Abstract
Stevens’ law, which is one of the well-known psychophysical laws, suggests that the perceived intensity R of a biological system is proportional to the power of the stimulus strength I, R ∝ I n. In order to realize a self-sustainable system that adapts to changes of the environment, it is important to understand the neural mechanism behind this law. Here, we propose a new neural scheme based on the shunting short-term memory (STM) model with the physiological properties of the nervous system, and examine the relation between the neural system and Stevens’ law through computer simulations of the firing rate f with respect to the stimulus strength I. The simulations showed that the feedback-inputting connectivity plays an important role in reproducing the n > 1 and n < 1 cases of Stevens’ law.
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Yamanishi, T., Nosaka, M., Nishimura, H. et al. Neural Model Approach to the Basic Law of Psychophysics. Neural Process Lett 27, 115–123 (2008). https://doi.org/10.1007/s11063-007-9063-8
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DOI: https://doi.org/10.1007/s11063-007-9063-8