2021
DOI: 10.48550/arxiv.2110.03338
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Cross-Language Learning for Entity Matching

Ralph Peeters,
Christian Bizer

Abstract: Transformer-based matching methods have significantly moved the state-of-the-art for less-structured matching tasks involving textual entity descriptions. In order to excel on these tasks, Transformer-based matching methods require a decent amount of training pairs. Providing enough training data can be challenging, especially if a matcher for non-English entity descriptions should be learned. This paper explores along the use case of matching product offers from different e-shops to which extent it is possibl… Show more

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