定 价:¥98.00
作 者: | 方滨兴 等 编 |
出版社: | 电子工业出版社 |
丛编项: | |
标 签: | 暂缺 |
ISBN: | 9787121327452 | 出版时间: | 2017-12-01 | 包装: | |
开本: | 页数: | 字数: |
Chapter 1 Introduction 1
1.1 Social Network and Its Development 1
1.1.1 The Origin of Social Network 1
1.1.2 A Glimpse of the Development Procedure of Social Networks From the
Perspective of Sociology 2
1.1.3 A Glimpse of the Development of Social Network From the
Perspective of Anthropology 4
1.2 Development of Online Social Networks 5
1.2.1 Concept of Online Social Networks 5
1.2.2 Features of Online Social Networks 7
1.2.3 Development of Online Social Networks 8
1.2.4 Influences of Online Social Networks on People’s life 9
1.3 Background and Significance of Online Social Network Analysis 11
1.4 Scientific Questions of Online Social Network Analysis 13
1.4.1 Challenges of Online Social Network Analysis 13
1.4.2 Three Scientific Questions and Associated Researches 15
1.5 Organization of This Book 29
References 32
Chapter 2 Social Network Structure Analysis and Modeling 35
2.1 Introduction 35
2.2 Examples 36
2.3 Statistical Characteristics of Social Network 37
2.3.1 Degree Distribution 38
2.3.2 Average Path Length 39
2.3.3 Density 40
2.3.4 Clustering Coefficient 41
2.3.5 Betweenness 42
2.4 Social Networking Characteristics Analysis 43
2.4.1 Small-world Phenomenon 43
2.4.2 Scale-free Characteristic 47
2.4.3 Assortativity 53
2.4.4 Reciprocity 57
2.5 Social Network Structure Modeling and Generation 58
2.5.1 WS Model 59
2.5.2 Extension of WS Model 62
2.5.3 BA Model 63
2.5.4 Extension of BA Model 67
2.5.5 Other Models 70
2.6 Summary 74
References 74
Chapter 3 Technologies and Approaches for Virtual Community Detection 78
3.1 Introduction 78
3.2 Theoretical Basis of Virtual Community Detection Technology 79
3.2.1 The Definition of Virtual Community 79
3.2.2 Development Process of Virtual Community
Detection Algorithms 81
3.2.3 The Accuracy Indexes of Evaluation for Virtual Community
Detection Algorithms 83
3.2.4 The Calculating Complexity of Algorithms for Virtual
Community Detection 88
3.2.5 Typical Data Sets Needed for Testing Virtual Community
Detection Algorithms 89
3.3 Static Calculation Detection Algorithms for Virtual Communities 94
3.3.1 Modularity Optimization Algorithms 95
3.3.2 Multi-objective Optimization Algorithms 98
3.3.3 Algorithms Based on Probability Model 103
3.3.4 Information Coding Algorithms 107
3.4 Dynamic Calculation Detection Algorithms for Virtual Communities 112
3.4.1 Clique Percolation Algorithms 112
3.4.2 Agglomerative Algorithms Based on Similarity 116
3.4.3 Label Propagation Algorithms 120
3.4.4 Local Expansion Optimization Algorithms 125
3.5 Summary 128
References 130
Chapter 4 Evolution Analysis of Virtual Communities 133
4.1 Introduction 133
4.2 Merging of Virtual Communities 134
4.2.1 Period Closure in Merging of Virtual Communities 134
4.2.2 Preference Connection in Merging of Virtual Communities 137
4.2.3 Aging factors in merging of virtual communities 142
4.3 Evolution of Virtual Communities 145
4.3.1 Accumulative Effect in Evolution of Virtual Communities 145
4.3.2 Structural Diversity in Evolution of Virtual Communities 149
4.3.3 Structural Balance in Evolution of Virtual Communities 154
4.4 Detection of Evolving Virtual Communities 156
4.4.1 Detection of Evolving Virtual Community Based on Direct
Similarity Comparison at Adjacent Moments 156
4.4.2 Detection of Evolving Virtual Community Based on Evolution
