社交媒体情感与市场行为

Domonkos F. Vamossy
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引用次数: 0

摘要

我探讨了投资者在社交媒体上表达的情绪与资产价格之间的关系。在这一领域,旨在从社交媒体数据中提取公司层面情绪的模型层出不穷,但这些模型的行为往往仍不确定。在此背景下,我的研究采用了开源情绪模型 EmTract 来测试社交媒体平台上识别出的情绪反应是否与实验室控制环境下得出的预期一致。这一步骤对于验证数字平台反映真实投资者情绪的可靠性至关重要。我的研究结果表明,公司特定投资者的情绪表现与实验室实验类似,可以预测每日资产价格走势。当流动性较低或利空较多时,这些影响会更大。我关于悲伤情绪对后续回报的持续影响的发现,以及一维价态度量的重要性,都强调了剖析情绪状态的重要性。通过这种方法,我们可以更深入、更准确地理解投资者情绪推动市场走势的复杂方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media Emotions and Market Behavior
I explore the relationship between investor emotions expressed on social media and asset prices. The field has seen a proliferation of models aimed at extracting firm-level sentiment from social media data, though the behavior of these models often remains uncertain. Against this backdrop, my study employs EmTract, an open-source emotion model, to test whether the emotional responses identified on social media platforms align with expectations derived from controlled laboratory settings. This step is crucial in validating the reliability of digital platforms in reflecting genuine investor sentiment. My findings reveal that firm-specific investor emotions behave similarly to lab experiments and can forecast daily asset price movements. These impacts are larger when liquidity is lower or short interest is higher. My findings on the persistent influence of sadness on subsequent returns, along with the insignificance of the one-dimensional valence metric, underscores the importance of dissecting emotional states. This approach allows for a deeper and more accurate understanding of the intricate ways in which investor sentiments drive market movements.
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