This paper proposes the use of maximum entropy techniques for text classification. Maximum entropy is a probability distribution estimation technique widely used for a variety of natural language tasks, such as language modeling, part-of-speech tagging, and text segmentation. The underlying principle of maximum entropy is that without external knowledge, one should prefer distributions that are uniform. Constraints on the distribution, derived from labeled training data, inform the technique where to be minimally non-uniform. The maximum entropy formulation has a unique solution which can be found by the improved iterative scaling algorithm. In this paper, maximum entropy is used for text classification by estimating the conditional distrib...
Maximum Entropy (ME), as a general-purpose machine learning model, has been successfully applied to ...
We present a maximum entropy approach to topic sensitive language modeling. By classifying the train...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
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...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Abstract—Maximum entropy approach to classification is very well studied in applied statistics and m...
Maximum entropy approach to classification is very well studied in applied statistics and machine le...
Recent literature on text-tagging reported successful results by applying Maximum Entropy (ME) model...
Abstract. The principle of maximum entropy is a powerful framework that can be used to estimate clas...
In this paper, we propose the use of the Maximum Entropy approach for the task of automatic image an...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Data sparseness or overfitting is a serious problem in natural language processing employing machine...
Maximum Entropy (ME), as a general-purpose machine learning model, has been successfully applied to ...
We present a maximum entropy approach to topic sensitive language modeling. By classifying the train...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
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...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Abstract—Maximum entropy approach to classification is very well studied in applied statistics and m...
Maximum entropy approach to classification is very well studied in applied statistics and machine le...
Recent literature on text-tagging reported successful results by applying Maximum Entropy (ME) model...
Abstract. The principle of maximum entropy is a powerful framework that can be used to estimate clas...
In this paper, we propose the use of the Maximum Entropy approach for the task of automatic image an...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
Data sparseness or overfitting is a serious problem in natural language processing employing machine...
Maximum Entropy (ME), as a general-purpose machine learning model, has been successfully applied to ...
We present a maximum entropy approach to topic sensitive language modeling. By classifying the train...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...