Sentiment Analysis Using the Vader Model for Assessing Company Services Based on Posts on Social Media

Mërgim H. Hoti, Jaumin Ajdari
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Abstract

Abstract The provision of services by companies in specific domains requires continuous commitment and a constructive approach to meet customer requirements, however, it is often challenging to determine the level of customer satisfaction without their feedback. Therefore, this paper attempts to provide a solution to this problem by using comments from social networks and evaluating their sentiment using the VADER model. In order to accomplish the aim of our research, a lexicon has been built with more than 9500 adjectives and verbs from the Albanian language based on VADER which is just in the initial form and the sentiments are evaluated as positive, neutral, or negative. The lexicon was constructed for the Albanian language and two companies of the Republic of Kosovo were researched as case studies. Furthermore, the sentiment estimation, using the VADER model, in case of our datasets, we obtained a high accuracy, approximately between 89% and 95%. This level of accuracy has been primarily attributed to the application of all preprocessing steps within the dataset, which significantly enhances the model’s performance.
使用 Vader 模型进行情感分析,根据社交媒体上的帖子评估公司服务
摘 要 企业在特定领域提供服务时,需要持续的承诺和建设性的方法来满足客户的要求,然而,在没有客户反馈的情况下,要确定客户的满意度往往具有挑战性。因此,本文试图利用社交网络中的评论,并使用 VADER 模型评估其情感,从而为这一问题提供解决方案。为了实现我们的研究目标,我们基于 VADER 建立了一个包含 9500 多个阿尔巴尼亚语形容词和动词的词典,VADER 只是初始形式,情感被评估为积极、中性或消极。词典是为阿尔巴尼亚语构建的,并将科索沃共和国的两家公司作为案例进行了研究。此外,使用 VADER 模型对我们的数据集进行情感评估时,我们获得了很高的准确率,大约在 89% 到 95% 之间。这一准确率水平主要归功于数据集中所有预处理步骤的应用,这些步骤大大提高了模型的性能。
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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