Inferring a Semantic Representation of Text via Cross-Language Correlation Analysis

@inproceedings{Vinokourov2002InferringAS,
  title={Inferring a Semantic Representation of Text via Cross-Language Correlation Analysis},
  author={Alexei Vinokourov and John Shawe-Taylor and Nello Cristianini},
  booktitle={NIPS},
  year={2002}
}
The problem of learning a semantic representation of a text document from data is addressed, in the situation where a corpus of unlabeled paired documents is available, each pair being formed by a short English document and its French translation. This representation can then be used for any retrieval, categorization or clustering task, both in a standard and in a cross-lingual setting. By using kernel functions, in this case simple bag-of-words inner products, each part of the corpus is mapped… CONTINUE READING
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