This paper proposes a learning method of translation rules from parallel corpora. This method applies the maximum entropy prin-ciple to a probabilistic model of translation rules. First, we define feature functions which express statistical properties of this model. Next, in order to optimize the model, the system iterates following steps: (1) se-lects a feature function which maximizes log-likelihood, and (2) adds this function to the model incrementally. As computational cost associated with this model is too expensive, we propose several methods to suppress the overhead in order to realize the system. The result shows that it attained 69.54 % recall rate.
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This paper proposes a novel lexicalized ap-proach for rule selection for syntax-based statistical ma...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...
In this paper we present an unsupervised method for learning a model to distinguish between ambiguou...
We present a framework for statistical machine translation of natural languages based on direct maxi...
Maximum Entropy Principle has been used successfully in various NLP tasks. In this paper we propose ...
Maximum Entropy Principle has been used successfully in various NLP tasks. In this paper we propose ...
This paper proposes a feature extraction algorithm based on the maximum entropy phrase reordering mo...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
This paper proposes a novel maximum en-tropy based rule selection (MERS) model for syntax-based stat...
We propose a novel reordering model for phrase-based statistical machine transla-tion (SMT) that use...
Machine translation is the application of machines to translate text or speech from one natural lang...
Maximum entropy models are considered by many to be one of the most promising avenues of language mo...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This paper proposes a novel lexicalized ap-proach for rule selection for syntax-based statistical ma...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...
In this paper we present an unsupervised method for learning a model to distinguish between ambiguou...
We present a framework for statistical machine translation of natural languages based on direct maxi...
Maximum Entropy Principle has been used successfully in various NLP tasks. In this paper we propose ...
Maximum Entropy Principle has been used successfully in various NLP tasks. In this paper we propose ...
This paper proposes a feature extraction algorithm based on the maximum entropy phrase reordering mo...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Maximum entropy approaches for sequences tagging and conditional random fields in particular have sh...
This paper proposes a novel maximum en-tropy based rule selection (MERS) model for syntax-based stat...
We propose a novel reordering model for phrase-based statistical machine transla-tion (SMT) that use...
Machine translation is the application of machines to translate text or speech from one natural lang...
Maximum entropy models are considered by many to be one of the most promising avenues of language mo...
Many problems in natural language processing can be viewed as linguistic classification problems, in...
This thesis demonstrates that several important kinds of natural language ambiguities can be resolve...
This paper proposes a novel lexicalized ap-proach for rule selection for syntax-based statistical ma...
Conditional Maximum Entropy models have been successfully applied to estimating language model prob...