In this paper, we consider probabilistic context-free grammars, a class of generative devices that has been successfully exploited in several applications of syntactic pattern matching, especially in statistical natural language parsing. We investigate the problem of training probabilistic context-free grammars on the basis of distributions defined over an infinite set of trees or an infinite set of sentences by minimizing the cross-entropy. This problem has applications in cases of context-free approximation of distributions generated by more expressive statistical models. We show several interesting theoretical properties of probabilistic context-free grammars that are estimated in this way, including the previously unknown equivalence be...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
Instead of using a common PCFG to parse all texts, we present an efficient generative probabilistic ...
We present an efficient learning algorithm for probabilistic context-free grammars based on the vari...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
The problem of identifying a probabilistic context free grammar has two aspects: the first is determ...
We examine the expressive power of probabilistic context free grammars (PCFGs), with a special focus...
We consider several empirical estimators for probabilistic context-free grammars, and show that the ...
We consider several empirical estimators for probabilistic context-free grammars, and show that the ...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
Instead of using a common PCFG to parse all texts, we present an efficient generative probabilistic ...
We present an efficient learning algorithm for probabilistic context-free grammars based on the vari...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
We investigate the problem of training probabilistic context-free grammars on the basis of a distrib...
The problem of identifying a probabilistic context free grammar has two aspects: the first is determ...
We examine the expressive power of probabilistic context free grammars (PCFGs), with a special focus...
We consider several empirical estimators for probabilistic context-free grammars, and show that the ...
We consider several empirical estimators for probabilistic context-free grammars, and show that the ...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
We consider the problem of computing the Kullback-Leibler distance, also called the relative entropy...
Instead of using a common PCFG to parse all texts, we present an efficient generative probabilistic ...
We present an efficient learning algorithm for probabilistic context-free grammars based on the vari...