Aspect Extraction on Restaurant Reviews using Domain-Specific Word Embedding

Ahmad Satriamulya, A. Romadhony
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Abstract

Reviews on the internet can be an important part of a business and can influence owners or consumers for their decision making. Easy access to information in the form of opinions, experiences, and feedback from others can be used as a reference for taking an action. For businesses in the food and beverage sector, consumers usually provide reviews with negative or positive sentiments based on several aspects of the related business. The taste of the food, atmosphere, price, service are examples of aspects that are commonly written in a review. In this work, aspect extraction on consumer reviews of restaurants in Indonesia is going to carried out. Reviews on the internet usually contains words that are informal and very domain specific. This is where Domain Specific Word embedding can be used to reduce the amount of out-of-vocabulary word (OOV) and give the model more context of the review text given. The model used is Deep Learning with Recurrent Neural Network architecture, using Domain Specific Embedding as Word Embedding, and several attempts to reduce out of vocabulary in the model. The model used is able to reduce OOV from 17.16% (based on previous research) to 3.62%, with an evaluation of the F1-Score model of 79.54% using the Bi-LSTM model.
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基于领域特定词嵌入的餐馆评论方面提取
互联网上的评论是企业的重要组成部分,可以影响所有者或消费者的决策。以意见、经验和他人反馈的形式轻松获取信息,可以作为采取行动的参考。对于食品和饮料行业的企业,消费者通常会根据相关业务的几个方面提供负面或正面的评论。食物的味道、气氛、价格、服务都是通常写在评论里的方面的例子。在这项工作中,将对印度尼西亚餐馆的消费者评论进行方面提取。互联网上的评论通常包含非正式的和非常特定领域的词汇。这就是领域特定词嵌入可以用来减少词汇表外词(OOV)的数量,并为模型提供更多的评论文本上下文的地方。使用的模型是基于递归神经网络架构的深度学习,使用特定领域嵌入作为词嵌入,并尝试减少模型中的词汇量。使用的模型能够将OOV从17.16%(基于前人的研究)降低到3.62%,使用Bi-LSTM模型对F1-Score模型的评价为79.54%。
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