Preface |
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lx | |
Part I: Fundamentals |
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1 | (194) |
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Chapter 1 Pattern Recognition: Feature Space Construction |
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3 | (50) |
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3 | (5) |
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1.2 From Patterns to Features |
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8 | (9) |
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17 | (6) |
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1.4 Evaluation and Selection of Features |
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23 | (24) |
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47 | (1) |
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48 | (2) |
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50 | (1) |
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50 | (3) |
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Chapter 2 Pattern Recognition: Classifiers |
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53 | (48) |
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53 | (2) |
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2.2 Nearest Neighbors Classification Method |
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55 | (2) |
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2.3 Support Vector Machines Classification Algorithm |
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57 | (8) |
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2.4 Decision Trees in Classification Problems |
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65 | (13) |
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78 | (4) |
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82 | (15) |
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97 | (1) |
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97 | (4) |
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Chapter 3 Classification With Rejection Problem Formulation And An Overview |
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101 | (32) |
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102 | (5) |
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3.2 The Concept of Rejecting Architectures |
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107 | (5) |
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3.3 Native Patterns-Based Rejection |
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112 | (6) |
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3.4 Rejection Option in the Dataset of Native Patterns: A Case Study |
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118 | (11) |
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129 | (1) |
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130 | (3) |
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Chapter 4 Evaluating Pattern Recognition Problem |
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133 | (26) |
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4.1 Evaluating Recognition with Rejection: Basic Concepts |
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133 | (12) |
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4.2 Classification with Rejection with No Foreign Patterns |
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145 | (4) |
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4.3 Classification with Rejection: Local Characterization |
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149 | (7) |
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156 | (1) |
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156 | (3) |
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Chapter 5 Recognition With Rejection: Empirical Analysis |
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159 | (36) |
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160 | (15) |
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175 | (16) |
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191 | (1) |
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192 | (3) |
Part II: Advanced Topics: A Framework Of Granular Computing |
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195 | (98) |
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Chapter 6 Concepts And Notions Of Information Granules |
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197 | (26) |
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6.1 Information Granularity and Granular Computing |
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197 | (4) |
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6.2 Formal Platforms of Information Granularity |
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201 | (4) |
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6.3 Intervals and Calculus of Intervals |
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205 | (3) |
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6.4 Calculus of Fuzzy Sets |
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208 | (8) |
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6.5 Characterization of Information Granules: Coverage and Specificity |
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216 | (3) |
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6.6 Matching Information Granules |
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219 | (1) |
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220 | (1) |
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221 | (2) |
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Chapter 7 Information Granules: Fundamental Constructs |
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223 | (24) |
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7.1 The Principle of Justifiable Granularity |
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223 | (7) |
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7.2 Information Granularity as a Design Asset |
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230 | (5) |
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7.3 Single-Step and Multistep Prediction of Temporal Data in Time Series Models |
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235 | (1) |
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7.4 Development of Granular Models of Higher Type |
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236 | (5) |
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7.5 Classification with Granular Patterns |
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241 | (4) |
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245 | (1) |
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246 | (1) |
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247 | (28) |
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8.1 Fuzzy C-Means Clustering Method |
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247 | (5) |
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8.2 k-Means Clustering Algorithm |
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252 | (1) |
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8.3 Augmented Fuzzy Clustering with Clusters and Variables Weighting |
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253 | (1) |
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8.4 Knowledge-Based Clustering |
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254 | (1) |
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8.5 Quality of Clustering Results |
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254 | (2) |
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8.6 Information Granules and Interpretation of Clustering Results |
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256 | (2) |
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8.7 Hierarchical Clustering |
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258 | (3) |
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8.8 Information Granules in Privacy Problem: A Concept of Microaggregation |
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261 | (1) |
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8.9 Development of Information Granules of Higher Type |
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262 | (2) |
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8.10 Experimental Studies |
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264 | (8) |
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272 | (1) |
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273 | (2) |
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Chapter 9 Quality Of Data: Imputation And Data Balancing |
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275 | (18) |
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9.1 Data Imputation: Underlying Concepts and Key Problems |
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275 | (1) |
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9.2 Selected Categories of Imputation Methods |
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276 | (2) |
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9.3 Imputation with the Use of Information Granules |
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278 | (1) |
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9.4 Granular Imputation with the Principle of Justifiable Granularity |
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279 | (4) |
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9.5 Granular Imputation with Fuzzy Clustering |
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283 | (2) |
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9.6 Data Imputation in System Modeling |
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285 | (1) |
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9.7 Imbalanced Data and their Granular Characterization |
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286 | (5) |
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291 | (1) |
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291 | (2) |
Index |
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293 | |