Exploiting non-linear probabilistic models in natural language parsing and reranking TITOV, Ivan The thesis considers non-linear probabilistic models for natural language parsing, and it primarily focuses on the class of models which do not impose strict constraints on the structure of statistical dependencies. The main contribution is the demonstration that such models are appropriate for natural language parsing tasks and provide advantages over the use of standard 'linear ' methods. We demonstrate this, first, by showing that though exact inference is intractable for the studied class of models, there exist accurate and tractable approximations. Second, we show that using non-linear representations results in powerful feature i...
This paper describes a "bootstrapping " method which uses a broad-coverage, rule-based par...
Most recent statistical parsers fall into one of two groups. The largest group consists of parsers w...
We propose two output activation functions for estimating probability distributions over an unbounde...
The thesis considers non-linear probabilistic models for natural language parsing, and it primarily ...
This paper considers approaches which rerank the output of an existing probabilistic parser. The bas...
We describe a new method for the representation of NLP structures within reranking approaches. We ma...
This paper presents a newly formalized probabilistic LR language model. Our model inherits its essen...
Building models of language is a central task in natural language processing. Traditionally, languag...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
Discriminative methods have shown significant improvements over traditional generative methods in ma...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
◦We implement a discriminative parser reranker for the C&C statistical natural language parser, ...
We study the inference of models of the analysis by reduction that forms an important tool for parsi...
This thesis contributes to the research domain of statistical language modeling. In this domain, the...
We show that finite-order Markov models fail to capture long range dependencies that exist in human ...
This paper describes a "bootstrapping " method which uses a broad-coverage, rule-based par...
Most recent statistical parsers fall into one of two groups. The largest group consists of parsers w...
We propose two output activation functions for estimating probability distributions over an unbounde...
The thesis considers non-linear probabilistic models for natural language parsing, and it primarily ...
This paper considers approaches which rerank the output of an existing probabilistic parser. The bas...
We describe a new method for the representation of NLP structures within reranking approaches. We ma...
This paper presents a newly formalized probabilistic LR language model. Our model inherits its essen...
Building models of language is a central task in natural language processing. Traditionally, languag...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
Discriminative methods have shown significant improvements over traditional generative methods in ma...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
◦We implement a discriminative parser reranker for the C&C statistical natural language parser, ...
We study the inference of models of the analysis by reduction that forms an important tool for parsi...
This thesis contributes to the research domain of statistical language modeling. In this domain, the...
We show that finite-order Markov models fail to capture long range dependencies that exist in human ...
This paper describes a "bootstrapping " method which uses a broad-coverage, rule-based par...
Most recent statistical parsers fall into one of two groups. The largest group consists of parsers w...
We propose two output activation functions for estimating probability distributions over an unbounde...