Clustering Analysis 158
4.4.3 Detection of Evolving Virtual Community Based on Laplacian
Dynamics 159
4.4.4 Detection of Evolving Virtual Community Based on Clique
Percolation Algorithm 161
4.4.5 Detection of Evolving Virtual Community Based on Trend
Analysis on Node Behavior 162
4.5 Summary 163
References 164
Chapter 5 Analysis of User Behavior 167
5.1 Introduction 167
5.2 Online Social Network User Adoption and Loyalty 168
5.2.1 Online Social Network User Adoption 168
5.2.2 Online Social Network User Loyalty 178
5.3 Individual Usage Behavior 189
5.3.1 General Usage Behavior 189
5.3.2 Behavior of Content Generation 195
5.3.3 Behavior of Content Consumption 206
5.4 Group Interaction Behavior 214
5.4.1 Relationship Selection of Group Interaction 214
5.4.2 Content Selection of Group Interaction 220
5.4.3 The Time Law of Group Interaction 222
5.5 Summary 226
References 227
Chapter 6 Social Network Sentiment Analysis 233
6.1 Introduction 233
6.1.1 History of Sentiment Analysis 234
6.1.2 Sentiment Definition and Classification 235
6.1.3 Application of Sentiment Analysis 237
6.2 Sentiment Analysis Techniques 238
6.2.1 Semantic Rule-based Sentiment Analysis 238
6.2.2 Supervised Learning-based Sentiment Analysis 243
6.2.3 Topic Model-based Sentiment Analysis 249
6.3 Social Network Sentiment Analysis Techniques 251
6.3.1 The Sentiment Analysis Technique for Short Text 251
6.3.2 Sentiment Analysis Based on Collective Intelligence 255
6.3.3 Mining Techniques on Spam Opinions in Social Network 258
6.4 Extension and Transformation of Sentiment Analysis Technique 259
6.4.1 Sentiment Summary Technique 259
6.4.2 Sentiment Analysis Technology Based on the Mechanism of
Transfer Learning 261
6.5 Summary 263
References 264
Chapter 7 Introduction Analysis and Its Technologies 267
7.1 Introduction 268
7.2 Influence Strength Calculation 270
7.2.1 Influence Strength Calculation Based on Network Structure 271
7.2.2 Behaviour-based Influence Strength Calculation 272
7.2.3 Topic-based Influence Strength Calculation 274
7.3 Identification of Influentials 277
7.3.1 Individual Influence Calculation Based Network Structure 277
7.3.2 PageRank 282
7.3.3 Individual Influence Calculation Based on Behavior 285
7.3.4 Individual Influence Calculation Based on Topics 289
7.4 Summary 291
References 292
Chapter 8 Collective Aggregation and the Influence Mechanisms 294
8.1 Introduction 295
8.2 Mechanisms Engendering Collective Intelligence 297
8.2.1 Collective Intelligence 297
8.2.2 Self-determination Theory and Collective Intelligence 299
8.2.3 Conditions Engendering Collective Intelligence 301
8.2.4 Factors Influencing Group Intelligence 302
8.2.5 Analytical Models of Collective Intelligence 306
8.2.6 Simulation of Collective Intelligence in Social Networks 313
8.3 Mechanisms Engendering Group Polarization 323
8.3.1 Group Polarization 323
8.3.2 Social Comparison Theory and Group Polarization 325
8.3.3 Conditions Engendering Group Polarization 327
8.3.4 Factors That Influence the Formation of Group Polarization 328
8.3.5 Main Models of Group Polarization Analysis 331
8.3.6 Simulation of Group Polarization in Social Network
Without the Influence of Social Network Structure 342
8.3.7 Simulation of Group Polarization in Social Networks
With the Influence of Social Network Structure 347
8.4 Summary of the Chapter 357
References 359
Chapter 9 Information Retrieval in Social Networks 364
