An Experimental Design Approach to Evaluating Agentic AI's Autonomous Model Discovery
Large language model coding agents increasingly perform open-ended data modeling and analysis. These agents are stochastic and adaptive, and therefore their autonomous model discovery behavior cannot be adequately characterized by a single benchmark run. In this work, we propose an experimental design and analysis framework for systematically evaluating this discovery process, quantifying its variability, and identifying important factors. The proposed framework treats these agents as stochastic model-discovery operators, which map task-specific discovery data and an optimization target to a f
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- Linked via arxiv authorZhenghao He →
An Experimental Design Approach to Evaluating Agentic AI's Autonomous Model Discovery
- Linked via arxiv authorXueying Liu →
An Experimental Design Approach to Evaluating Agentic AI's Autonomous Model Discovery
- Linked via arxiv authorChris J. Kuhlman →
An Experimental Design Approach to Evaluating Agentic AI's Autonomous Model Discovery
- Linked via arxiv authorXinwei Deng →
An Experimental Design Approach to Evaluating Agentic AI's Autonomous Model Discovery
