Aspect Based Sentimental Analysis of Hotel Reviews: A Comparative Study

S. Abro, Sarang Shaikh, Rizwan Ali, S. Fatima, H. Abid, M. Malik
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引用次数: 13

Abstract

The increasing use of the internet enables users to share their opinion about what they like and dislike regarding products and services. For efficient decision making, there is a need to analyze these reviews. Sentiment analysis or opinion mining is commonly used to detect polarity (positive or negative) of reviews. But, it does not show the aspect or orientation of the text. In this study, state-of-art approaches based on supervised machine learning employed to perform three tasks on the dataset provided by SemEval. Tasks A and B are related to predicting the aspect of the restaurant’s reviews, whereas task C shows their polarity. Additionally, this study aims to compare the performance of two feature engineering techniques and five machine learning algorithms to evaluate their performance on a publicly available dataset named SemEval-2015 Task 12. The experimental results showed that the word2vec features when used with the support vector machine algorithm outperformed by giving 76%, 72% and 79% off overall accuracies for Task A, Task B, and Task C respectively. Our comparative study holds practical significance and can be used as a baseline study in the domain of aspect-based sentiment analysis.
基于面向的酒店评论情感分析:比较研究
互联网的日益普及使用户能够分享他们对产品和服务的喜欢和不喜欢的观点。为了做出有效的决策,有必要分析这些评论。情感分析或意见挖掘通常用于检测评论的极性(积极或消极)。但是,它不显示文本的方面或方向。在这项研究中,基于监督机器学习的最先进方法被用于在SemEval提供的数据集上执行三个任务。任务A和B与预测餐厅评价的方面有关,而任务C则显示了它们的极性。此外,本研究旨在比较两种特征工程技术和五种机器学习算法的性能,以评估它们在名为SemEval-2015 Task 12的公开可用数据集上的性能。实验结果表明,word2vec特征与支持向量机算法一起使用时,在任务A、任务B和任务C上的总体准确率分别降低了76%、72%和79%。我们的比较研究具有现实意义,可以作为基于方面的情感分析领域的基线研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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