Decision Tree Psychological Risk Assessment in Currency Trading

Jai Pal
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Abstract

This research paper focuses on the integration of Artificial Intelligence (AI) into the currency trading landscape, positing the development of personalized AI models, essentially functioning as intelligent personal assistants tailored to the idiosyncrasies of individual traders. The paper posits that AI models are capable of identifying nuanced patterns within the trader's historical data, facilitating a more accurate and insightful assessment of psychological risk dynamics in currency trading. The PRI is a dynamic metric that experiences fluctuations in response to market conditions that foster psychological fragility among traders. By employing sophisticated techniques, a classifying decision tree is crafted, enabling clearer decision-making boundaries within the tree structure. By incorporating the user's chronological trade entries, the model becomes adept at identifying critical junctures when psychological risks are heightened. The real-time nature of the calculations enhances the model's utility as a proactive tool, offering timely alerts to traders about impending moments of psychological risks. The implications of this research extend beyond the confines of currency trading, reaching into the realms of other industries where the judicious application of personalized modeling emerges as an efficient and strategic approach. This paper positions itself at the intersection of cutting-edge technology and the intricate nuances of human psychology, offering a transformative paradigm for decision making support in dynamic and high-pressure environments.
货币交易中的决策树心理风险评估
本研究论文的重点是将人工智能(AI)整合到货币交易领域,假设个性化AI模型的发展,本质上是作为针对个人交易者的特质量身定制的智能个人助理。该论文认为,人工智能模型能够识别交易者历史数据中的细微模式,有助于对货币交易中的心理风险动态进行更准确、更有洞察力的评估。PRI是一种动态指标,它会随着市场状况的变化而波动,而市场状况会助长交易员的心理脆弱性。通过采用复杂的技术,分类决策树被精心制作,在树结构中实现更清晰的决策边界。通过合并用户按时间顺序的交易条目,该模型变得善于识别心理风险加剧时的关键时刻。计算的实时性增强了模型作为一种主动工具的效用,可以及时向交易者发出心理风险即将来临的警报。这项研究的影响超出了货币交易的范围,进入了其他行业的领域,在这些行业中,个性化建模的明智应用成为一种高效和战略性的方法。本文将自己定位在尖端技术和人类心理复杂细微差别的交叉点,为动态和高压环境下的决策支持提供变革性范例。
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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