核心概念
XRMDN is a novel deep learning framework that enhances probabilistic demand forecasting in high-volatility Mobility-on-Demand systems.
摘要
The content introduces XRMDN, an Extended Recurrent Mixture Density Network, designed to forecast probabilistic demand in high-volatility Mobility-on-Demand systems. Traditional forecasting methods often overlook uncertainty in demand projections, especially in scenarios with high and dynamic volatility. XRMDN addresses these challenges by leveraging a sophisticated architecture that incorporates endogenous and exogenous data to enhance forecasting precision. The model outperforms existing benchmark models in various metrics, particularly excelling in high-demand volatility contexts. The paper includes a comprehensive experimental analysis using real-world MoD datasets, showcasing the effectiveness of XRMDN in enhancing operational efficiency and customer satisfaction.
Structure:
- Introduction to Mobility-on-Demand systems and the importance of demand forecasting.
- Challenges in traditional forecasting methods and the need for probabilistic forecasting.
- Proposal of XRMDN as a solution to address high-demand volatility.
- Description of XRMDN architecture and its advantages over existing models.
- Experimental analysis and comparison with benchmark models.
- Conclusion and future research directions.
统计
XRMDN는 고휘발성 Mobility-on-Demand 시스템에서 확률적 수요 예측을 향상시키는 혁신적인 딥러닝 프레임워크입니다.
引用
"Our comprehensive experimental analysis, utilizing real-world MoD datasets, demonstrates that XRMDN surpasses the existing benchmark models across various metrics, notably excelling in high-demand volatility contexts."