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Molweni: A Challenge Multiparty Dialogue-based Machine Reading Comprehension Dataset with Discourse Structure

机译:Molweni:一个挑战基于多方对话的机器阅读理解数据集,具有话语结构

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Research into the area of multiparty dialog has grown considerably over recent years. We present the Molweni dataset, a machine reading comprehension (MRC) dataset with discourse structure built over multiparty dialog. Molweni's source samples from the Ubuntu Chat Corpus, including 10,000 dialogs comprising 88,303 utterances. We annotate 30,066 questions on this corpus, including both answerable and unanswerable questions. Molweni also uniquely contributes discourse dependency annotations in a modified Segmented Discourse Representation Theory (SDRT; (Asher et al.. 2016)) style for all of its multiparty dialogs, contributing large-scale (78,245 annotated discourse relations) data to bear on the task of multiparty dialog discourse parsing. Our experiments show that Molweni is a challenging dataset for current MRC models: BERT-wwm, a current, strong SQuAD 2.0 performer, achieves only 67.7% F_1 on Molweni's questions, a 20+% significant drop as compared against its SQuAD 2.0 performance.
机译:近年来,多党对话地区的研究已经增长了很大。 我们介绍Molweni DataSet,一个机器阅读理解(MRC)数据集,具有在多党对话框中构建的话语结构。 Molweni来自Ubuntu聊天语料库的源样本,包括10,000个对话,包括88,303个话语。 我们注释了关于此语料库的30,066个问题,包括可应答和不可批售的问题。 Molweni在修改的分段话语代表理论(SDRT; 多方面对话话语解析。 我们的实验表明,Molweni是当前MRC型号的具有挑战性的数据集:BERT-WWM,目前,强大的小队2.0表演者,在Molweni的问题上只能实现67.7%,而在其小队2.0性能相比,较高的跌幅为20 +%。

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