Negative Purchase Intent Identification in Twitter

Samed Atouati, Xiao Lu, Mauro Sozio
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引用次数: 7

Abstract

Social network users often express their discontent with a product or a service from a company on social media. Such a reaction is more pronounced in the aftermath of a corporate scandal such as a corruption scandal or food poisoning in a chain restaurant. In our work, we focus on identifying negative purchase intent in a tweet, i.e. the intent of a user of not purchasing any product or consuming any service from a company. We develop a binary classifier for such a task, which consists of a generalization of logistic regression leveraging the locality of purchase intent in posts from Twitter. We conduct an extensive experimental evaluation against state-of-the-art approaches on a large collection of tweets, showing the effectiveness of our approach in terms of F1 score. We also provide some preliminary results on which kinds of corporate scandals might affect the purchase intent of customers the most.
Twitter中的消极购买意向识别
社交网络用户经常在社交媒体上表达他们对公司产品或服务的不满。在腐败丑闻或连锁餐厅食物中毒等企业丑闻发生后,这种反应更为明显。在我们的工作中,我们专注于识别推文中的负面购买意图,即用户不购买任何产品或从公司消费任何服务的意图。我们为这样的任务开发了一个二元分类器,它由利用Twitter帖子中购买意图的局部性的逻辑回归的泛化组成。我们对大量推文进行了针对最先进方法的广泛实验评估,显示了我们的方法在F1分数方面的有效性。我们还提供了一些初步的结果,哪些类型的公司丑闻最可能影响消费者的购买意愿。
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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