Maximum Entropy Modeling: A Suitable Framework to Learn Context-Dependent Lexicon Models for Statistical Machine Translation

作者:Ismael García-Varea, Francisco Casacuberta

摘要

Current statistical machine translation systems are mainly based on statistical word lexicons. However, these models are usually context-independent, therefore, the disambiguation of the translation of a source word must be carried out using other probabilistic distributions (distortion distributions and statistical language models). One efficient way to add contextual information to the statistical lexicons is based on maximum entropy modeling. In that framework, the context is introduced through feature functions that allow us to automatically learn context-dependent lexicon models.

论文关键词:statistical machine translation, maximum entropy modeling, context-dependent lexicon models

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10994-005-0915-z