Probabilistic grammars are generative statistical models that are useful for compositional and sequential structures. We present a framework, reminiscent of structural risk minimization, for empirical risk minimization of the parameters of a fixed probabilistic grammar using the log-loss. We derive sample complexity bounds in this framework that apply both to the supervised setting and the unsupervised setting.</p
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
Probabilistic grammars acting as information sources are considered and concepts from information th...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
<p>Probabilistic grammars are generative statistical models that are useful for compositional and se...
The problem of identifying a probabilistic context free grammar has two aspects: the first is determ...
Probabilistic grammars define a set of well-formed or grammatical linguistic structures, just as all...
This thesis is a collection of essays on probability models for complex systems. Chapter 1 is an int...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Probabilistic grammars offer great flexibility in modeling discrete sequential data like natural lan...
We present an empirical study of the applicability of Probabilistic Lexicalized Tree Insertion Gramm...
Probabilistic analogues of regular and context-free grammars are well-known in computational linguis...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the auto-...
It is quite natural to assign probabilities (or frequencies) to the sentences of a language to try t...
This paper introduces adaptor grammars, a class of probabilistic models of lan-guage that generalize...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the autom...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
Probabilistic grammars acting as information sources are considered and concepts from information th...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
<p>Probabilistic grammars are generative statistical models that are useful for compositional and se...
The problem of identifying a probabilistic context free grammar has two aspects: the first is determ...
Probabilistic grammars define a set of well-formed or grammatical linguistic structures, just as all...
This thesis is a collection of essays on probability models for complex systems. Chapter 1 is an int...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Probabilistic grammars offer great flexibility in modeling discrete sequential data like natural lan...
We present an empirical study of the applicability of Probabilistic Lexicalized Tree Insertion Gramm...
Probabilistic analogues of regular and context-free grammars are well-known in computational linguis...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the auto-...
It is quite natural to assign probabilities (or frequencies) to the sentences of a language to try t...
This paper introduces adaptor grammars, a class of probabilistic models of lan-guage that generalize...
This paper examines the usefulness of corpus-derived probabilistic grammars as a basis for the autom...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...
Probabilistic grammars acting as information sources are considered and concepts from information th...
In this paper, we consider probabilistic context-free grammars, a class of generative devices that h...