| Importance of Multi-database Mining | p. 1 |
| Introduction | p. 1 |
| Role of Multi-database Mining in Real-world Applications | p. 2 |
| Multi-database Mining Problems | p. 4 |
| Differences Between Mono-and Multi-database Mining | p. 6 |
| Features of Data in Multi-databases | p. 6 |
| Features of Patterns in Multi-databases | p. 8 |
| Evolution of Multi-database Mining | p. 9 |
| Limitations of Previous Techniques | p. 12 |
| Process of Multi-database Mining | p. 14 |
| Description of Multi-database Mining | p. 14 |
| Practical Issues in the Process | p. 16 |
| Features of the Defined Process | p. 20 |
| Major Contributions of This Book | p. 23 |
| Organization of the Book | p. 24 |
| Data Mining and Multi-database Mining | p. 27 |
| Introduction | p. 27 |
| Knowledge Discovery in Databases | p. 28 |
| Processing Steps of KDD | p. 28 |
| Data Pre-processing | p. 30 |
| Data Mining | p. 31 |
| Post Data Mining | p. 33 |
| Applications of KDD | p. 34 |
| Association Rule Mining | p. 36 |
| Research into Mining Mono-databases | p. 41 |
| Research into Mining Multi-databases | p. 51 |
| Parallel Data Mining | p. 51 |
| Distributed Data Mining | p. 52 |
| Application-dependent Database Selection | p. 58 |
| Peculiarity-oriented Multi-database Mining | p. 59 |
| Summary | p. 61 |
| Local Pattern Analysis | p. 63 |
| Introduction | p. 63 |
| Previous Multi-database Mining Techniques | p. 64 |
| Local Patterns | p. 65 |
| Local Instance Analysis Inspired by Competition in Sports | p. 67 |
| The Structure of Patterns in Multi-database Environments | p. 70 |
| Effectiveness of Local Pattern Analysis | p. 73 |
| Summary | p. 74 |
| Identifying Quality Knowledge | p. 75 |
| Introduction | p. 75 |
| Problem Statement | p. 76 |
| Problems Faced by Traditional Multi-database Mining | p. 76 |
| Effectiveness of Identifying Quality Data | p. 78 |
| Needed Concepts | p. 80 |
| Nonstandard Interpretation | p. 82 |
| Proof Theory | p. 88 |
| Adding External Knowledge | p. 91 |
| The Use of the Framework | p. 95 |
| Applying to Real-world Applications | p. 95 |
| Evaluating Veridicality | p. 96 |
| Summary | p. 100 |
| Database Clustering | p. 103 |
| Introduction | p. 103 |
| Effectiveness of Classifying | p. 104 |
| Classifying Databases | p. 107 |
| Features in Databases | p. 107 |
| Similarity Measurement | p. 108 |
| Relevance of Databases and Classification | p. 113 |
| Ideal Classification and Goodness Measurement | p. 115 |
| Searching for a Good Classification | p. 120 |
| The First Step: Generating a Classification | p. 121 |
| The Second Step: Searching for a Good Classification | p. 123 |
| Algorithm Analysis | p. 127 |
| Procedure GreedyClass | p. 127 |
| Algorithm GoodClass | p. 129 |
| Evaluation of Application-independent Database Classification | p. 130 |
| Dataset Selection | p. 130 |
| Experimental Results | p. 131 |
| Analysis | p. 134 |
| Summary | p. 135 |
| Dealing with Inconsistency | p. 137 |
| Introduction | p. 137 |
| Problem Statement | p. 138 |
| Definitions of Formal Semantics | p. 139 |
| Weighted Majority | p. 143 |
| Mastering Local Pattern Sets | p. 146 |
| Examples of Synthesizing Local Pattern Sets | p. 148 |
| A Syntactic Characterization | p. 150 |
| Summary | p. 155 |
| Identifying High-vote Patterns | p. 157 |
| Introduction | p. 157 |
| Illustration of High-vote Patterns | p. 158 |
| Identifying High-vote Patterns | p. 161 |
| Algorithm Design | p. 163 |
| Searching for High-vote Patterns | p. 164 |
| Identifying High-vote Patterns: An Example | p. 165 |
| Algorithm Analysis | p. 167 |
| Identifying High-vote Patterns Using a Fuzzy Logic Controller | p. 168 |
| Needed Concepts in Fuzzy Logic | p. 168 |
| System Analysis | p. 170 |
| Setting Membership Functions for Input and Output Variables | p. 171 |
| Setting Fuzzy Rules | p. 172 |
| Fuzzification | p. 174 |
| Inference and Rule Composition | p. 174 |
| Defuzzification | p. 176 |
| Algorithm Design | p. 177 |
| High-vote Pattern Analysis | p. 178 |
| Normal Distribution | p. 178 |
| The Procedure of Clustering | p. 179 |
| Suggested Patterns | p. 183 |
| Summary | p. 183 |
| Identifying Exceptional Patterns | p. 185 |
| Introduction | p. 185 |
| Interesting Exceptional Patterns | p. 186 |
| Measuring the Interestingness | p. 186 |
| Behavior of Interest Measurements | p. 189 |
| Algorithm Design | p. 189 |
| Algorithm Design | p. 189 |
| Identifying Exceptions: An Example | p. 192 |
| Algorithm Analysis | p. 193 |
| Identifying Exceptions with a Fuzzy Logic Controller | p. 195 |
| Summary | p. 195 |
| Synthesizing Local Patterns by Weighting | p. 197 |
| Introduction | p. 197 |
| Problem Statement | p. 198 |
| Synthesizing Rules by Weighting | p. 200 |
| Weight of Evidence | p. 200 |
| Solving Weights of Databases | p. 201 |
| Algorithm Design | p. 205 |
| Improvement of Synthesizing Model | p. 206 |
| Effectiveness of Rule Selection | p. 206 |
| Process of Rule Selection | p. 208 |
| Optimized Algorithm | p. 210 |
| Algorithm Analysis | p. 211 |
| Procedure RuleSelection | p. 211 |
| Algorithm RuleSynthesizing | p. 212 |
| Summary | p. 213 |
| Conclusions and Future Work | p. 215 |
| Conclusions | p. 215 |
| Future Work | p. 218 |
| References | p. 221 |
| Subject Index | p. 231 |
| Table of Contents provided by Publisher. All Rights Reserved. |