NEW DEVELOPMENTS IN PARSING TECHNOLOGY
Ouvrage 9781402022944 : NEW DEVELOPMENTS IN PARSING TECHNOLOGY
Table of contents
Preface.
1: Developments in Parsing Technology: From Theory to Application; H.
Bunt, J. Carroll, G. Satta.
1. Introduction. 2. About this book.
2: Parameter Estimation for Statistical Parsing Models: Theory and
Practice of Distribution-Free Methods; M. Collins.
1. Introduction. 2. Linear Models. 3. Probabilistic Context-Free
Grammars. 4. Statistical Learning Theory. 5. Convergence Bounds for
Finite Sets of Hypotheses. 6. Convergence Bounds for Hyperplane
Classifiers. 7. Application of Margin Analysis to Parsing. 8.
Algorithms. 9. Discussion. 10. Conclusions.
3: High Precision Extraction of Grammatical Relations; J. Carroll, T.
Briscoe.
1. Introduction. 2. The Analysis System. 3. Empirical Results. 4.
Conclusions and Further Work.
4: Automated Extraction of TAGs from the Penn Treebank; J. Chen, K.V.
Shanker. 1. Introduction. 2. Tree Extraction Procedure. 3. Evaluation.
4. Extended Extracted Grammars. 5. Related Work. 6. Conclusions.
5: Computing the Most Probable Parse for a Discontinuous
Phrase-Structure Grammar; O. Plaehn. 1. Introduction. 2. Discontinuous
Phrase-Structure Grammar. 3. The Parsing Algorithm. 4. Computing the
Most Probable Parse. 5. Experiments. 6. Conclusion and Future Work.
6: A Neural Network Parser that Handles Sparse Data; J. Henderson.
1. Introduction. 2. Simple Synchrony Networks. 3. A Probabilistic Parser
for SSNs. 4. Estimating the Probabilities with a Simple Synchrony
Network. 5. Generalizing from Sparse Data. 6. Conclusion.
7: An Efficient LR Parser Generator for Tree-Adjoining Grammars; C.A.
Prolo.
1. Introduction. 2. TAGS. 3. On Some Degenerate LR Models for TAGS. 4.
Proposed Algorithm. 5. Implementation. 6. Example. 7. Some Properties Of
the Algorithms. 8. Evaluation. 9. Conclusions.
8: Relating Tabular Parsing Algorithms for LIG and TAG; M.A. Alonso, E.
de la Clergerie, V.J. DĦaz, M. Vilares.
1. Introduction. 2. Tree-Adjoining Grammars. 3. Linear Indexed Grammars.
4. Bottom-up Parsing Algorithms. 5. Barley-like Parsing Algorithms. 6.
Barley-like Parsing Algorithms Preserving the Correct Prefix Property.
7. Bidirectional Parsing. 8. Specialized TAG parsers. 9. Conclusion.
9: Improved Left-Corner Chart Parsing for Large Context-Free Grammars;
R.C. Moore.
1. Introduction. 2. Evaluating Parsing Algorithms. 3. Terminology and
Notation. 4. Test Grammars. 5. Left-Corner Parsing Algorithms and
Refinements. 6. Grammar Transformations. 7. Extracting Parses from the
Chart. 8. Comparison to Other Algorithms. 9. Conclusions.
10: On Two Classes of Feature Paths in Large-Scale Unification Grammars;
L. Ciortuz. 1. Introduction. 2. Compiling the Quick Check Filter. 3.
Generalised Rule Reduction. 4. Conclusion.
11: A Context-Free Superset Approximation of Unification-Based Grammars;
B. Kiefer, H.-U. Krieger.
1. Introduction. 2. Basic Inventory. 3. Approximation as Fixpoint
Construction. 4. The Basic Algorithm. 5. Implementation Issues and
Optimizations. 6. Revisiting the Fixpoint Construction. 7. Three
Grammars. 8. Disambiguation of UBGs via Probabilistic Approximations.
12: A Recognizer for Minimalist Languages; H. Harkema.
1. Introduction. 2. Minimalist Grammars. 3. Specification of the
Recognizer. 4. Correctness. 5. Complexity Results. 6. Conclusions and
Future Work.
13: Range Concatenation Grammars; P. Boullier.
1. Introduction. 2. Positive Range Concatenation Grammars. 3. Negative
Range Concatenation Grammars. 4. A Parsing Algorithm for RCGs. 5.
Closure Properties and Modularity. 6. Conclusion.
14: Grammar Induction by MDL-Based Distributional Classification; Yikun
Guo, Fuliang Weng, Lide Wu.
1. Introduction. 2. Grammar Induction with the MDL Principle. 3.
Induction Strategies. 4. MDL Induction by Dynamic Distributional
Classification (DCC). 5. Comparison and Conclusion. Appendix.
15: Optimal Ambiguity Packing in Context-Free Parsers with Interleaved
Unification; A. Lavie, C. Penstein Rosé.
1. Introduction. 2. Ambiguity Packing in Context Free Parsing. 3. The
Rule Prioritization Heuristic. 4. Empirical Evaluations and Discussion.
5. Conclusions and Future Directions.
16: Robust Data-Oriented Spoken Language Understanding; K. Sima'an.
1. Introduction. 2. Brief Overview of OVIS. 3. OP vs. Tree-Gram. 4.
Application to the OVIS Domain. 5. Conclusions.
17: SOUP: A Parser for Real-World Spontaneous Speech; M. Gavaldà.
1. Introduction. 2. Grammar Representation. 3. Sketch of the Parsing
Algorithm. 4. Performance. 5. Key Features. 6. Conclusion.
18: Parsing and Hypergraphs; D. Klein, C.D. Manning.
1. Introduction. 2. Hypergraphs and Parsing. 3. Viterbi Parsing
Algorithm. 4. Analysis. 5. Conclusion. Appendix.
19: Measure for Measure: Towards Increased Component Comparability and
Exchange; S. Oepen, U. Callmeier.
1. Competence & Performance Profiling. 2. Strong Empiricism: A Few
Examples. 3. PET - Synthesizing Current Best Practice. 4. Quantifying
Progress. 5. Multi-Dimensional Performance Profiling. 6. Conclusion -
Recent Developments.
Index.
Auteur : BUNT
Editeur : KLUWER
Nombre de pages : 405
Date de publication : 04 2005
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