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Multilingual Models for Compositional Distributed Semantics

About

We present a novel technique for learning semantic representations, which extends the distributional hypothesis to multilingual data and joint-space embeddings. Our models leverage parallel data and learn to strongly align the embeddings of semantically equivalent sentences, while maintaining sufficient distance between those of dissimilar sentences. The models do not rely on word alignments or any syntactic information and are successfully applied to a number of diverse languages. We extend our approach to learn semantic representations at the document level, too. We evaluate these models on two cross-lingual document classification tasks, outperforming the prior state of the art. Through qualitative analysis and the study of pivoting effects we demonstrate that our representations are semantically plausible and can capture semantic relationships across languages without parallel data.

Karl Moritz Hermann, Phil Blunsom• 2014

Related benchmarks

TaskDatasetResultRank
Crosslingual Document ClassificationRCV1 RCV2 DE -> EN 1,000 documents per language (test)
Accuracy79.2
27
Crosslingual Document ClassificationRCV1 RCV2 EN -> DE 1,000 documents per language (test)
Accuracy88.1
27
Document ClassificationTED corpus L2 -> en (test)
Arabic45.2
7
Document ClassificationTED corpus en -> L2 (test)
Arabic41
7
Document ClassificationTED corpus
English47.5
7
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