Social media analysis for product safety using text mining and sentiment analysis

Haruna Isah, D. Neagu, P. Trundle
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引用次数: 74

Abstract

The growing incidents of counterfeiting and associated economic and health consequences necessitate the development of active surveillance systems capable of producing timely and reliable information for all stake holders in the anti-counterfeiting fight. User generated content from social media platforms can provide early clues about product allergies, adverse events and product counterfeiting. This paper reports a work in progress with contributions including: the development of a framework for gathering and analyzing the views and experiences of users of drug and cosmetic products using machine learning, text mining and sentiment analysis; the application of the proposed framework on Facebook comments and data from Twitter for brand analysis, and the description of how to develop a product safety lexicon and training data for modeling a machine learning classifier for drug and cosmetic product sentiment prediction. The initial brand and product comparison results signify the usefulness of text mining and sentiment analysis on social media data while the use of machine learning classifier for predicting the sentiment orientation provides a useful tool for users, product manufacturers, regulatory and enforcement agencies to monitor brand or product sentiment trends in order to act in the event of sudden or significant rise in negative sentiment.
使用文本挖掘和情感分析进行产品安全的社交媒体分析
越来越多的假冒事件以及相关的经济和健康后果要求发展主动监测系统,能够为打假斗争中的所有利益攸关方提供及时和可靠的信息。用户从社交媒体平台上生成的内容可以为产品过敏、不良事件和产品假冒提供早期线索。本文报告了一项正在进行的工作,其贡献包括:开发一个框架,用于使用机器学习、文本挖掘和情感分析来收集和分析药物和化妆品用户的观点和经验;提出的框架在Facebook评论和Twitter数据上的应用,用于品牌分析,以及如何开发产品安全词典和训练数据,为药品和化妆品情绪预测的机器学习分类器建模。最初的品牌和产品比较结果表明文本挖掘和情感分析在社交媒体数据上的有用性,而使用机器学习分类器预测情感倾向为用户、产品制造商、监管和执法机构提供了一个有用的工具,可以监控品牌或产品的情感趋势,以便在负面情绪突然或显著上升的情况下采取行动。
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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