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E-raamat: Graph-based Natural Language Processing and Information Retrieval

(University of Michigan, Ann Arbor), (University of North Texas)
  • Formaat: PDF+DRM
  • Ilmumisaeg: 11-Apr-2011
  • Kirjastus: Cambridge University Press
  • Keel: eng
  • ISBN-13: 9781139064491
  • Formaat - PDF+DRM
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  • Formaat: PDF+DRM
  • Ilmumisaeg: 11-Apr-2011
  • Kirjastus: Cambridge University Press
  • Keel: eng
  • ISBN-13: 9781139064491

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"Graph theory and the fields of natural language processing and information retrieval are well-studied disciplines. Traditionally, these areas have been perceived as distinct, with different algorithms, different applications, and different potential end-users. However, recent research has shown that these disciplines are intimately connected, with a large variety of natural language processing and information retrieval applications finding efficient solutions within graph-theoretical frameworks. This book extensively covers the use of graph-based algorithms for natural language processing and information retrieval. It brings together topics as diverse as lexical semantics, text summarization, text mining, ontology construction, text classification, and information retrieval, which are connected by the common underlying theme of the use of graph-theoretical methods for text and information processing tasks. Readers will come away with a firm understanding of the major methods and applications in natural language processing and information retrieval that rely on graph-based representations and algorithms"--

"This book extensively covers the use of graph-based algorithms for natural language processing and information retrieval"--

Provided by publisher.

Arvustused

'For the first time, a computational framework that unifies many algorithms and representations from the fields of natural language processing and information retrieval. This book is a comprehensive introduction to both theory and practice.' Giorgio Satta, University of Padua 'The book is highly recommended to be read not only by upper-level undergraduate and graduate students, but also by experts who are looking for a brief overview of this area. The book aims to enable the readers to gain sufficient understanding of graph-based approaches used in information retrieval and to recognize opportunities for advancing the state of art in natural language processing problems by applications of graph theory.' Korhan Gunel, Zentralblatt MATH

