电子市场的信息令牌驱动机器学习:行为金融大数据分析中的绩效影响

Jim Samuel
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引用次数: 35

摘要

随着信息增长的普遍加速,金融服务已经沉浸在信息动态的演变中。不仅仅是数据量的急剧增长,“大数据”现象的速度、复杂性和不可预测性也加剧了金融服务研究人员和从业人员所面临的挑战。创造性地利用数学、统计和技术来创造分析解决方案。鉴于财务投标数据(FBD)的许多独特特征,有必要深入了解可用于创建FBD特定解决方案的策略和模型。作为FBD的一个子集,行为金融数据正呈指数级增长,这为使用大数据分析方法研究行为金融提供了前所未有的机会。本研究绘制了机器学习(ML)技术和行为金融类别,以探索使用ML技术解决FBD行为方面的潜力。提出了这种方法的本体论可行性,并提出了本研究的主要目的:基于ML的行为模型可以有效地估计FBD中的性能。利用简单的机器学习算法成功地研究了人工股票市场中的行为表现,以验证这些命题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information Token Driven Machine Learning For Electronic Markets: Performance Effects In Behavioral Financial Big Data Analytics
Conjunct with the universal acceleration in information growth, financial services have been immersed in an evolution of information dynamics. It is not just the dramatic increase in volumes of data, but the speed, the complexity and the unpredictability of ‘big-data’ phenomena that have compounded the challenges faced by researchers and practitioners in financial services. Math, statistics and technology have been leveraged creatively to create analytical solutions. Given the many unique characteristics of financial bid data (FBD) it is necessary to gain insights into strategies and models that can be used to create FBD specific solutions. Behavioral finance data, a subset of FBD, is seeing exponential growth and this presents an unprecedented opportunity to study behavioral finance employing big data analytics methodologies. The present study maps machine learning (ML) techniques and behavioral finance categories to explore the potential for using ML techniques to address behavioral aspects in FBD. The ontological feasibility of such an approach is presented and the primary purpose of this study is propositioned: ML based behavioral models can effectively estimate performance in FBD. A simple machine learning algorithm is successfully employed to study behavioral performance in an artificial stock market to validate the propositions.
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