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arxiv: 1905.13350 · v1 · pith:KHWKARP3new · submitted 2019-05-30 · 💻 cs.IR · cs.CL· cs.LG

Threshold-Based Retrieval and Textual Entailment Detection on Legal Bar Exam Questions

classification 💻 cs.IR cs.CLcs.LG
keywords legaldocumentsentailmentrelevantstatementtasktextualthreshold-based
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Getting an overview over the legal domain has become challenging, especially in a broad, international context. Legal question answering systems have the potential to alleviate this task by automatically retrieving relevant legal texts for a specific statement and checking whether the meaning of the statement can be inferred from the found documents. We investigate a combination of the BM25 scoring method of Elasticsearch with word embeddings trained on English translations of the German and Japanese civil law. For this, we define criteria which select a dynamic number of relevant documents according to threshold scores. Exploiting two deep learning classifiers and their respective prediction bias with a threshold-based answer inclusion criterion has shown to be beneficial for the textual entailment task, when compared to the baseline.

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