Can Consciousness Nudge Randomness?

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Abstract

This paper presents the Cognitive Entropy Shift Model (CESM), a structured framework for exploring how distinct cognitive states, specifically passive emotional attention and goal-directed intention may influence probabilistic systems by reducing entropy. Drawing on principles from information theory and Bayesian-inspired probability updating, CESM conceptualizes consciousness as an informational constraint capable of subtly biasing outcomes in systems typically governed by randomness.To evaluate this framework, a two-year empirical study was conducted under controlled conditions using high-resolution data from a physical random number generator (RNG). CESM was used to predict when deviations from randomness would occur and the analysis revealed statistically significant deviations (t = -4.347, p < 0.001) during periods characterized by heightened emotional attention, with effect sizes in the range of 0.5-0.7%. These results aligned closely with CESM’s predictions. The effect also diminished with increasing spatial distance from the presumed source of influence, highlighting proximity as a potentially critical factor.In addition to presenting new empirical results, this paper also applies CESM retrospectively to earlier studies, offering a clear and testable reinterpretation of previously reported anomalies. By distinguishing between passive and active forms of cognitive engagement, and embedding them within a quantifiable statistical model, CESM provides a structured approach for examining whether, and under what conditions, cognitive states may correspond to subtle deviations in probabilities. The findings encourage further exploration into how consciousness relates to information, including potential effects across spatial distance, through a framework that supports the formulation of formal, testable hypotheses in advance of data collection, while remaining grounded in established scientific principles.

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