推特上选举的民意动态

Felipe Bravo-Marquez, Daniel Gayo-Avello, Marcelo Mendoza, Bárbara Poblete
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引用次数: 27

摘要

在这项工作中,我们对2008年美国大选的Twitter数据创建的意见时间序列进行了实证研究。我们建议的重点是确定时间序列是否适合生成可靠的预测模型。我们使用ARMA/ARIMA和GARCH模型分析了从Twitter消息中获得的与2008年美国大选相关的时间序列。第一个模型用于评估过程的条件均值,第二个模型用于评估条件方差或波动性。我们讨论的主要论点是,表现出波动性的意见时间序列不应用于长期预测目的。我们对这些时间序列的统计特性进行了深入的分析。我们的实验表明,这些时间序列不适合预测未来的意见趋势。由于研究人员没有提供足够的证据来支持所谓的意见时间序列的预测能力,我们讨论了如何对时间序列生成的预测模型进行更严格的验证,从而使意见挖掘领域受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion Dynamics of Elections in Twitter
In this work we conduct an empirical study of opinion time series created from Twitter data regarding the 2008 U.S. elections. The focus of our proposal is to establish whether a time series is appropriate or not for generating a reliable predictive model. We analyze time series obtained from Twitter messages related to the 2008 U.S. elections using ARMA/ARIMA and GARCH models. The first models are used in order to assess the conditional mean of the process and the second ones to assess the conditional variance or volatility. The main argument we discuss is that opinion time series that exhibit volatility should not be used for long-term forecasting purposes. We present an in-depth analysis of the statistical properties of these time series. Our experiments show that these time series are not fit for predicting future opinion trends. Due to the fact that researchers have not provided enough evidence to support the alleged predictive power of opinion time series, we discuss how more rigorous validation of predictive models generated from time series could benefit the opinion mining field.
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