Book description
Computational Trust Models and Machine Learning provides a detailed introduction to the concept of trust and its application in various computer science areas, including multi-agent systems, online social networks, and communication systems. Identifying trust modeling challenges that cannot be addressed by traditional approaches, this book:
- Explains how reputation-based systems are used to determine trust in diverse online communities
- Describes how machine learning techniques are employed to build robust reputation systems
- Explores two distinctive approaches to determining credibility of resources—one where the human role is implicit, and one that leverages human input explicitly
- Shows how decision support can be facilitated by computational trust models
- Discusses collaborative filtering-based trust aware recommendation systems
- Defines a framework for translating a trust modeling problem into a learning problem
- Investigates the objectivity of human feedback, emphasizing the need to filter out outlying opinions
Computational Trust Models and Machine Learning effectively demonstrates how novel machine learning techniques can improve the accuracy of trust assessment.
Table of contents
- Front Cover
- Series Page
- Dedication
- Contents (1/2)
- Contents (2/2)
- List of Figures
- Preface
- About the Editors
- Contributors
- Chapter 1: Introduction (1/4)
- Chapter 1: Introduction (2/4)
- Chapter 1: Introduction (3/4)
- Chapter 1: Introduction (4/4)
- Chapter 2: Trust in Online Communities (1/4)
- Chapter 2: Trust in Online Communities (2/4)
- Chapter 2: Trust in Online Communities (3/4)
- Chapter 2: Trust in Online Communities (4/4)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (1/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (2/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (3/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (4/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (5/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (6/7)
- Chapter 3: Judging the Veracity of Claims and Reliability of Sources with Fact-Finders (7/7)
- Chapter 4: Web Credibility Assessment (1/10)
- Chapter 4: Web Credibility Assessment (2/10)
- Chapter 4: Web Credibility Assessment (3/10)
- Chapter 4: Web Credibility Assessment (4/10)
- Chapter 4: Web Credibility Assessment (5/10)
- Chapter 4: Web Credibility Assessment (6/10)
- Chapter 4: Web Credibility Assessment (7/10)
- Chapter 4: Web Credibility Assessment (8/10)
- Chapter 4: Web Credibility Assessment (9/10)
- Chapter 4: Web Credibility Assessment (10/10)
- Chapter 5: Trust-Aware Recommender Systems (1/7)
- Chapter 5: Trust-Aware Recommender Systems (2/7)
- Chapter 5: Trust-Aware Recommender Systems (3/7)
- Chapter 5: Trust-Aware Recommender Systems (4/7)
- Chapter 5: Trust-Aware Recommender Systems (5/7)
- Chapter 5: Trust-Aware Recommender Systems (6/7)
- Chapter 5: Trust-Aware Recommender Systems (7/7)
- Chapter 6: Biases in Trust-Based Systems (1/4)
- Chapter 6: Biases in Trust-Based Systems (2/4)
- Chapter 6: Biases in Trust-Based Systems (3/4)
- Chapter 6: Biases in Trust-Based Systems (4/4)
- Bibliography (1/6)
- Bibliography (2/6)
- Bibliography (3/6)
- Bibliography (4/6)
- Bibliography (5/6)
- Bibliography (6/6)
- Back Cover
Product information
- Title: Computational Trust Models and Machine Learning
- Author(s):
- Release date: October 2014
- Publisher(s): Chapman and Hall/CRC
- ISBN: 9781482226676
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