Semantic Properties of Customer Sentiment in Tweets

E. Ko, D. Klabjan
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引用次数: 10

Abstract

An increasing number of people are using online social networking services (SNSs), and a significant amount of information related to experiences in consumption is shared in this new media form. Text mining is an emerging technique for mining useful information from the web. We aim at discovering in particular tweets semantic patterns in consumers' discussions on social media. Specifically, the purposes of this study are twofold: 1) finding similarity and dissimilarity between two sets of textual documents that include consumers' sentiment polarities, two forms of positive vs. negative opinions and 2) driving actual content from the textual data that has a semantic trend. The considered tweets include consumers' opinions on US retail companies (e.g., Amazon, Walmart). Cosine similarity and K-means clustering methods are used to achieve the former goal, and Latent Dirichlet Allocation (LDA), a popular topic modeling algorithm, is used for the latter purpose. This is the first study which discover semantic properties of textual data in consumption context beyond sentiment analysis. In addition to major findings, we apply LDA (Latent Dirichlet Allocations) to the same data and drew latent topics that represent consumers' positive opinions and negative opinions on social media.
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推文中顾客情感的语义属性
越来越多的人使用在线社交网络服务(sns),大量与消费体验相关的信息通过这种新媒体形式分享。文本挖掘是一种新兴的从网络中挖掘有用信息的技术。我们的目标是发现消费者在社交媒体上讨论的特定tweet的语义模式。具体来说,本研究的目的有两个:1)发现两组文本文档之间的相似性和差异性,包括消费者的情绪两极,两种形式的积极与消极意见;2)从具有语义趋势的文本数据中驱动实际内容。被考虑的推文包括消费者对美国零售公司(如亚马逊、沃尔玛)的看法。使用余弦相似度和K-means聚类方法实现前者的目标,使用流行的主题建模算法Latent Dirichlet Allocation (LDA)实现后者的目标。这是首次在情感分析之外发现消费语境中文本数据的语义属性的研究。除了主要发现之外,我们还对相同的数据应用了LDA (Latent Dirichlet allocation),并绘制了代表消费者在社交媒体上的积极意见和消极意见的潜在主题。
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