This thesis demonstrates that several important kinds of natural language ambiguities can be resolved to state-of-the-art accuracies using a single statistical modeling technique based on the principle of maximum entropy. We discuss the problems of sentence boundary detection, part-of-speech tagging, prepositional phrase attachment, natural language parsing, and text categorization under the maximum entropy framework. In practice, we have found that maximum entropy models offer the following advantages: State-of-the-art accuracy. The probability models for all of the tasks discussed perform at or near state-of-the-art accuracies, or outperform competing learning algorithms when trained and tested under similar conditions. Methods which outp...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Conditional Maximum Entropy models have been successfully applied to estimating language model proba...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Language modeling is the attempt to characterize, capture and exploit regularities in natural langua...
This paper proposes the use of maximum entropy techniques for text classification. Maximum entropy i...
We describe a unified probabilistic framework for statistical language modeling-the latent maximum e...
We present a maximum entropy approach to topic sensitive language modeling. By classifying the train...
In this paper we compare two approaches to natural language understanding (NLU). The first approach ...
In this paper, we des ribe a unied probabilisti framework for statisti al language modeling|the lat...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Conditional Maximum Entropy models have been successfully applied to estimating language model proba...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Language modeling is the attempt to characterize, capture and exploit regularities in natural langua...
This paper proposes the use of maximum entropy techniques for text classification. Maximum entropy i...
We describe a unified probabilistic framework for statistical language modeling-the latent maximum e...
We present a maximum entropy approach to topic sensitive language modeling. By classifying the train...
In this paper we compare two approaches to natural language understanding (NLU). The first approach ...
In this paper, we des ribe a unied probabilisti framework for statisti al language modeling|the lat...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
Conditional Maximum Entropy models have been successfully applied to estimating language model proba...