<p><p>This SpringerBrief provides a pioneering, central point of reference for the interested reader in Large Group Decision Making trends such as consensus support, fusion and weighting of relevant decision information, subgroup clustering, behavior management, and implementation of decision suppor
Social Network Large-Scale Decision-Making: Developing Decision Support Methods at Scale and Social Networks (Uncertainty and Operations Research)
β Scribed by Zhijiao Du, Sumin Yu
- Publisher
- Springer
- Year
- 2023
- Tongue
- English
- Leaves
- 157
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book focuses on the following three key topics in social network large-scale decision-making: structure-heterogeneous information fusion, clustering analysis with multiple measurement attributes, and consensus building considering trust loss. To address the aggregation and distance measurement of structure-heterogeneous evaluation information, we propose a fusion method based on trust and behavior analysis. Then, two clustering algorithms are put forward, including trust Cop-K-means clustering algorithm and compatibility distance-oriented off-center clustering algorithm. The above clustering algorithms emphasize the similarity of opinions and social relationships as important measurement attributes of clustering. Finally, this book explores the impact of trust loss originating from social relationships on the CRP and develops two consensus-reaching models, namely the improved minimum-cost consensus model that takes into account voluntary trust loss and the punishment-driven consensus-reaching model. Some case studies, a large number of numerical experiments, and comparative analyses are provided in this book to demonstrate the characteristics and advantages of the proposed methods and models.
The authorsencourage researchers, students, and enterprises engaged in social network analysis, group decision-making, multi-agent collaborative decision-making, and large-scale data processing to pay attention to the proposals presented in this book. After reading this book, the authors expect readers to have a deeper and more comprehensive understanding of social network large-scale decision-making. Inorder to make it more accurate for readers to understand the methods and models presented in this book, the authors strongly recommend that potential readers have a good research foundation in fuzzy soft computing, traditional clustering algorithms, basic mathematics knowledge, and other related preliminaries.
β¦ Table of Contents
Preface
Contents
About theΒ Authors
Acronyms
Important Symbols
List ofΒ Figures
List ofΒ Tables
1 Introduction
1.1 Motivation
1.2 Who Should Read This Book and Why?
1.3 Chapter Overview
2 Preliminary Knowledge
2.1 Large-Scale Decision-Making (LSDM)
2.2 Social Network Group Decision-Making (SNGDM)
2.3 Consensus-Reaching Process and Minimum-Cost Consensus
2.4 Proposed Social Network Large-Scale Decision-Making Scenarios
References
3 Trust and Behavior Analysis-Based Structure-Heterogeneous Information Fusion
3.1 Research Background and Problem Configuration
3.2 Analysis of the Selection Behaviors of Attributes and Alternatives
3.3 Procedure of Trust and Behavior Analysis-Based Fusion Method
3.3.1 Constructing the Trust Sociomatrix
3.3.2 Calculating the Distance Between SH Evaluation Information
3.3.3 Generating the Weights of DMs
3.3.4 Fusing SH Individual Evaluation Information
3.4 Discussion and Comparative Analysis
3.4.1 Further Analysis on the Calculation of the Weights of DMs
3.4.2 Dealing with Extreme Decision Situations
3.4.3 Comparative Analysis
3.5 Conclusions
References
4 Trust Cop-Kmeans Clustering Method
4.1 Trust-Similarity Analysis-Based Decision Information Processing
4.2 Trust Cop-Kmeans Clustering Algorithm
4.3 Determining the Weights of Clusters and DMs
4.4 Discussion and Comparative Analysis
4.4.1 TCop-Kmeans Algorithm Versus K-Means Algorithm
4.4.2 Determination of Trust Constraint Threshold
4.4.3 Analysis of upper KK
4.5 Conclusions
References
5 Compatibility Distance Oriented Off-Center Clustering Method
5.1 Preliminaries About PLTSs and Problem Configuration
5.1.1 Probabilistic Linguistic Term Sets (PLTSs)
5.1.2 Configuration of an SNLSDM-PL Problem
5.2 Compatibility Distance Oriented Off-Center Clustering Algorithm
5.2.1 CDOOC Clustering Algorithm
5.2.2 Visualization of CDOOC Clustering Algorithm
5.2.3 Generation of the Weights of Clusters
5.3 Comparative Analysis and Discussion
5.3.1 Comparison with Traditional Clustering Algorithms
5.3.2 Analysis of qq
5.4 Conclusions
References
6 Minimum-Cost Consensus Model Considering Trust Loss
6.1 Problem Configuration
6.2 Consensus Measure and Consensus Cost Measure
6.3 Consensus-Reaching Iteration Based on Improved MCC
6.4 Numerical Experiment
6.5 IMCC Model Versus Different MCC Models
6.6 Analysis of the Effect of Voluntary Trust Loss on the CRP
6.7 Conclusions
References
7 Punishment-Driven Consensus-Reaching Model Considering Trust Loss
7.1 Problem Configuration
7.2 Computing the Consensus Degree
7.3 Logic for Solving CRP Using Trust Loss
7.4 Consensus Scenario Classification and Adjustment Strategies
7.5 Analysis of the Moderating Effect of Trust Loss on the CRP
7.6 Comparison with Other LSDM Consensus Models
7.7 Conclusions
References
8 Practical Applications
8.1 Application of TBA-Based Information Fusion Method in Coal β¦
8.1.1 Case Description
8.1.2 Decision Process
8.2 Application of PDCRM in Social Capital Selection
8.2.1 Case Description
8.2.2 Using PDCRM to Solve the Problem
8.3 Application of CDOOC Clustering Method in Car-Sharing β¦
References
9 Conclusions and Future Research Directions
9.1 Findings and Conclusions
9.2 Future Research Directions
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