9.1 Introduction 365
9.2 Content Search in Social Network 368
9.2.1 Classical IR and Relevance Feedback Models 369
9.2.2 Query Representation in Microblog Search 379
9.2.3 Document Representation in Microblog Search 385
9.2.4 Microblog Retrieval Models 390
9.3 Content Classification 396
9.3.1 Feature Processing in Short Text Classification 397
9.3.2 Short Text Classification Algorithm 400
9.4 Social Network Recommendation 403
9.4.1 Brief Introduction to Social Recommendation 405
9.4.2 Memory Based Social Recommendation 407
9.4.3 Model Based Social Recommendation 413
9.5 Summary of the Chapter 421
References 422
Chapter 10 Information Retrieval in Social Networks 432
10.1 Introduction 432
10.2 Influencing Factors Related to Information
Diffusion in Social Networks 434
10.2.1 Structure of Social Networks 434
10.2.2 Groups in Social Networks 435
10.2.3 Information 436
10.3 Diffusion Model Based on Network Structure 437
10.3.1 Linear Threshold Model 437
10.3.2 Independent Cascades Model 439
10.3.3 Related Extended Models 441
10.4 Diffusion Model Based on the States of Groups 442
10.4.1 Classical Epidemic Models 443
10.4.2 Infected Diffusion Models in Social Networks 445
10.4.3 Diffusion Models Based on Influence 447
10.5 Diffusion Model Based on Information Characteristics 448
10.5.1 Diffusion Analysis for Multiple Source Information 448
10.5.2 Competitive Diffusion of Information 450
10.6 Popularity Prediction Method 452
10.6.1 Prediction Models Based on Historical Popularity 453
10.6.2 Prediction Models Based on Network Structure 454
10.6.3 Prediction Models Based on User Behaviors 455
10.6.4 Prediction Models Based on Time Series 457
10.7 Information source location 467
10.7.1 Concept of Information Source Location 467
10.7.2 Source Location Methods Based on Centrality 469
10.7.3 Source Location Methods Based on Statistical
Reasoning Framework 472
10.7.4 Multiple Information Source Location Methods 476
10.8 Summary 480
References 481
Chapter 11 Topic Discovery and Evolution 485
11.1 Introduction 485
11.2 Models and Algorithms of Topic Discovery 487
11.2.1 Topic Model Based Topic Discovery 488
11.2.2 Vector Space Model Based Topic Discovery 502
11.2.3 Term Relationship Graph Based Topic Discovery 507
11.3 Models and Algorithms of Topic Evolution 512
11.3.1 Simple Topic Evolution 513
11.3.2 Topic Model Based Topic Evolution 515
11.3.3 Adjacent Time Slice Association Based Topic Evolution 518
11.4 Summary of the Chapter 519
References 521
Appendix 523
Chapter 12 Algorithms of Influence Maximization 527
12.1 Introduction 527
12.2 Basic Concepts and Theory Basis 528
12.3 Metrics of Influence Maximization 531
12.4 Classification of Influence Maximization Algorithms 533
12.5 Greedy Algorithm of Influence Maximization 533
12.5.1 Basic Concepts of Greedy Algorithm 533
12.5.2 Basic Greedy Algorithm 534
12.5.3 CELF Algorithm 536
12.5.4 Mix Greedy Algorithm 536
12.5.5 Other Greedy Algorithms 538
12.5.6 Summary of Greedy Algorithms 540
12.6 Heuristic Algorithms of Influence Maximization 540
12.6.1 Degree Discount Heuristic 540
12.6.2 PMIA Heuristic 542
12.6.3 LDAG Heuristic 542
12.6.4 Other Heuristics 543
12.6.5 Summary of Heuristic Algorithms 544
12.7 Extension and Deformation of Influence Maximization 544
12.7.1 Extension of Influence Maximization 545
12.7.2 Deformation of Influence Maximization 547
12.8 Chapter Summary 548
References 549