Neurofinance: Exploratory Analysis Stock Trader's Decision-Making Process by Real-Time Monitoring of Emotional Reactions

Hsin-Tzu Hsu, João Alexandre Lobo Marques
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Abstract

Human emotions can be associated with decision-making, and emotions can generate behaviors. Due to the fact that it could be biased and exhaustively complex to examine how human beings make choices, it is necessary to consider relevant groups of study, such as stock traders and non-traders in finance. This work aims to analyze the connection between emotions and the decision-making process of investors and non-investors submitted to the same set of stimuli to understand how emotional arousal might dictate the decision process. Neuroscience monitoring tools such as Real-Time Facial Expression Analysis (AFFDEX), Eye-Tracking, and Galvanic Skin Response (GSR) were adopted to monitor the related experiments of this paper and its accompanying analysis process. Thirty-seven participants attended the study, 24 were classified as stock traders, and 13 were non-traders; the mean age for the groups was 35 and 25, respectively. The designed experiment initially disclosed a thought-provoking result between the two groups under the certainty and risk-seeking prospect theory; there were more risk-takers among non-investors at 75%, while investors were inclined toward certainty at 79.17%. The implication could be that the non-investing individuals were less complex in thought and therefore pursued higher returns besides a high probability of losing the game. In addition, the automatic emotion classification system indicates that when non-investors confronted a stock trending chart beyond their acquaintance or knowledge, they were psychologically exposed to fear, anger, sadness, and surprise. On the contrary, investors were detected with disgust, joy, contempt, engagement, sadness, and surprise, where sadness and surprise overlapped in both parties. Under time pressure conditions, 54.05% of investors or non-investors tend to make decisions after the peak(s) of emotional arousal. Variations were found in the deciding points of the slopes: 2.70% were decided right after the peak(s), 37.84% waited until the emotions turned stable, and 13.51% were determined as the emotional indicators started to slide downwards. Several combinations of emotional responses were associated with decisions. For example, negative emotions could induce passive decision-making, in this case, to sell the stock; nevertheless, it was also examined that as the slope slipped downwards to a particular horizontal point, the individuals became more optimistic and selected the "BUY" option. Future works may consider expanding the study to larger sample size, different demographic groups, and other biometrics for further analysis and conclusions.
神经金融:通过实时监测情绪反应探索性分析股票交易者的决策过程
人类的情绪可以与决策联系在一起,情绪可以产生行为。由于研究人类如何做出选择可能会有偏见,而且非常复杂,因此有必要考虑相关的研究群体,例如股票交易员和金融领域的非交易员。本研究旨在分析投资者和非投资者在同一刺激下的情绪与决策过程之间的联系,以了解情绪唤醒如何支配决策过程。采用实时面部表情分析(AFFDEX)、眼动追踪(Eye-Tracking)、皮肤电反应(GSR)等神经科学监测工具对本文相关实验及分析过程进行监测。37名参与者参加了研究,其中24人被归类为股票交易者,13人被归类为非股票交易者;两组的平均年龄分别为35岁和25岁。设计的实验初步揭示了确定性和风险寻求前景理论下两组之间的一个发人深省的结果;非投资者中更愿意承担风险的比例为75%,而投资者倾向于确定性的比例为79.17%。这可能意味着,不投资的人思维不那么复杂,因此除了输掉比赛的高概率之外,他们还追求更高的回报。此外,自动情绪分类系统表明,当非投资者面对他们不熟悉或不了解的股票趋势图时,他们在心理上暴露于恐惧、愤怒、悲伤和惊讶。相反,投资者被检测出厌恶、喜悦、蔑视、投入、悲伤和惊讶,其中悲伤和惊讶在双方都是重叠的。在时间压力条件下,54.05%的投资者或非投资者倾向于在情绪唤醒高峰期之后做出决策。斜率的决定点存在差异:2.70%的人在达到峰值后立即决定,37.84%的人等到情绪稳定后才决定,13.51%的人在情绪指标开始下滑时决定。情绪反应的几种组合与决策有关。例如,消极情绪可能导致被动决策,在这种情况下,卖出股票;然而,研究也发现,当斜率下降到一个特定的水平点时,个体变得更加乐观,并选择了“买入”选项。未来的工作可能会考虑将研究扩展到更大的样本量,不同的人口统计学群体,以及其他生物特征,以进一步分析和得出结论。
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