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Entity Tracking Improves Cloze-style Reading Comprehension

机译:实体跟踪提高了完形填空式阅读理解

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Reading comprehension tasks test the ability of models to process long-term context and remember salient information. Recent work has shown that relatively simple neural methods such as the Attention Sum-Reader can perform well on these tasks; however, these systems still significantly trail human performance. Analysis suggests that many of the remaining hard instances are related to the inability to track entity-references throughout documents. This work focuses on these hard entity tracking cases with two extensions: (1) additional entity features, and (2) training with a multi-task tracking objective. We show that these simple modifications improve performance both independently and in combination, and we outperform the previous state of the art on the LAMBADA dataset, particularly on difficult entity examples.
机译:阅读理解任务测试模型处理长期情境并记住重要信息的能力。最近的工作表明,相对简单的神经方法,例如Attention Sum-Reader,可以很好地完成这些任务。但是,这些系统仍然大大落后于人类绩效。分析表明,许多剩余的困难实例与无法跟踪整个文档中的实体引用有关。这项工作着重于这些具有两个扩展的硬实体跟踪案例:(1)其他实体功能,以及(2)具有多任务跟踪目标的培训。我们证明了这些简单的修改可以独立或组合地提高性能,并且在LAMBADA数据集上,特别是在困难的实体示例上,其性能优于以前的最新水平。

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