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Noise Robustness in Aspect Extraction Task

机译:方面提取任务中的噪声鲁棒性

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摘要

Aspect extraction from user reviews is one of the sources to make dialog systems, which are on the rise now. A typical user of a conversation system has no time to check the spelling or grammar in his or her utterances. Due to that user utterances contain typos and spelling errors, so the noise robustness should be considered as a significant feature of an aspect extraction model. We analyze noise-robustness of state-of-the-art Attention-Based Aspect Extraction technique and propose the extensions for this model, which lead to more robust behaviour in presence of typos. Experimental results demonstrate how suitable each of the complements to the model that uses the data containing typos.
机译:方面提取用户评论是制作对话系统的源之一,现在正在上升。对话系统的典型用户目前没有时间检查他或她的话语中的拼写或语法。由于用户的话语包含拼写错误和拼写错误,因此应将噪声稳健性视为方面提取模型的重要特征。我们分析了最先进的基于关注的方面提取技术的噪声稳健性,并提出了该模型的延伸,这导致在拼写错误的情况下导致更强大的行为。实验结果表明,使用包含拼写错误的数据的模型的每个补充是如何合适的。

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