Sentiment Prediction in Social Networks

Shengmin Jin, R. Zafarani
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引用次数: 4

Abstract

Sentiment analysis research has focused on using text for predicting sentiments without considering the unavoidable peer influence on user emotions and opinions. The lack of large-scale ground-truth data on sentiments of users in social networks has limited research on how predictable sentiments are from social ties. In this paper, using a large-scale dataset on human sentiments, we study sentiment prediction within social networks. We demonstrate that sentiments are predictable using structural properties of social networks alone. With social science and psychology literature, we provide evidence on sentiments being connected to social relationships at four different network levels, starting from the ego-network level and moving up to the whole-network level. We discuss emotional signals that can be captured at each level of social relationships and investigate the importance of structural features on each network levels. We demonstrate that sentiment prediction that solely relies on social network structure can be as (or more) accurate than text-based techniques. For the situations where complete posts and friendship information are difficult to get, we analyze the trade-off between the sentiment prediction performance and the available information. When computational resources are limited, we show that using only four network properties, one can predict sentiments with competitive accuracy. Our findings can be used to (1) validate the peer influence on user sentiments, (2) improve classical text-based sentiment prediction methods, (3) enhance friend recommendation by utilizing sentiments, and (4) help identify personality traits.
社交网络中的情感预测
情感分析研究的重点是使用文本来预测情绪,而没有考虑不可避免的同伴对用户情绪和观点的影响。由于缺乏关于社交网络中用户情绪的大规模真实数据,限制了对社交关系中情绪可预测性的研究。本文利用大规模的人类情感数据集,研究了社交网络中的情感预测。我们证明,情绪是可预测的,仅使用社会网络的结构属性。根据社会科学和心理学文献,我们提供了情感与社会关系在四个不同网络层面上联系的证据,从自我网络层面开始,向上移动到整个网络层面。我们讨论了可以在社会关系的每个层面上捕获的情感信号,并研究了每个网络层面上结构特征的重要性。我们证明,仅依赖于社会网络结构的情绪预测可以与基于文本的技术一样(或更)准确。对于难以获得完整帖子和友谊信息的情况,我们分析了情感预测性能与可用信息之间的权衡。当计算资源有限时,我们表明仅使用四种网络属性,就可以以竞争精度预测情绪。我们的研究结果可以用于(1)验证同伴对用户情感的影响,(2)改进经典的基于文本的情感预测方法,(3)利用情感增强朋友推荐,以及(4)帮助识别人格特征。
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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