Prediction Accuracy
Prediction accuracy, the degree to which a model correctly anticipates outcomes, is a central concern across diverse scientific fields. Current research emphasizes improving accuracy by addressing challenges like data distribution shifts (e.g., using ensemble methods and uncertainty quantification with neural networks), mitigating randomness in data splitting (e.g., through interval estimation), and optimizing model efficiency (e.g., via adaptive basis function selection or hardware-aware ensemble selection). These advancements are crucial for enhancing the reliability and applicability of predictive models in various domains, from healthcare diagnostics to financial forecasting and autonomous systems.
Papers
Metal Price Spike Prediction via a Neurosymbolic Ensemble Approach
Nathaniel Lee, Noel Ngu, Harshdeep Singh Sahdev, Pramod Motaganahall, Al Mehdi Saadat Chowdhury, Bowen Xi, Paulo Shakarian
Optimization and Application of Cloud-based Deep Learning Architecture for Multi-Source Data Prediction
Yang Zhang, Fa Wang, Xin Huang, Xintao Li, Sibei Liu, Hansong Zhang