent Environments by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Dynamic Behavior of Materials, Volume 1 by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Fundamentals of Shallow Water Acoustics by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book UWB Communication Systems: Conventional and 60 GHz by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Logic Synthesis for Genetic Diseases by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Handbook of Human Centric Visualization by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Elliptic Curves and Arithmetic Invariants by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book The Principles of Clinical Cytogenetics by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Physical Activity Across the Lifespan by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Power, Dominance, and Nonverbal Behavior by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Handbook of Neuroevolution Through Erlang by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Infinite-Horizon Optimal Control in the Discrete-Time Framework by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Particle Filters for Random Set Models by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Expert Critiquing Systems by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
Cover of the book Peripheral and Cerebrovascular Intervention by Tiejian Luo, Su Chen, Guandong Xu, Jia Zhou
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy