Skip to main content
Enterprise AI Analysis: Multiobjective portfolio management based on dynamic link prediction

Financial Innovation

Multiobjective portfolio management based on dynamic link prediction

This analysis explores a novel approach to portfolio management that integrates dynamic link prediction and multiobjective optimization to enhance returns and mitigate dependency risks in stock markets. Leveraging graph neural networks and advanced sampling techniques, the model forecasts stock co-movement relationships, enabling more informed and robust investment strategies.

Executive Impact

Our analysis reveals significant enhancements in portfolio performance, risk management, and strategic market positioning for enterprise investors.

0 Higher Cumulative Returns

The model achieves cumulative returns up to 217.19% higher than benchmark models, demonstrating superior profitability.

0 Greater Sharpe Ratios

Achieves up to 4.7 times greater annual Sharpe ratios, indicating significantly improved risk-adjusted returns.

Contrarian Growth MOPM approach fosters contrarian growth during bear markets by focusing on firm-specific information, mitigating systemic risk.

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Proposed LP-PM Framework

This study introduces a new framework, Link Prediction (LP) Portfolio Management (PM), which integrates dependency-based returns and risks into portfolio optimization. It models a dynamic network of stock co-movements and develops a GC-RePre-Sampling-LSTM model for dynamic LP.

Enterprise Process Flow

Graph Construction & Convolution (Extract Features)
RePre-Sampling & Dynamic Link Prediction (Predict Relationships)
Portfolio Pre-selection & Management (MOPM)

Overall Superior Performance

The proposed LP-PM framework delivers superior and more stable returns, outperforming conventional methods by addressing co-investment limitations in highly correlated stocks. Cumulative returns are 91.66% to 217.19% higher, and annual Sharpe ratios are 1.99 to 4.7 times greater than benchmarks.

Investment Performance Highlights (Strategy 1b vs. EW)

A comparison of the optimal strategy (Strategy 1b) against a traditional Equal Weight (EW) approach highlights the significant performance gains achieved by our model.

Metric Strategy 1b Equal Weight (EW)
Cumulative Return (%) 310.58 93.39
Annual Return (%) 175.65 -8.23
Annual Volatility (%) 41.36 19.19
Maximum Drawdown (%) 15.77 16.67
Annual Sharpe Ratio (%) 4.22 -0.48

Empirical Validation on Chinese Stock Market

The model was rigorously tested on real-world Chinese A-share market data (1,680 trading days, 2017-2023), including diverse sectors like Huawei concept, internet services, consumer electronics, biomedicine, baijiu, and real estate. It demonstrates superior performance, confirming its practical applicability and effectiveness in dynamic market conditions. Specifically, the analysis of two Baijiu stocks (000568.SZ and 000858.SZ) illustrated the successful capture of their dynamic co-movement relationships, which traditional methods often misinterpret.

Mitigating Dependency Risk

The framework effectively mitigates stock dependency risks by dynamically predicting future co-movement relationships and incorporating them into multiobjective optimization. This enables improved risk control while preserving potential profits from positively co-moving assets. By extending the traditional Mean Value-at-Risk (MVaR) framework with dependency-based objectives, the model offers greater flexibility in maximizing profits while managing downside risks.

Advanced ROI Calculator

Estimate the potential financial impact of implementing our AI-driven portfolio management system in your enterprise.

Annual Cost Savings $0
Hours Reclaimed Annually 0

Implementation Roadmap

Our structured approach ensures a seamless integration of the LP-PM framework into your existing financial operations, maximizing efficiency and minimizing disruption.

Discovery & Customization

Collaborate to understand your specific portfolio objectives, risk tolerance, and existing data infrastructure. Tailor the model's parameters and pre-selection strategies to align with your unique investment mandate.

Model Training & Validation

Utilize your historical market data to train the GC-RePre-Sampling-LSTM model. Rigorously validate its predictive accuracy for stock co-movements and optimize its performance for your target market.

Strategy Integration & Testing

Integrate the selected pre-selection strategies and the MOPSO algorithm into a simulated trading environment. Conduct extensive back-testing and stress-testing to ensure robustness and desired performance under various market conditions.

Deployment & Monitoring

Seamlessly deploy the optimized portfolio management system. Establish continuous monitoring and feedback loops to adapt strategies to evolving market dynamics and ensure sustained superior performance.

Ready to Transform Your Portfolio Management?

Unlock superior returns and advanced risk control with AI-driven dynamic link prediction. Schedule a personalized consultation to discuss how our LP-PM framework can be tailored to your enterprise needs.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking