After presenting a novel O(n^3) parsing algorithm for dependency grammar, we develop three contrasting ways to stochasticize it. We propose (a) a lexical affinity model where words struggle to modify each other, (b) a sense tagging model where words fluctuate randomly in their selectional preferences, and (c) a generative model where the speaker fleshes out each word's syntactic and conceptual structure without regard to the implications for the hearer. We also give preliminary empirical results from evaluating the three models' parsing performance on annotated Wall Street Journal training text (derived from the Penn Treebank). In these results, the generative (i.e., top-down) model performs significantly better than the others, a...
A new language model is presented which incorporates local N-gram dependencies with two important so...
We design a language model based on a generative dependency structure for sen-tences. The parameter ...
We introduce a novel dependency parser, the hexatagger, that constructs dependency trees by tagging ...
After presenting a novel O(n³) parsing algorithm for dependency grammar, we develop three contrastin...
Language models are an important component of speech recognition. They aim to predict the probabilit...
Stanford typed dependencies are a widely desired representation of natural language sentences, but p...
In this study, we propose a new probability model for dis-ambiguation in dependency parsing. In orde...
This thesis focuses on the development of effective and efficient language models (LMs) for speech r...
Statistical approaches to language learning typically focus on either short-range syntactic dependen...
Statistical models for parsing natural language have recently shown considerable success in broad-co...
Abstract We propose a framework for dependency parsing based on a combination of discriminative and ...
Abstract—A new knowledge based probabilistic dependency parsing (KPDP) is presented to overcome the ...
This technical report is an appendix to Eisner (1996): it gives superior experimental results that w...
dMetrics Current investigations in data-driven models of parsing have shifted from purely syntactic ...
As more and more syntactically-annotated corpora become available for a wide variety of languages, m...
A new language model is presented which incorporates local N-gram dependencies with two important so...
We design a language model based on a generative dependency structure for sen-tences. The parameter ...
We introduce a novel dependency parser, the hexatagger, that constructs dependency trees by tagging ...
After presenting a novel O(n³) parsing algorithm for dependency grammar, we develop three contrastin...
Language models are an important component of speech recognition. They aim to predict the probabilit...
Stanford typed dependencies are a widely desired representation of natural language sentences, but p...
In this study, we propose a new probability model for dis-ambiguation in dependency parsing. In orde...
This thesis focuses on the development of effective and efficient language models (LMs) for speech r...
Statistical approaches to language learning typically focus on either short-range syntactic dependen...
Statistical models for parsing natural language have recently shown considerable success in broad-co...
Abstract We propose a framework for dependency parsing based on a combination of discriminative and ...
Abstract—A new knowledge based probabilistic dependency parsing (KPDP) is presented to overcome the ...
This technical report is an appendix to Eisner (1996): it gives superior experimental results that w...
dMetrics Current investigations in data-driven models of parsing have shifted from purely syntactic ...
As more and more syntactically-annotated corpora become available for a wide variety of languages, m...
A new language model is presented which incorporates local N-gram dependencies with two important so...
We design a language model based on a generative dependency structure for sen-tences. The parameter ...
We introduce a novel dependency parser, the hexatagger, that constructs dependency trees by tagging ...