A Comparison of Unsupervised Methods for Ad hoc Cross-Lingual Document Retrieval
2020-05-01LREC 2020Unverified0· sign in to hype
Elaine Zosa, Mark Granroth-Wilding, Lidia Pivovarova
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We address the problem of linking related documents across languages in a multilingual collection. We evaluate three diverse unsupervised methods to represent and compare documents: (1) multilingual topic model; (2) cross-lingual document embeddings; and (3) Wasserstein distance.We test the performance of these methods in retrieving news articles in Swedish that are known to be related to a given Finnish article.The results show that ensembles of the methods outperform the stand-alone methods, suggesting that they capture complementary characteristics of the documents