Sentiment analysis of unstructured customer feedback for a retail bank

ORiON Pub Date : 2020-08-31 DOI:10.5784/36-1-668
J. Kazmaier, JH van Vuuren
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引用次数: 7

Abstract

With the explosive growth of the Internet and social media, the communication model between an organisation and its customers has become  increasingly complex. A problem arises due to the sheer volume of unstructured data that has to be processed for the purposes of studying and addressing customer feedback. This calls for the development of automated methods. Important objectives of such methods include the detection of the underlying sentiment of customer feedback, as well as the synthesis and presentation of this sentiment in meaningful clusters such as topics and geographical locations. In this paper, a case study is conducted in which unstructured customer reviews related to products and services of a South African retail bank are evaluated by means of sentiment analysis. After suitable preprocessing techniques are applied to the reviews, the process of developing suitable models (primarily within the realm of machine learning) for detecting sentiment with a high level of performanceis described. Subsequently, model results are analysed, synthesised and visualised in order to extract valuable insight from the data. The ndings of the study show that custom learning-based models signi cantly outperform both pre-trained and commercial tools in sentiment classi cation. Furthermore, the analysis approach is shown to yield actionable information that may inform decision making. Key words: Data mining, decision support systems, neural networks, sentiment analysis.
某零售银行非结构化客户反馈的情感分析
随着互联网和社交媒体的爆炸式增长,组织与客户之间的沟通模式变得越来越复杂。一个问题是,为了研究和处理客户反馈,必须处理大量的非结构化数据。这就要求开发自动化的方法。这些方法的重要目标包括检测客户反馈的潜在情绪,以及在主题和地理位置等有意义的集群中综合和呈现这种情绪。在本文中,进行了一个案例研究,其中非结构化的客户评论相关的产品和服务的南非零售银行通过情绪分析的手段进行评估。在适当的预处理技术应用于评论之后,描述了开发合适的模型(主要在机器学习领域内)用于检测具有高水平性能的情绪的过程。随后,对模型结果进行分析、综合和可视化,以便从数据中提取有价值的见解。研究结果表明,基于定制学习的模型在情感分类方面明显优于预训练和商业工具。此外,分析方法显示可以产生可操作的信息,为决策提供信息。关键词:数据挖掘,决策支持系统,神经网络,情感分析。
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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