Cross-lingual Inference with A Chinese Entailment Graph
Anonymous
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Predicate entailment detection is a crucial task for question-answering from text, where previous work has explored unsupervised learning of entailment graphs from typed open relation triples. In this paper, we present the first pipeline for building Chinese entailment graphs. In this pipeline, we present a novel high-recall open relation extraction (ORE) method and the first Chinese fine-grained entity typing dataset following the FIGER type ontology. Through experiments on the popular Levy-Holt dataset, translated into Chinese, we show that our Chinese entailment graph outperforms a range of strong baselines by large margins. Moreover, an ensemble of Chinese and English entailment graphs sets a new unsupervised SOTA on the original Levy-Holt dataset, surpassing previous SOTA by more than 4 AUC points.