Muu info

This book extensively covers the use of graph-based algorithms for natural language processing and information retrieval.
Introduction 1(10)
0.1 Background
3(1)
0.2 Book Organization
4(3)
0.3 Acknowledgments
7(4)
Part I Introduction to Graph Theory
1 Notations, Properties, and Representations
11(9)
1.1 Graph Terminology and Notations
11(2)
1.2 Graph Properties
13(1)
1.3 Graph Types
14(1)
1.4 Representing Graphs as Matrices
15(1)
1.5 Using Matrices to Compute Graph Properties
16(1)
1.6 Representing Graphs as Linked Lists
17(1)
1.7 Eigenvalues and Eigenvectors
18(2)
2 Graph-Based Algorithms
20(33)
2.1 Depth-First Graph Traversal
20(2)
2.2 Breadth-First Graph Traversal
22(1)
2.3 Minimum Spanning Trees
23(3)
2.4 Shortest-Path Algorithms
26(3)
2.5 Cuts and Flows
29(2)
2.6 Graph Matching
31(1)
2.7 Dimensionality Reduction
32(2)
2.8 Stochastic Processes on Graphs
34(4)
2.9 Harmonic Functions
38(2)
2.10 Random Walks
40(1)
2.11 Spreading Activation
41(1)
2.12 Electrical Interpretation of Random Walks
42(2)
2.13 Power Method
44(1)
2.14 Linear Algebra Methods for Computing Harmonic Functions
45(1)
2.15 Method of Relaxations
46(1)
2.16 Monte Carlo Methods
47(6)
Part II Networks
3 Random Networks
53(25)
3.1 Networks and Graphs
53(1)
3.2 Random Graphs
54(1)
3.3 Degree Distributions
54(3)
3.4 Power Laws
57(1)
3.5 Zipf's Law
58(3)
3.6 Preferential Attachment
61(1)
3.7 Giant Component
62(1)
3.8 Clustering Coefficient
62(1)
3.9 Small Worlds
63(2)
3.10 Assortativity
65(2)
3.11 Centrality
67(1)
3.12 Degree Centrality
67(1)
3.13 Closeness Centrality
68(1)
3.14 Betweenness Centrality
69(1)
3.15 Network Example
70(2)
3.16 Dynamic Processes: Percolation
72(2)
3.17 Strong and Weak Ties
74(2)
3.18 Assortative Mixing
76(1)
3.19 Structural Holes
76(2)
4 Language Networks
78(13)
4.1 Co-Occurrence Networks
78(2)
4.2 Syntactic Dependency Networks
80(1)
4.3 Semantic Networks
81(4)
4.4 Similarity Networks
85(6)
Part III Graph-Based Information Retrieval
5 Link Analysis for the World Wide Web
91(15)
5.1 The Web as a Graph
91(1)
5.2 PageRank
92(3)
5.3 Undirected Graphs
95(1)
5.4 Weighted Graphs
95(2)
5.5 Combining Page Rank with Content Analysis
97(1)
5.6 Topic-Sensitive Link Analysis
97(3)
5.7 Query-Dependent Link Analysis
100(1)
5.8 Hyperlinked-Induced Topic Search
101(2)
5.9 Document Reranking with Induced Links
103(3)
6 Text Clustering
106(17)
6.1 Graph-Based Clustering
108(3)
6.2 Spectral Methods
111(2)
6.3 The Fiedler Method
113(1)
6.4 The Kernighan--Lin Method
114(1)
6.5 Betweenness-Based Clustering
115(2)
6.6 Min-Cut Clustering
117(2)
6.7 Text Clustering Using Random Walks
119(4)
Part IV Graph-Based Natural Language Processing
7 Semantics
123(17)
7.1 Semantic Classes
123(2)
7.2 Synonym Detection
125(1)
7.3 Semantic Distance
126(3)
7.4 Textual Entailment
129(2)
7.5 Word-Sense Disambiguation
131(3)
7.6 Name Disambiguation
134(1)
7.7 Sentiment and Subjectivity
135(5)
8 Syntax
140(9)
8.1 Part-of-Speech Tagging
140(1)
8.2 Dependency Parsing
141(3)
8.3 Prepositional-Phrase Attachment
144(2)
8.4 Co-Reference Resolution
146(3)
9 Applications
149(30)
9.1 Summarization
149(1)
9.2 Semi-supervised Passage Retrieval
150(4)
9.3 Keyword Extraction
154(2)
9.4 Topic Identification
156(5)
9.5 Topic Segmentation
161(1)
9.6 Discourse
162(3)
9.7 Machine Translation
165(1)
9.8 Cross-Language Information Retrieval
166(3)
9.9 Information Extraction
169(2)
9.10 Question Answering
171(3)
9.11 Term Weighting
174(5)
Bibliography 179(12)
Index 191
Rada Mihalcea is an Associate Professor in the Department of Computer Science and Engineering at the University of North Texas, where she leads the Language and Information Technologies research group. In 2009, she received the Presidential Early Career Award for Scientists and Engineers, awarded by President Barack Obama. She served on the editorial board of several journals, including Computational Linguistics, the Journal of Natural Language Engineering and Language Resources and Evaluations, and she co-chaired the Empirical Methods in Natural Language Processing conference in 2009 and the Association for Computational Linguistics conference in 2011. She has been published in IEEE Intelligent Systems, the Journal of Natural Language Engineering, the Journal of Machine Translation, Computational Intelligence, the International Journal of Semantic Computing and Artificial Intelligence Magazine. Dragomir Radev is a Professor in the School of Information, the Department of Electrical Engineering and Computer Science, and the Department of Linguistics at the University of Michigan, where he is leader of the Computational Linguistics and Information Retrieval research group (CLAIR). He has more than 100 publications in conferences and journals such as Communications of the ACM, the Journal of Artificial Intelligence Research, Bioinformatics, Computational Linguistics, Information Processing and Management and the American Journal of Political Science, among others. He is on the editorial boards of Information Retrieval, the Journal of Natural Language Engineering and the Journal of Artificial Intelligence Research. Radev is an ACM distinguished scientist as well as the coach of the US high school team in computational linguistics.