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      Localizing Open-Ontology QA Semantic Parsers in a Day Using Machine Translation

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          Abstract

          We propose Semantic Parser Localizer (SPL), a toolkit that leverages Neural Machine Translation (NMT) systems to localize a semantic parser for a new language. Our methodology is to (1) generate training data automatically in the target language by augmenting machine-translated datasets with local entities scraped from public websites, (2) add a few-shot boost of human-translated sentences and train a novel XLMR-LSTM semantic parser, and (3) test the model on natural utterances curated using human translators. We assess the effectiveness of our approach by extending the current capabilities of Schema2QA, a system for English Question Answering (QA) on the open web, to 10 new languages for the restaurants and hotels domains. Our models achieve an overall test accuracy ranging between 61% and 69% for the hotels domain and between 64% and 78% for restaurants domain, which compares favorably to 69% and 80% obtained for English parser trained on gold English data and a few examples from validation set. We show our approach outperforms the previous state-of-the-art methodology by more than 30% for hotels and 40% for restaurants with localized ontologies for the subset of languages tested. Our methodology enables any software developer to add a new language capability to a QA system for a new domain, leveraging machine translation, in less than 24 hours.

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          Author and article information

          Journal
          10 October 2020
          Article
          2010.05106
          cc507674-98b2-459c-8409-54c2ee5954c2

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          Published in EMNLP 2020
          cs.CL cs.LG

          Theoretical computer science,Artificial intelligence
          Theoretical computer science, Artificial intelligence

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