基于机器学习和数据科学的财务策略评估框架:一个案例研究驱动的决策模型

IF 4.6 3区 管理学 Q1 BUSINESS IEEE Transactions on Engineering Management Pub Date : 2024-12-25 DOI:10.1109/TEM.2024.3522313
Mohammadsaleh Saadatmand;Tugrul Daim;Carlos Mena;Haydar Yalcin;Gulin Bolatan;Manali Chatterjee
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引用次数: 0

摘要

大数据和计算技术在全球资产和投资管理中越来越重要。许多投资管理公司正在采用这些数据科学(DS)方法和技术来提高所有投资流程的绩效。一个好问题是,我们能否在制定量化战略时做出更好的决策。因此,本研究的主要目标是开发一个多标准评估框架和评分决策支持系统,以评估在研究和开发中应用机器学习(ML)和DS技术的定量投资策略。主题专家将从系统文献综述中评估所有框架观点,以批准其可靠性。透视图包括经济和金融基础、数据透视图、特性透视图、建模透视图和性能透视图。研究方法采用层次决策模型(HDM),以提供360°的定量投资策略视图,并将概念改进和推广到其他资产类别和地区。本研究完成了一个严格的整合广泛的文献综述连接DS, ML和投资决策制定量化投资策略。因此,本研究的主要贡献是全面的检查,其中包括识别和量化的观点和标准。结果虽然有限,但表明所检查的策略存在重大差距,因此产生了改进ML/ ds驱动的投资策略的关键知识,这对金融公司和政策制定者很有价值。
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An Evaluation Framework for Machine Learning and Data Science-Based Financial Strategies: A Case Study-Driven Decision Model
Big data and computational technologies are increasingly important worldwide in asset and investment management. Many investment management firms are adopting these data science (DS) methods and technologies to improve performance across all investment processes. A good question is whether we can make better decisions in developing quantitative strategies. Therefore, the main objective of this research was to develop a multicriteria assessment framework and scoring decision support system to evaluate quantitative investment strategies that apply machine learning (ML) and DS techniques in their research and development. Subject matter experts will assess all framework perspectives from a systematic literature review to approve their reliability. The perspectives consist of economic and financial foundations, data perspective, features perspective, modeling perspective, and performance perspective. The research methodology applied was the hierarchical decision model (HDM) to provide a 360° view of the quantitative investment strategy and improve and generalize the concept to other asset classes and regions. This study accomplished a rigorous integration of an extensive literature review connecting DS, ML, and investment decision-making in developing quantitative investment strategies. As a result, the major contribution of this study is the comprehensive examination, which included identifying and quantifying perspectives and criteria. The results, while limited indicated significant gaps in strategies examined and therefore generated critical knowledge to improve ML/DS-driven investment strategies, which are valuable for financial companies and policymakers.
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来源期刊
IEEE Transactions on Engineering Management
IEEE Transactions on Engineering Management 管理科学-工程:工业
CiteScore
10.30
自引率
19.00%
发文量
604
审稿时长
5.3 months
期刊介绍: Management of technical functions such as research, development, and engineering in industry, government, university, and other settings. Emphasis is on studies carried on within an organization to help in decision making or policy formation for RD&E.
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