Computational Trust Models and Machine Learning

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advanced decision support
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Age Group_Uncategorized
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B01=Anwitaman Datta
B01=Ee-Peng Lim
B01=Xin Liu
beta
Beta PDF
Biased Feedback
Biases in Trust-based Systems
British National Corpus
Category1=Non-Fiction
Category=UYQM
Cold Start Problem
collaborative filtering
Computational Trust
COP=United States
credibility assessment
Data Mining
Delivery_Delivery within 10-20 working days
density
eq_bestseller
eq_computing
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Fact-Finder
Fake Reviews
function
human feedback analysis
inference
Interior Point Methods
Judging the Veracity of Claims and Reliability of Sources with Fact-Finders
Language_English
Machine Learning
multi-agent systems
Multi-criteria Environments
Online Community Trust
Online Credibility
online social networks
P2P Systems
PA=Available
Price_€100 and above
Probabilistic Context Free Grammar
probability
PS=Active
recommender
Recommender Systems
reputation
Reputation Score
Reputation Systems
score
softlaunch
Sybil Nodes
system
Target Agent
Trust Evaluation
Trust in Online Communities
Trust Information
Trust Metrics
Trust Model
trust modelling in machine learning
Trust Score
Trust Values
Trust-Aware Recommender System
Trust-Aware Recommender Systems
Trust-Based System
Trustworthiness Score
value
Web Credibility
Web Credibility Assessment
Webpage URL
Weighted Product Model

Product details

  • ISBN 9781482226669
  • Weight: 468g
  • Dimensions: 156 x 234mm
  • Publication Date: 29 Oct 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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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.

Xin Liu is currently a postdoctoral researcher in the Laboratoire de Systèmes d'Informations Répartis, led by Professor Karl Aberer, at École Polytechnique Fédérale de Lausanne (EPFL), Switzerland. Before joining EPFL, Xin received his Ph.D in computer science from Nanyang Technological University in Singapore, supervised by Associate Professor Anwitaman Datta. His current research interests include recommender systems, trust and reputation systems, social computing, and distributed computing. His papers have been accepted at several prestigious academic events, and he has been a program committee member and reviewer for numerous international conferences and journals.

Anwitaman Datta is an associate professor at Nanyang Technological University, Singapore, where he leads the Self-* Aspects of Networked and Distributed Systems Research Group and teaches courses on security management and cryptography and network security. Well published, he has focused his research on P2P storage, decentralized online social networks, structured overlays, and computational trust. His current research interests include the design of resilient large-scale distributed systems, coding for storage, security and privacy, and social media analysis. His projects have been funded by the Singapore Ministry of Education, HP Labs Innovation Research Award, and more.

Ee-Peng Lim is a professor at Singapore Management University (SMU), co-director of the SMU/Carnegie Mellon University Living Analytics Research Center, and associate editor of numerous journals and publications. He holds a Ph.D from the University of Minnesota, Minneapolis, USA and a B.Sc from the National University of Singapore. His current research interests include social network and web mining, information integration, and digital libraries. A former ACM Publications Board member, he currently serves on the steering committees of the International Conference on Asian Digital Libraries, Pacific Asia Conference on Knowledge Discovery and Data Mining, and International Conference on Social Informatics.