Designing Service Systems from Textual Evidence
arXiv cs.LG / 3/12/2026
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Key Points
- The paper studies how to design the best service configurations using textual evidence (e.g., transcripts and reports) and highlights biases in LLM-based evaluation.
- It introduces PP-LUCB, an algorithm that jointly decides which alternatives to evaluate and whether to request human audits, using inverse-propensity-weighted residuals and anytime-valid confidence sequences.
- The authors show that LLM-only selection fails under arm-dependent bias and that naive selective-audit estimators can be asymptotically biased, providing theoretical cost bounds for near-optimal efficiency.
- Empirically, the approach achieves 40/40 correct identification of the best model on a customer support ticket classification task while reducing audit costs by about 90%.
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