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arxiv 2006.12234 v2 pith:YQMUG5UZ submitted 2020-06-22 cs.CL

Shared Task on Evaluating Accuracy in Natural Language Generation

classification cs.CL
keywords accuracybasketballevaluatingsharedtaskalgorithmsdatagame
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We propose a shared task on methodologies and algorithms for evaluating the accuracy of generated texts. Participants will measure the accuracy of basketball game summaries produced by NLG systems from basketball box score data.

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