Artificial Intelligence-based Analysis of Change in Public Finance between US and International Markets

Kapil Panda
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Abstract

Public finances are one of the fundamental mechanisms of economic governance that refer to the financial activities and decisions made by government entities to fund public services, projects, and operations through assets. In today's globalized landscape, even subtle shifts in one nation's public debt landscape can have significant impacts on that of international finances, necessitating a nuanced understanding of the correlations between international and national markets to help investors make informed investment decisions. Therefore, by leveraging the capabilities of artificial intelligence, this study utilizes neural networks to depict the correlations between US and International Public Finances and predict the changes in international public finances based on the changes in US public finances. With the neural network model achieving a commendable Mean Squared Error (MSE) value of 2.79, it is able to affirm a discernible correlation and also plot the effect of US market volatility on international markets. To further test the accuracy and significance of the model, an economic analysis was conducted that aimed to correlate the changes seen by the results of the model with historical stock market changes. This model demonstrates significant potential for investors to predict changes in international public finances based on signals from US markets, marking a significant stride in comprehending the intricacies of global public finances and the role of artificial intelligence in decoding its multifaceted patterns for practical forecasting.
基于人工智能的美国与国际市场公共财政变化分析
公共财政是经济治理的基本机制之一,指政府实体通过资产为公共服务、项目和运营提供资金的金融活动和决策。因此,本研究利用人工智能的能力,利用神经网络来描述美国和国际公共财政之间的相关性,并根据美国公共财政的变化来预测国际公共财政的变化。神经网络模型的平均平方误差(MSE)值为 2.79,值得称赞,它能够确认明显的相关性,并描绘出美国市场波动对国际市场的影响。为了进一步检验该模型的准确性和重要性,我们进行了一项经济分析,旨在将模型结果所显示的变化与历史股票市场变化联系起来。该模型展示了投资者根据美国市场信号预测国际公共财政变化的巨大潜力,标志着在理解错综复杂的全球公共财政以及人工智能在解码其多层面模式以进行实际预测方面迈出了重要一步。
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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