情感分析任务中的BiDAF模型

Luong Thi Minh Hue
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引用次数: 0

摘要

情感分析是自然语言处理中的一项重要工作。控制和评估顾客对其产品的反馈是公司特别感兴趣的一项任务。针对包括注意过程在内的阅读理解问题,建立了BiDAF模型。注意过程最近被扩展并有效地用于自然语言处理问题。在本研究中,我们使用BiDAF模型在句子层面对亚马逊产品评价进行情感分析。BiDAF模型是一个多层处理模型,它在多个层次上反映上下文,并使用BiLSTM模型。此外,我们还利用注意机制研究了句子的注意权重分布。通过召回度量,该模型达到了高达99.9%的准确率。我们发现,重要短语的注意权重等于句子中情感词的注意权重,如果不高于的话。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BiDAF model in sentiment analysis task
Sentiment analysis is a critical job in natural language processing. Controlling and evaluating customer feedback on their goods is a task that companies are especially interested in. For reading comprehension problems including attention processes, the BiDAF model is developed. Attention processes have recently been expanded and effectively used for natural language processing problems. In this study, we use the BiDAF model to perform sentiment analysis on Amazon product evaluations at the sentence level. The BiDAF model is a multilayered processing model that reflects context at multiple levels and uses the BiLSTM model. Furthermore, we investigate the sentence's attention weight distribution using the attention mechanism. With a recall measure, the model achieves an accuracy of up to 99.9%. We discovered that the attention weights of important phrases are equivalent to, if not higher than, the attention weights of sentiment words in the sentence.
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