Aspect-Based Sentiment Analysis on Indonesian Restaurant Review Using a Combination of Convolutional Neural Network and Contextualized Word Embedding

P. Amalia
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引用次数: 5

Abstract

Someone's opinion on a product or service that is poured through a review is something that is quite important for the owner or potential customer. However, the large number of reviews makes it difficult for them to analyze the information contained in the reviews. Aspect-based sentiment analysis is the process of determining the sentiment polarity of a sentence based on predetermined aspects.This study aims to analyze an Indonesian restaurant review using a combination of Convolutional Neural Network and Contextualized Word Embedding models. Then it will be compared with a combination of Convolutional Neural Network and Traditional Word Embedding models. The result of aspect-classification on three models; BERT-CNN, ELMo-CNN, and Word2vec-CNN give the best results on the ELMo-CNN model with micro-average precision of 0.88, micro-average recall of 0.84, and micro-average f1-score of 0.86. Meanwhile, the sentiment-classification gives the best results on the BERT-CNN model with a precision value of 0.89, a recall of 0.89, and an f1-score of 0.91. Classification using data without stemming have almost similar results, even better than using data with stemming.
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卷积神经网络与情境化词嵌入相结合的印尼餐厅评论面向情感分析
某人对产品或服务的意见通过评论倾泻而出,这对店主或潜在客户来说是相当重要的。然而,大量的评论使得他们很难分析评论中包含的信息。基于方面的情感分析是基于预先确定的方面来确定句子的情感极性的过程。本研究旨在使用卷积神经网络和情境化词嵌入模型的组合来分析印尼餐厅评论。然后将其与卷积神经网络和传统词嵌入模型的组合进行比较。三种模型的方面分类结果;BERT-CNN、ELMo-CNN和Word2vec-CNN在ELMo-CNN模型上的效果最好,微平均精度为0.88,微平均召回率为0.84,微平均f1-score为0.86。同时,情感分类在BERT-CNN模型上得到了最好的结果,精度值为0.89,召回率为0.89,f1得分为0.91。使用不带词干提取的数据进行分类的结果几乎相似,甚至比使用带词干提取的数据更好。
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发文量
20
审稿时长
12 weeks
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