Mining Twitter data for causal links between tweets and real-world outcomes

Sunghoon Lim , Conrad S. Tucker
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引用次数: 14

Abstract

The authors present an expert and intelligent system that (1) identifies influential term groups having causal relationships with real-world enterprise outcomes from Twitter data and (2) quantifies the appropriate time lags between identified influential term groups and enterprise outcomes. Existing expert and intelligent systems, which are defined as computer systems that imitate the ability of human decision making, could enable computers to identify the spread of Twitter users’ enterprise-related feedback automatically. However, existing expert and intelligent systems have limitations on automatically identifying the causal effects on enterprise outcomes. Identifying the causal effects on enterprise outcomes is important, because Twitter users’ feedback toward enterprise decisions may have real-world implications. The proposed expert and intelligent system can support decision makers’ decisions considering the real-world effects of identified Twitter users’ feedback on enterprise outcomes. In particular, (1) a co-occurrence network analysis model is exploited to discover term candidates for generating influential term groups that are combinations of enterprise-related terms, which potentially influence enterprise outcomes. (2) Time series models and (3) a Granger causality analysis model are then employed to identify influential term groups having causal relationships with enterprise outcomes with the appropriate time lags. Case studies involving a real-world internet video streaming and disc rental provider as well as an airline company are used to test the validity of the proposed expert and intelligent system for both predicting enterprise outcomes in a long period and predicting the effects of specific events on enterprise outcomes in a short period.

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挖掘Twitter数据,寻找tweet与现实世界结果之间的因果关系
作者提出了一个专家和智能系统,该系统(1)从Twitter数据中识别与现实世界企业结果有因果关系的有影响力的术语组,(2)量化确定的有影响力的术语组与企业结果之间的适当时间滞后。现有的专家和智能系统被定义为模仿人类决策能力的计算机系统,可以使计算机自动识别Twitter用户与企业相关的反馈的传播。然而,现有的专家和智能系统在自动识别企业结果的因果关系方面存在局限性。确定对企业结果的因果关系非常重要,因为Twitter用户对企业决策的反馈可能具有现实意义。建议的专家和智能系统可以支持决策者的决策,考虑识别Twitter用户对企业结果的反馈的现实影响。特别是,(1)利用共现网络分析模型来发现候选术语,以生成有影响力的术语组,这些术语组是与企业相关的术语的组合,可能会影响企业的结果。(2)采用时间序列模型和(3)采用格兰杰因果分析模型,识别出具有适当时间滞后的与企业绩效存在因果关系的有影响力的术语群。案例研究涉及现实世界的互联网视频流和光盘租赁提供商以及航空公司,用于测试所建议的专家和智能系统在预测长期企业成果和预测短期特定事件对企业成果的影响方面的有效性。
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来源期刊
Expert Systems with Applications: X
Expert Systems with Applications: X Engineering-Engineering (all)
CiteScore
3.80
自引率
0.00%
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