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首页> 外文期刊>The Journal of Artificial Intelligence Research >Modeling the Lifespan of Discourse Entities with Application to Coreference Resolution
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Modeling the Lifespan of Discourse Entities with Application to Coreference Resolution

机译:话语实体寿命建模及其在共指解决中的应用

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摘要

A discourse typically involves numerous entities, but few are mentioned more than once. Distinguishing those that die out after just one mention (singleton) from those that lead longer lives (coreferent) would dramatically simplify the hypothesis space for coreference resolution models, leading to increased performance. To realize these gains, we build a classifier for predicting the singleton/coreferent distinction. The model's feature representations synthesize linguistic insights about the factors affecting discourse entity lifespans (especially negation, modality, and attitude predication) with existing results about the benefits of "surface" (part-of-speech and n-gram-based) features for coreference resolution. The model is effective in its own right, and the feature representations help to identify the anchor phrases in bridging anaphora as well. Furthermore, incorporating the model into two very different state-of-the-art coreference resolution systems, one rule-based and the other learning-based, yields significant performance improvements.
机译:话语通常涉及众多实体,但很少有人提及多次。将仅提及一次后就消失的个体(单个)与寿命更长的人(同伴的)区分开来,将大大简化共指解析模型的假设空间,从而提高性能。为了实现这些收益,我们建立了一个分类器来预测单例/共称差异。该模型的特征表示综合了有关影响话语实体寿命的因素(特别是否定,情态和态度预测)的语言见解,并提供了有关“表面”(基于词性和基于n-gram的)特征的益处的现有结果解析度。该模型本身是有效的,并且特征表示也有助于识别桥接照应中的锚定短语。此外,将该模型合并到两个非常不同的最新共参考解析系统中,一个基于规则,另一个基于学习,可以显着提高性能。

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