Research

Paper

AI LLM February 25, 2026

Prompt Architecture Determines Reasoning Quality: A Variable Isolation Study on the Car Wash Problem

Authors

Heejin Jo

Abstract

Large language models consistently fail the "car wash problem," a viral reasoning benchmark requiring implicit physical constraint inference. We present a variable isolation study (n=20 per condition, 6 conditions, 120 total trials) examining which prompt architecture layers in a production system enable correct reasoning. Using Claude 3.5 Sonnet with controlled hyperparameters (temperature 0.7, top_p 1.0), we find that the STAR (Situation-Task-Action-Result) reasoning framework alone raises accuracy from 0% to 85% (p=0.001, Fisher's exact test, odds ratio 13.22). Adding user profile context via vector database retrieval provides a further 10 percentage point gain, while RAG context contributes an additional 5 percentage points, achieving 100% accuracy in the full-stack condition. These results suggest that structured reasoning scaffolds -- specifically, forced goal articulation before inference -- matter substantially more than context injection for implicit constraint reasoning tasks.

Metadata

arXiv ID: 2602.21814
Provider: ARXIV
Primary Category: cs.AI
Published: 2026-02-25
Fetched: 2026-02-26 05:00

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