2022
DOI: 10.3390/e24070943
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Deep Multilabel Multilingual Document Learning for Cross-Lingual Document Retrieval

Abstract: Cross-lingual document retrieval, which aims to take a query in one language to retrieve relevant documents in another, has attracted strong research interest in the last decades. Most studies on this task start with cross-lingual comparisons at the word level and then represent documents via word embeddings, which leads to insufficient structure information. In this work, the cross-lingual comparison at the document level is achieved through the cross-lingual semantic space. Our method, MDL (deep multilabel m… Show more

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