神经共参分辨中提及检测器-链接器相互作用的理解

Zhaofeng Wu, Matt Gardner
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引用次数: 8

摘要

尽管最近在共参分辨率方面取得了重大进展,但目前最先进的系统的质量仍然大大落后于人类水平的表现。使用CoNLL-2012和PreCo数据集,我们剖析了主流端到端共参考解析模型的最佳实例,该模型是当前大多数性能最佳的共参考系统的基础,并实证分析了其两个组件的行为:提及检测器和提及链接器。虽然检测器传统上主要关注召回作为设计决策,但我们证明了精度的重要性,要求它们之间的平衡。然而,我们指出,由于无法做出重要的回指判断,构建精确的检测器存在困难。我们还强调了链接器的巨大改进空间,并表明其其余错误主要涉及代词解析。我们提出了有希望的后续步骤,并希望我们的发现将有助于未来的共同参考分辨率研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Mention Detector-Linker Interaction in Neural Coreference Resolution
Despite significant recent progress in coreference resolution, the quality of current state-of-the-art systems still considerably trails behind human-level performance. Using the CoNLL-2012 and PreCo datasets, we dissect the best instantiation of the mainstream end-to-end coreference resolution model that underlies most current best-performing coreference systems, and empirically analyze the behavior of its two components: mention detector and mention linker. While the detector traditionally focuses heavily on recall as a design decision, we demonstrate the importance of precision, calling for their balance. However, we point out the difficulty in building a precise detector due to its inability to make important anaphoricity decisions. We also highlight the enormous room for improving the linker and show that the rest of its errors mainly involve pronoun resolution. We propose promising next steps and hope our findings will help future research in coreference resolution.
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