私人投资者的情绪解释了俄罗斯市场股票交易特征的差异

IF 0.3 Q4 ECONOMICS
T. Teplova, T. Sokolova, A. Tomtosov, D. V. Buchko, D. Nikulin
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引用次数: 5

摘要

在本文中,我们首次研究了社交网络中私人投资者的情绪对俄罗斯市场股票交易特征的影响。在股票发行人财务指标和公司治理质量指标以及外部环境变化的控制下,分析2013 - 2020年的月度收益率和交易量。各种情绪指标的样本基于独特的数据:Telegram和mfd.ru平台上的消息。采用人工智能(神经网络)方法对信息的调性进行诊断。主要结论是:情绪可以被视为定价和交易活动的一个解释性因素。情绪的影响是非线性的。本文提出了作者的HYPE情绪指标,并对多种代理变量对交易特征的解释能力进行了比较。通过对面板数据的回归构造来实现识别差异的解释能力。研究表明,贸易特征对负面信息的增长更为敏感,这与行为金融学的假设相一致。积极和消极情绪信息数量的增加有助于交易活动的增长。一个重要的实际结论是:当公司被讨论得最激烈的时候,随波逐流不会给投资者带来高回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The sentiment of private investors in explaining the differences in the trade characteristics of the Russian market stocks
In our paper, for the first time, we examine the influence of the sentiment of private investors in social networks on the trade characteristics of stocks in the Russian market. Monthly return rates and trading volumes are analyzed under the control of financial indicators and indicators of the quality of corporate governance of stock issuers, as well as the changing external environment in the period from 2013 to 2020. The sample for various sentiment metrics is based on unique data: messages in the Telegram and mfd.ru platforms. The tonality of messages is diagnosed according to the authors’ method using artificial intelligence (neural network). The main conclusion is: the sentiment can be seen as an explanatory factor in pricing and trading activity. The influence of sentiment is non-linear. The author’s HYPE indicator of sentiment is proposed and compared in terms of explanatory ability of the trade characteristics with a wide range of proxy variables. The explanatory ability to identify differences is realized through regression constructions on panel data. It is shown that trade characteristics are more sensitive to the growth of negative messages, which is consistent with the postulates of behavioral finance. An increase in messages’ number of both positive and negative sentiment contributes to the growth of trading activity. An important practical conclusion is: following the crowd when the company is most intensely discussed will not result in high returns to an investor.
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来源期刊
CiteScore
1.00
自引率
20.00%
发文量
33
期刊介绍: Key Journal''s objectives: bring together economists of different schools of thought across the Russian Federation; strengthen ties between Academy institutes, educational establishments and economic research centers; improve the quality of Russian economic research and education; integrate economic science and education; speed up the integration of Russian economic science in the global mainstream of economic research. The Journal publishes both theoretical and empirical articles, devoted to all aspects of economic science, which are of interest for wide range of specialists. It welcomes high-quality interdisciplinary projects and economic studies employing methodologies from other sciences such as physics, psychology, political science, etc. Special attention is paid to analyses of processes occurring in the Russian economy. Decisions about publishing of articles are based on a double-blind review process. Exceptions are short notes in the section "Hot Topic", which is usually formed by special invitations and after considerations of the Editorial Board. The only criterion to publish is the quality of the work (original approach, significance and substance of findings, clear presentation style). No decision to publish or reject an article will be influenced by the author belonging to whatever public movement or putting forward ideas advocated by whatever political movement. The Journal comes out four times a year, each issue consisting of 12 to 15 press sheets. Now it is published only in Russian. The English translations of the Journal issues are posted on the Journal website as open access resources.
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