Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2011.Cataloged from PDF version of thesis.Includes bibliographical references (p. 95-99).For many tasks in natural language processing, finding the best solution requires a search over a large set of possible structures. Solving these combinatorial search problems exactly can be inefficient, and so researchers often use approximate techniques at the cost of model accuracy. In this thesis, we turn to Lagrangian relaxation as an alternative to approximate inference in natural language tasks. We demonstrate that Lagrangian relaxation algorithms provide efficient solutions while still maintaining formal guarantees. The approach leads to i...
The diversity and Zipfian frequency distribution of natural language predicates in corpora leads to ...
Lagrangean Relaxation has been successfully applied to process many well known instances of NP-hard...
Dependency parsing with high-order features results in a provably hard decoding problem. A lot of wo...
For many tasks in natural language processing, finding the best solution requires a search over a la...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The major success story of natural language processing over the last decade has been the development...
Statistical methods have been the major force driving the advance of machine translation in recent y...
Dual decomposition, and more generally Lagrangian relaxation, is a classical method for com-binatori...
Dual decomposition, and more generally Lagrangian relaxation, is a classical method for com-binatori...
This paper introduces dual decomposition as a framework for deriving inference algorithms for NLP ...
Ces dernières années, des méthodes issues de l'optimisation combinatoire ont été appliquées avec suc...
Natural language processing requires flexible control of computation on various sorts of constraints...
Abstract The combinatorial space of translation derivations in phrase-based statistical machine tran...
© 2014 Association for Computational Linguistics. The combinatorial space of translation derivations...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
The diversity and Zipfian frequency distribution of natural language predicates in corpora leads to ...
Lagrangean Relaxation has been successfully applied to process many well known instances of NP-hard...
Dependency parsing with high-order features results in a provably hard decoding problem. A lot of wo...
For many tasks in natural language processing, finding the best solution requires a search over a la...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The major success story of natural language processing over the last decade has been the development...
Statistical methods have been the major force driving the advance of machine translation in recent y...
Dual decomposition, and more generally Lagrangian relaxation, is a classical method for com-binatori...
Dual decomposition, and more generally Lagrangian relaxation, is a classical method for com-binatori...
This paper introduces dual decomposition as a framework for deriving inference algorithms for NLP ...
Ces dernières années, des méthodes issues de l'optimisation combinatoire ont été appliquées avec suc...
Natural language processing requires flexible control of computation on various sorts of constraints...
Abstract The combinatorial space of translation derivations in phrase-based statistical machine tran...
© 2014 Association for Computational Linguistics. The combinatorial space of translation derivations...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
The diversity and Zipfian frequency distribution of natural language predicates in corpora leads to ...
Lagrangean Relaxation has been successfully applied to process many well known instances of NP-hard...
Dependency parsing with high-order features results in a provably hard decoding problem. A lot of wo...