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Sells Out or Piles Up? A Sentiment Autoregressive Model for Predicting Sales Performance

机译:卖出或堆积?一种关于预测销售业绩的情绪自回归模型

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The development of e-commerce has witnessed the explosion of online reviews which represent the voices of the public. These reviews are helpful for consumers in making purchasing decisions, and this effect can be observed by some easy-to-measure economic variables, such as sales performance or product prices. In this paper, we study the problem of mining sentiment information from reviews and investigate whether applying sentiment analysis methods can turn out better sales predictions. Based on the nature of various presentations of sentiments, we propose a Latent Sentiment Language (LSL) Model to address this challenge, in which sentiment-language model and sentiment-LDA are used to capture the explicit and implicit sentiment information respectively. Subsequently, we explore ways to use such information to predict product sales, and to generate an SAR, a sentiment autoregressive model. Extensive experiments indicate the predictive power of sentiment information, as well as the superior performance of the SAR model.
机译:电子商务的发展目睹了在线评论的爆炸,其代表公众的声音。这些审查对消费者提供了采购决策的帮助,并且可以通过一些易于衡量的经济变量观察到这种效果,例如销售业绩或产品价格。在本文中,我们研究了来自评论和调查申请情绪分析方法是否可以转出更好销售预测的挖掘情绪信息的问题。基于各种情绪演示的性质,我们提出了一种潜在的情绪语言(LSL)模型来解决这一挑战,其中语言模型和情绪-LDA分别用于捕获显式和隐式情绪信息。随后,我们探讨使用此类信息来预测产品销售的方法,并生成SAR一种情感归类模型。广泛的实验表明了情绪信息的预测力,以及SAR模型的优越性。

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