Improvement of Computational Translation by Using Entropy Theory

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Abstract:

In order to improve the accuracy of the computational translation, an effective tool---the cross entropy was proposed. After the analysis of the reasons of the low accuracy, the information entropy was introduced into the disambiguation. The practice of ambiguity elimination shows the method has high accuracy and this study provides an effective way to improve the computational translation.

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1153-1156

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February 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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