Probabilistic Context-Free Grammars (PCFGs) and variations on them have recently become some of the most common formalisms for parsing. It is common with PCFGs to compute the inside and outside probabilities. When these probabilities are multiplied together and normalized, they produce the probability that any given non-terminal covers any piece of the input sentence. The traditional use of these probabilities is to improve the probabilities of grammar rules. In this thesis we show that these values are useful for solving many other problems in Statistical Natural Language Processing. We give a framework for describing parsers. The framework generalizes the inside and outside values to semirings. It makes it easy to describe parsers that co...
ABSTRACT-This paper proposes a new method for learning a context-sensitive conditional probability c...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
The authors describe an effort to adapt island-driven parsers to handle stochastic context-free gram...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
We describe a general approach to the probabilistic parsing of context-free grammars. The method int...
We examine the expressive power of probabilistic context free grammars (PCFGs), with a special focus...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the auto-...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the autom...
This paper presents a method for inducing a context-sensitive conditional probability context-free g...
We describe a parsing system based upon a language model for English that is, in turn, based upon a...
Probabilistic context-free languages are defined by giving predetermined probabilities (preprobabili...
While O(n³) methods for parsing probabilistic context-free grammars (PCFGs) are well known, a tabula...
We present a measure for evaluating Probabilistic Context Free Grammars (PCFG) based on their ambigu...
ABSTRACT-This paper proposes a new method for learning a context-sensitive conditional probability c...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
The authors describe an effort to adapt island-driven parsers to handle stochastic context-free gram...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
• At least three ways to use probabilities in a parser – Probabilities for choosing between parses •...
We describe a general approach to the probabilistic parsing of context-free grammars. The method int...
We examine the expressive power of probabilistic context free grammars (PCFGs), with a special focus...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the auto-...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the autom...
This paper presents a method for inducing a context-sensitive conditional probability context-free g...
We describe a parsing system based upon a language model for English that is, in turn, based upon a...
Probabilistic context-free languages are defined by giving predetermined probabilities (preprobabili...
While O(n³) methods for parsing probabilistic context-free grammars (PCFGs) are well known, a tabula...
We present a measure for evaluating Probabilistic Context Free Grammars (PCFG) based on their ambigu...
ABSTRACT-This paper proposes a new method for learning a context-sensitive conditional probability c...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
The authors describe an effort to adapt island-driven parsers to handle stochastic context-free gram...