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Cross-lingual Distillation for Text Classification

About

Cross-lingual text classification(CLTC) is the task of classifying documents written in different languages into the same taxonomy of categories. This paper presents a novel approach to CLTC that builds on model distillation, which adapts and extends a framework originally proposed for model compression. Using soft probabilistic predictions for the documents in a label-rich language as the (induced) supervisory labels in a parallel corpus of documents, we train classifiers successfully for new languages in which labeled training data are not available. An adversarial feature adaptation technique is also applied during the model training to reduce distribution mismatch. We conducted experiments on two benchmark CLTC datasets, treating English as the source language and German, French, Japan and Chinese as the unlabeled target languages. The proposed approach had the advantageous or comparable performance of the other state-of-art methods.

Ruochen Xu, Yiming Yang• 2017

Related benchmarks

TaskDatasetResultRank
Binary ClassificationMultilingual Amazon Reviews German
Accuracy (Books)83.95
9
Binary ClassificationMultilingual Amazon Reviews Japanese
Accuracy (Books)77.36
9
Binary ClassificationMultilingual Amazon Reviews French
Books Accuracy83.37
9
Sentiment Classificationamazon fr (test)--
8
Cross-lingual classificationWebis-CLS-10 (test)--
7
Sentiment ClassificationAmazon Review EN → JA (test)
Books Accuracy77.36
6
Sentiment ClassificationAmazon Review EN → DE (test)
Accuracy (Books)0.8395
6
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