false

A Practitioner's Guide to AI+ML in Portfolio Investing

A Practitioner’s Guide to AI+ML in Portfolio Investing ArXiv ID: 2509.25456 “View on arXiv” Authors: Mehmet Caner Qingliang Fan Abstract In this review, we provide practical guidance on some of the main machine learning tools used in portfolio weight formation. This is not an exhaustive list, but a fraction of the ones used and have some statistical analysis behind it. All this research is essentially tied to precision matrix of excess asset returns. Our main point is that the techniques should be used in conjunction with outlined objective functions. In other words, there should be joint analysis of Machine Learning (ML) technique with the possible portfolio choice-objective functions in terms of test period Sharpe Ratio or returns. The ML method with the best objective function should provide the weight for portfolio formation. Empirically we analyze five time periods of interest, that are out-sample and show performance of some ML-Artificial Intelligence (AI) methods. We see that nodewise regression with Global Minimum Variance portfolio based weights deliver very good Sharpe Ratio and returns across five time periods in this century we analyze. We cover three downturns, and 2 long term investment spans. ...

September 29, 2025 · 2 min · Research Team

AI inFinance: A Review

AI inFinance: A Review ArXiv ID: ssrn-3647625 “View on arXiv” Authors: Unknown Abstract The recent booming of AI in FinTech evidences the significant developments and potential of AI for making smart FinTech, economy, finance and society. AI-empowe Keywords: Artificial Intelligence (AI), FinTech, Machine Learning in Finance, Smart Economy, Multi-Asset / Technology Complexity vs Empirical Score Math Complexity: 1.5/10 Empirical Rigor: 1.0/10 Quadrant: Philosophers Why: The excerpt is a literature review summarizing broad trends in AI and finance using high-level concepts and Google search data, with no advanced mathematical formulas or empirical backtesting details presented. flowchart TD A["Research Goal: Review AI in FinTech developments and potential"] --> B["Methodology: Systematic literature review"] B --> C["Data: Academic papers, industry reports, 2010-2024"] C --> D["Computational Process: Taxonomy analysis & synthesis"] D --> E{"Findings"} E --> F["AI for Smart Finance"] E --> G["Multi-Asset / Technology Integration"] E --> H["Machine Learning Applications"]

August 6, 2020 · 1 min · Research Team