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Predicting iPhone Sales from iPhone Tweets

机译:通过iPhone推文预测iPhone的销量

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摘要

Recent research in the field of computational social science have shown how data resulting from the widespread adoption and use of social media channels such as twitter can be used to predict outcomes such as movie revenues, election winners, localized moods, and epidemic outbreaks. Underlying assumptions for this research stream on predictive analytics are that social media actions such as tweeting, liking, commenting and rating are proxies for user/consumer's attention to a particular object/product and that the shared digital artefact that is persistent can create social influence. In this paper, we demonstrate how social media data from twitter can be used to predict the sales of iPhones. Based on a conceptual model of social data consisting of social graph (actors, actions, activities, and artefacts) and social text (topics, keywords, pronouns, and sentiments), we develop and evaluate a linear regression model that transforms iPhone tweets into a prediction of the quarterly iPhone sales with an average error close to the established prediction models from investment banks. This strong correlation between iPhone tweets and iPhone sales becomes marginally stronger after incorporating sentiments of tweets. We discuss the findings and conclude with implications for predictive analytics with big social data.
机译:计算社会科学领域的最新研究表明,如何将诸如Twitter之类的社交媒体渠道的广泛采用和使用所产生的数据用于预测诸如电影收入,选举获胜者,局部性情绪和流行病暴发的结果。本研究中有关预测分析的基础假设是,社交媒体操作(例如发推文,喜欢,评论和评分)是用户/消费者对特定对象/产品的关注的代理,而持久的共享数字人工制品会产生社会影响。在本文中,我们演示了如何使用Twitter上的社交媒体数据来预测iPhone的销量。基于由社交图(角色,动作,活动和人工制品)和社交文字(主题,关键字,代词和情感)组成的社交数据的概念模型,我们开发和评估了将iPhone推文转换为社交图文的线性回归模型。 iPhone季度销售预测,平均误差接近投资银行建立的预测模型。在整合了推文情绪之后,iPhone推文与iPhone销售之间的这种强相关性变得微弱了。我们讨论了发现并得出结论,对具有大社交数据的预测分析具有启示意义。

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