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ElimiNet: A Model for Eliminating Options for Reading Comprehension with Multiple Choice Questions

机译:eximinet:消除多种选择问题阅读理解的选项的模型

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The task of Reading Comprehension with Multiple Choice Questions, requires a human (or machine) to read a given {passage, question} pair and select one of the n given options. The current state of the art model for this task first computes a questionaware representation for the passage and then selects the option which has the maximum similarity with this representation. However, when humans perform this task they do not just focus on option selection but use a combination of elimination and selection. Specifically, a human would first try to eliminate the most irrelevant option and then read the passage again in the light of this new information (and perhaps ignore portions corresponding to the eliminated option). This process could be repeated multiple times till the reader is finally ready to select the correct option. We propose ElimiNet, a neural network-based model which tries to mimic this process. Specifically, it has gates which decide whether an option can be eliminated given the {passage, question} pair and if so it tries to make the passage representation orthogonal to this eliminated option (akin to ignoring portions of the passage corresponding to the eliminated option). The model makes multiple rounds of partial elimination to refine the passage representation and finally uses a selection module to pick the best option. We evaluate our model on the recently released large scale RACE dataset and show that it outperforms the current state of the art model on 7 out of the 13 question types in this dataset. Further, we show that taking an ensemble of our elimination-selection based method with a selection based method gives us an improvement of 3.1% over the best-reported performance on this dataset.
机译:阅读对多项选择题的理解的任务需要人员(或机器)来读取给定{段落,问题}对并选择一个给定选项之一。本任务的本机模型的当前状态首先计算该段落的问题表示,然后选择与该表示具有最大相似性的选项。但是,当人类执行此任务时,它们不仅关注选项选择,而且使用消除和选择的组合。具体地,人们首先尝试消除最不相关的选项,然后根据该新信息再次读取通道(并且也许忽略与消除选项对应的部分)。可以多次重复该过程,直到读者最终准备好选择正确的选项。我们提出了一种基于神经网络的模型,这试图模仿此过程。具体地,它具有栅极,其在给定{段落,问题}对中可以判断是否可以消除选项,如果这样,它试图使段落表示与这种消除的选项正交(类似于忽略与消除的选项对应的通道的部分) 。该模型使多轮部分消除能够改进通道表示,最后使用选择模块来选择最佳选项。我们在最近发布的大型播放数据集中评估我们的模型,并表明它在此数据集中的13个问题类型中的7个问题中优于最新的最新状态。此外,我们表明,采用基于消除选择的方法的集合,具有基于选择的方法,在该数据集上的最佳绩效中提高了3.1%。

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