A Combinatorial Model of Perceptual Categorization Unifying the Stevens and Weber–Fechner Laws

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Abstract

Classical psychophysics describes the relation between physical stimulus intensityand subjective sensation using either logarithmic (Weber–Fechner) or power functions(Stevens). However, these empirical laws lack a unifying mathematical foundationgrounded in discrete cognitive processes. Here, we propose a combinatorial model ofperceptual categorization based on set partitions and equivalence relations. By treatingperception as a process of grouping stimuli into equivalence classes of indistinguishability,we show that the expected number of perceptual categories m grows with thenumber of stimuli n according to a sigmoidal law. Asymptotically, this model recoversboth Stevens’ power law and Fechner’s logarithmic law as limiting cases, revealing aformal combinatorial basis for classical psychophysical scaling.

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