AI-Driven Wealth Advisory: Machine Learning Models for Personalized Investment Portfolios and Risk Optimization

Authors

  • Adebayo Adegbenro

    Harvard Business School, Cambridge, Massachusetts, MA, USA
    Author
  • Arinze Madueke

    Arigo Technologies, Lekki County Homes, Lekki, Lagos, Nigeria
    Author
  • Aniedi Ojo

    The Fuqua School of Business, Duke University, Durham, North Carolina, USA
    Author
  • Cynthia Alabi

    Northumbria University, United Kingdom
    Author

Keywords:

ML, Portfolio Optimization, Risk Management, Robo-Advisory, Deep Reinforcement Learning, Financial Technology

Abstract

This study develops and evaluates an integrated machine learning framework for personalized wealth advisory services that optimizes portfolio allocation while incorporating individual risk profiles, financial goals, and behavioral preferences. We employ a hybrid architecture combining deep reinforcement learning with ensemble methods Random Forest, XGBoost, and LSTM networks to analyze historical market data spanning 2008 to 2022, investor characteristics from a sample of 15,000 individuals, and comprehensive macroeconomic indicators. The framework integrates Modern Portfolio Theory with behavioral finance principles and implements dynamic risk assessment through conditional value-at-risk optimization. The proposed AI-driven system demonstrates superior performance metrics: a 23.4% improvement in risk-adjusted returns (Sharpe ratio: 1.84 versus 1.49 for traditional advisory approaches), 31% reduction in portfolio volatility, and 89.3 % accuracy in risk tolerance classification. The personalization engine successfully adapts to changing market conditions with an average rebalancing efficiency of 94.7%. Component analysis reveals that sophisticated risk profiling, return prediction via LSTM-Attention networks, and reinforcement learning optimization each contribute meaningfully to final performance. Stress testing during major market crises demonstrates superior downside protection, with maximum drawdowns averaging 4.5 percentage points lower than traditional benchmarks. This research contributes a novel multi-agent learning architecture that bridges the gap between algorithmic portfolio optimization and human-centric financial advisory, providing empirical evidence for AI’s role in democratizing sophisticated wealth management services while maintaining interpretability and regulatory compliance through SHAP-based explainability mechanisms.

 

Author Biographies

  • Adebayo Adegbenro, Harvard Business School, Cambridge, Massachusetts, MA, USA


    Harvard Business School, Cambridge, Massachusetts, MA, USA

     
  • Arinze Madueke, Arigo Technologies, Lekki County Homes, Lekki, Lagos, Nigeria


    Arigo Technologies, Lekki County Homes, Lekki, Lagos, Nigeria

  • Aniedi Ojo, The Fuqua School of Business, Duke University, Durham, North Carolina, USA


    The Fuqua School of Business, Duke University, Durham, North Carolina, USA

  • Cynthia Alabi, Northumbria University, United Kingdom


    Department of Architecture and Built Environment, Faculty of Engineering and Environment, Northumbria University, United Kingdom

Downloads

Published

2022-12-30

Similar Articles

1-10 of 239

You may also start an advanced similarity search for this article.