CLIRSIMLMar 24, 2016

Semantic Properties of Customer Sentiment in Tweets

arXiv:1603.07624v110 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for deeper semantic insights into consumer discussions on social media for businesses and researchers, but it is incremental as it applies existing methods to a specific domain.

The study tackled the problem of analyzing consumer sentiment in tweets about US retail companies by discovering semantic patterns beyond simple sentiment analysis, using methods like cosine similarity, K-means clustering, and LDA to identify similarities, dissimilarities, and latent topics in positive and negative opinions.

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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