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On a Kernel Regression Approach to Machine Translation

机译:在机器翻译中的内核回归方法

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We present a machine translation framework based on Kernel Regression techniques. The translation process is modeled as a string-to-string mapping. For doing so, first both source and target strings are mapped to a natural vector space obtaining feature vectors. Afterwards, a translation mapping is defined from the source feature vector to the target feature vector. This translation mapping is learnt by linear regression. Once the target feature vector is obtained, we use a multi-graph search to find all the possible target strings whose mappings correspond to the "translated" feature vector. We present experiments in a small but relevant task showing encouraging results.
机译:我们介绍了一种基于内核回归技术的机器翻译框架。转换过程被建模为字符串到字符串映射。为此这样做,首先将两个源区和目标字符串映射到自然向量空间获取特征向量。之后,将从源特征向量定义到目标特征向量的转换映射。这种转换映射是通过线性回归学习的。一旦获得目标特征向量,我们使用多图表搜索来查找映射对应于“翻译”特征向量的所有可能的目标字符串。我们在一个令人鼓舞的结果中展示了一个小但相关任务的实验。

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