Process Matters more than Output for Distinguishing Humans from Machines
Milena Rmus, Mathew D. Hardy, Thomas L. Griffiths, Mayank Agrawal

TL;DR
This paper demonstrates that analyzing process-level features in cognitive tasks more effectively distinguishes humans from machines than output-based methods, emphasizing the importance of process over output in human-machine discrimination.
Contribution
It introduces CogCAPTCHA30, a set of cognitive tasks and features that improve human-machine discrimination by focusing on process-level analysis, surpassing output-based approaches.
Findings
Process features outperform output metrics in distinguishing humans from agents.
Fine-tuning on human decisions enhances process mimicry in AI agents.
Process-level supervision improves behavioral mimicry but has limited cross-task transferability.
Abstract
Reliable human-machine discrimination is becoming increasingly important as large language models and autonomous agents are deployed in online settings. Existing approaches evaluate whether a system can produce behavior or responses indistinguishable from those of a human, following the emphasis on outputs as a criterion for intelligence proposed by Alan Turing. Cognitive science offers an alternative perspective: evaluating the process by which behavior is produced. To test whether cognitive processes can reliably distinguish humans from machines, we introduce CogCAPTCHA30, a battery of 30 cognitive tasks designed to elicit diagnostic process-level features even when task performance is matched. Across the battery, process-level features provide stronger discriminative signal than performance metrics alone, reliably distinguishing humans from agents even under output matching (mean…
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