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This paper proposes that reliability in AI-assisted social science research depends on decision architecture—how cognitive labor is divided between humans and machines. Through a pre-specified factorial experiment, the authors show that an unconstrained multi-agent baseline fails in 72% of runs, while one organized with three architectural commitments (LLMs restricted to reasoning, deterministic data/estimation, and three human decision gates) fails in only 16%.