Social sentiment and exchange-specific liquidity at a Eurasian stock exchange outside of US market hours

IF 2.5 Q2 ECONOMICS
Tamara Teplova, Mariya Gubareva, Nikolai Kudriavtsev
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Abstract

We perform a neural network analysis of the impact of Russian retail investors´ sentiment on the stock price behavior of well-known American companies. We study American stocks in a situation of a time-segmentation of the stock market. A special feature of our analysis is the separate time trading mode, when trading is active at the SPB (formerly St. Petersburg) exchange and inactive at the US stock exchanges. Building on the unique local exchange data and original technique for constructing a neural network to identify the sentiment of messages from several Internet forums, we uncover the existence of behavioral anomalies in a non-English-speaking emerging market and analyze sentiment and attention metrics in social networks. We construct several sentiment metrics based on AI text analysis and use panel regression to identify their statistical significance under the selected hypotheses. The impact of sentiment is examined across the entire sample of US companies available to investors on the SPB exchange and a separate zooming is made at the top 10, 25, 50, and 100 stocks that are under special interest manifested by volume of discussions and trading volume. We also analyze the impact of sentiment on price reaction for individual popular stocks and by industry. We find that retail investors’ sentiment exercises a statistically significant influence on price spikes. The stocks, most sensitive to sentiment, are healthcare and high tech.

Abstract Image

欧亚证券交易所在美国市场交易时间外的社会情绪和交易所特定流动性
我们对俄罗斯散户投资者情绪对美国知名公司股价行为的影响进行了神经网络分析。我们研究的是股票市场分时交易情况下的美国股票。我们分析的一个特点是分时交易模式,即 SPB(前圣彼得堡)交易所交易活跃,而美国证券交易所交易不活跃。基于独特的本地交易所数据和构建神经网络以识别来自多个互联网论坛的消息情绪的原创技术,我们发现了非英语新兴市场中存在的行为异常,并分析了社交网络中的情绪和关注度指标。我们在人工智能文本分析的基础上构建了多个情感指标,并使用面板回归来确定它们在选定假设下的统计意义。我们在 SPB 交易所投资者可访问的全部美国公司样本中考察了情绪的影响,并根据讨论量和交易量对受到特别关注的前 10、25、50 和 100 只股票进行了单独放大。我们还分析了情绪对热门个股和行业价格反应的影响。我们发现,散户投资者的情绪对价格飙升有显著的统计学影响。对情绪最敏感的股票是医疗保健和高科技。
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来源期刊
CiteScore
6.00
自引率
2.90%
发文量
24
期刊介绍: The mission of Eurasian Economic Review is to publish peer-reviewed empirical research papers that test, extend, or build theory and contribute to practice. All empirical methods - including, but not limited to, qualitative, quantitative, field, laboratory, and any combination of methods - are welcome. Empirical, theoretical and methodological articles from all fields of finance and applied macroeconomics are featured in the journal. Theoretical and/or review articles that integrate existing bodies of research and that provide new insights into the field are highly encouraged. The journal has a broad scope, addressing such issues as: financial systems and regulation, corporate and start-up finance, macro and sustainable finance, finance and innovation, consumer finance, public policies on financial markets within local, regional, national and international contexts, money and banking, and the interface of labor and financial economics. The macroeconomics coverage includes topics from monetary economics, labor economics, international economics and development economics. Eurasian Economic Review is published quarterly. To be published in Eurasian Economic Review, a manuscript must make strong empirical and/or theoretical contributions and highlight the significance of those contributions to our field. Consequently, preference is given to submissions that test, extend, or build strong theoretical frameworks while empirically examining issues with high importance for theory and practice. Eurasian Economic Review is not tied to any national context. Although it focuses on Europe and Asia, all papers from related fields on any region or country are highly encouraged. Single country studies, cross-country or regional studies can be submitted.
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