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arXiv1d ago
4.5

Enhancing Confidence Estimation in Telco LLMs via Twin-Pass CoT-Ensembling

Anton Saenko, Pranshav Gajjar, Abiodun Ganiyu, Vijay K. Shah

View original ↗

Analysis

Viral velocity
low
Implementation gapYES
Novelty5/10
Categorypaper
Topics
reasoningllmconfidence

Opportunity Brief

Create a modular wrapper for LLM calls that injects a twin-pass Chain-of-Thought ensemble for better confidence calibration. It should allow developers to toggle 'self-assessment' for high-stakes telecom or technical tasks.

Suggested repo: calibChain

"Stop trusting overconfident LLMs with twin-pass validation."

Estimated effort: 20h