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Text Mining

Applications and Theory
BuchGebunden
224 Seiten
Englisch
Wileyerschienen am12.03.2010
Text Mining: Applications and Theory presents the state-of-the-art algorithms for text mining from both the academic and industrial perspectives.mehr
Verfügbare Formate
BuchGebunden
EUR119,50
E-BookPDF2 - DRM Adobe / Adobe Ebook ReaderE-Book
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Produkt

KlappentextText Mining: Applications and Theory presents the state-of-the-art algorithms for text mining from both the academic and industrial perspectives.
Details
ISBN/GTIN978-0-470-74982-1
ProduktartBuch
EinbandartGebunden
FormatGenäht
Verlag
Erscheinungsjahr2010
Erscheinungsdatum12.03.2010
Seiten224 Seiten
SpracheEnglisch
MasseBreite 159 mm, Höhe 239 mm, Dicke 17 mm
Gewicht488 g
Artikel-Nr.12356901

Inhalt/Kritik

Inhaltsverzeichnis
List of Contributors xi Preface xiii Part I Text Extraction, Classification, and Clustering 1 1 Automatic keyword extraction from individual documents 3 1.1 Introduction 3 1.1.1 Keyword extraction methods 4 1.2 Rapid automatic keyword extraction 5 1.2.1 Candidate keywords 6 1.2.2 Keyword scores 7 1.2.3 Adjoining keywords 8 1.2.4 Extracted keywords 8 1.3 Benchmark evaluation 9 1.3.1 Evaluating precision and recall 9 1.3.2 Evaluating efficiency 10 1.4 Stoplist generation 11 1.5 Evaluation on news articles 15 1.5.1 The MPQA Corpus 15 1.5.2 Extracting keywords from news articles 15 1.6 Summary 18 1.7 Acknowledgements 19 References 19 2 Algebraic techniques for multilingual document clustering 21 2.1 Introduction 21 2.2 Background 22 2.3 Experimental setup 23 2.4 Multilingual LSA 25 2.5 Tucker1 method 27 2.6 PARAFAC2 method 28 2.7 LSA with term alignments 29 2.8 Latent morpho-semantic analysis (LMSA) 32 2.9 LMSA with term alignments 33 2.10 Discussion of results and techniques 33 2.11 Acknowledgements 35 References 35 3 Content-based spam email classification using machine-learning algorithms 37 3.1 Introduction 37 3.2 Machine-learning algorithms 39 3.2.1 Naive Bayes 39 3.2.2 LogitBoost 40 3.2.3 Support vector machines 41 3.2.4 Augmented latent semantic indexing spaces 43 3.2.5 Radial basis function networks 44 3.3 Data preprocessing 45 3.3.1 Feature selection 45 3.3.2 Message representation 47 3.4 Evaluation of email classification 48 3.5 Experiments 49 3.5.1 Experiments with PU 1 49 3.5.2 Experiments with ZH 1 51 3.6 Characteristics of classifiers 53 3.7 Concluding remarks 54 3.8 Acknowledgements 55 References 55 4 Utilizing nonnegative matrix factorization for email classification problems 57 4.1 Introduction 57 4.1.1 Related work 59 4.1.2 Synopsis 60 4.2 Background 60 4.2.1 Nonnegative matrix factorization 60 4.2.2 Algorithms for computing NMF 61 4.2.3 Datasets 63 4.2.4 Interpretation 64 4.3 NMF initialization based on feature ranking 65 4.3.1 Feature subset selection 66 4.3.2 FS initialization 66 4.4 NMF-based classification methods 70 4.4.1 Classification using basis features 70 4.4.2 Generalizing LSI based on NMF 72 4.5 Conclusions 78 4.6 Acknowledgements 79 References 79 5 Constrained clustering with k-means type algorithms 81 5.1 Introduction 81 5.2 Notations and classical k-means 82 5.3 Constrained k-means with Bregman divergences 84 5.3.1 Quadratic k-means with cannot-link constraints 84 5.3.2 Elimination of must-link constraints 87 5.3.3 Clustering with Bregman divergences 89 5.4 Constrained smoka type clustering 92 5.5 Constrained spherical