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handle: 20.500.14243/475921 , 10281/466219
Understanding the relation between the meanings of words is an important part of comprehending natural language. Prior work has either focused on analysing lexical semantic relations in word embeddings or probing pretrained language models (PLMs), with some exceptions. Given the rarity of highly multilingual benchmarks, it is unclear to what extent PLMs capture relational knowledge and are able to transfer it across languages. To start addressing this question, we propose MultiLexBATS, a multilingual parallel dataset of lexical semantic relations adapted from BATS in 15 languages including low-resource languages, such as Bambara, Lithuanian, and Albanian. As experiment on cross-lingual transfer of relational knowledge, we test the PLMs’ ability to (1) capture analogies across languages, and (2) predict translation targets. We find considerable differences across relation types and languages with a clear preference for hypernymy and antonymy as well as romance languages.
International audience
102028 Knowledge Engineering, 102018 Artificial neural networks, 602049 Terminologielehre, BATS, 102028 Knowledge engineering, 102018 Künstliche Neuronale Netze, BATS; Lexical Semantic Relations; Multilingual Benchmark;, 602011 Computerlinguistik, [INFO.INFO-CL]Computer Science [cs]/Computation and Language [cs.CL], 602011 Computational linguistics, Lexical Semantic Relations, Multilingual Benchmark, 602049 Terminology science
102028 Knowledge Engineering, 102018 Artificial neural networks, 602049 Terminologielehre, BATS, 102028 Knowledge engineering, 102018 Künstliche Neuronale Netze, BATS; Lexical Semantic Relations; Multilingual Benchmark;, 602011 Computerlinguistik, [INFO.INFO-CL]Computer Science [cs]/Computation and Language [cs.CL], 602011 Computational linguistics, Lexical Semantic Relations, Multilingual Benchmark, 602049 Terminology science
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