Abstract
This study provides an in-depth evaluation of Tolerance Reflected Estimation (TRE) methodologies, with a particular emphasis on its Exponential and Gaussian variants. The rationale for this research stems from the inherent limitations of static statistical methods in dynamically adapting to evolving data distributions, which often compromise prediction reliability in complex systems. These innovative statistical frameworks aim to significantly improve the accuracy of predictive models, particularly within the dynamic domains of machine learning and public transportation systems. By allowing for continuous and dynamic adjustments to tolerance intervals, the TRE techniques are capable of effectively accommodating diverse data characteristics, thereby substantially enhancing prediction reliability within defined confidence limits. The research highlights the advantageous application of TRE for robustly managing and precisely assessing prediction errors, including the mean square error and mean absolute percentage error. The findings indicate substantial potential for TRE-based approaches to support more efficient public transport systems, improve user satisfaction, and aid in fostering environmental sustainability. Continued research is recommended to further validate these models across various contexts, thereby enriching their applicability and effectiveness in real-world scenarios.
| Original language | English |
|---|---|
| Pages (from-to) | 725-739 |
| Number of pages | 15 |
| Journal | Journal of Statistical Theory and Applications |
| Volume | 24 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - Sept 2025 |
Keywords
- Computer networks
- Exponential tolerance reflected estimation
- Gaussian tolerance reflected estimation
- Machine learning
- Public transport
- Quality tolerance
- Statistical analysis
- Tolerance reflected estimation