k-means 95 5.5.1 Spherical k-means with cannot-link constraints only 96 5.5.2 Spherical k-means with cannot-link and must-link constraints 98 5.6 Numerical experiments 99 5.6.1 Quadratic k-means 100 5.6.2 Spherical k-means 100 5.7 Conclusion 101 References 102 Part II Anomaly and Trend Detection 105 6 Survey of text visualization techniques 107 6.1 Visualization in text analysis 107 6.2 Tag clouds 108 6.3 Authorship and change tracking 110 6.4 Data exploration and the search for novel patterns 111 6.5 Sentiment tracking 111 6.6 Visual analytics and FutureLens 113 6.7 Scenario discovery 114 6.7.1 Scenarios 115 6.7.2 Evaluating solutions 115 6.8 Earlier prototype 116 6.9 Features of FutureLens 117 6.10 Scenario discovery example: bioterrorism 119 6.11 Scenario discovery example: drug trafficking 121 6.12 Future work 123 References 126 7 Adaptive threshold setting for novelty mining 129 7.1 Introduction 129 7.2 Adaptive threshold setting in novelty mining 131 7.2.1 Background 131 7.2.2 Motivation 132 7.2.3 Gaussian-based adaptive threshold setting 132 7.2.4 Implementation issues 137 7.3 Experimental study 138 7.3.1 Datasets 138 7.3.2 Working example 139 7.3.3 Experiments and results 142 7.4 Conclusion 146 References 147 8 Text mining and cybercrime 149 8.1 Introduction 149 8.2 Current research in Internet predation and cyberbullying 151 8.2.1 Capturing IM and IRC chat 151 8.2.2 Current collections for use in analysis 152 8.2.3 Analysis of IM and IRC chat 153 8.2.4 Internet predation detection 153 8.2.5 Cyberbullying detection 158 8.2.6 Legal issues 159 8.3 Commercial software for monitoring chat 159 8.4 Conclusions and future directions 161 8.5 Acknowledgements 162 References 162 Part III Text Streams 165 9 Events and trends in text streams 167 9.1 Introduction 167 9.2 Text streams 169 9.3 Feature extraction and data reduction 170 9.4 Event detection 171 9.5 Trend detection 174 9.6 Event and trend descriptions 176 9.7 Discussion 180 9.8 Summary 181 9.9 Acknowledgements 181 References 181 10 Embedding semantics in LDA topic models 183 10.1 Introduction 183 10.2 Background 184 10.2.1 Vector space modeling 184 10.2.2 Latent semantic analysis 185 10.2.3 Probabilistic latent semantic analysis 185 10.3 Latent Dirichlet allocation 186 10.3.1 Graphical model and generative process 187 10.3.2 Posterior inference 187 10.3.3 Online latent Dirichlet allocation (OLDA) 189 10.3.4 Illustrative example 191 10.4 Embedding external semantics from Wikipedia 193 10.4.1 Related Wikipedia articles 194 10.4.2 Wikipedia-influenced topic model 194 10.5 Data-driven semantic embedding 194 10.5.1 Generative process with data-driven semantic embedding 195 10.5.2 OLDA algorithm with data-driven semantic embedding 196 10.5.3 Experimental design 197 10.5.4 Experimental results 199 10.6 Related work 202 10.7 Conclusion and future work 202 References 203 Index 205mehr
Kritik
"It is extremely useful for practitioners and students in computer science, natural language processing, bioinformatics and engineering who wish to use text mining techniques." (Journal of Information Retrieval, 1 April 2011)mehr

Autor

Michael W. Berry, Professor and Associate Department Head, Department of Electrical Engineering and Computer Science, University of Tennessee.
Michael is on the Editorial board of Computing in Science and Engineering and Statistical Analysis and Data Mining Journals.
Jacob Kogan, Department of Mathematics and Statistics, University of Maryland Baltimore County, USA.