Teleonomic entropy: measuring the phase-space of end-directed systems

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We introduce a novel way of measuring the entropy of a set of values undergoing changes. Such a measure becomes useful when analyzing the temporal development of an algorithm designed to numerically update a collection of values such as artificial neural network weights undergoing adjustments during learning. We measure the entropy as a function of the phase-space of the values, i.e. their magnitude and velocity of change, using a method based on the abstract measure of entropy introduced by the philosopher Rudolf Carnap. By constructing a time-dynamic two-dimensional Voronoi diagram using Voronoi cell generators with coordinates of value- and value-velocity (change of magnitude), the entropy becomes a function of the cell areas. We term this measure teleonomic entropy since it can be used to describe changes in any end-directed (teleonomic) system. The usefulness of the method is illustrated when comparing the different approaches of two search algorithms, a learning artificial neural network and a population of discovering agents.

论文关键词:Carnap entropy,Teleonomic entropy,Teleonomic creativity,Phase-space,Voronoi diagram,Artificial neural network,Agent system

论文评审过程:Available online 25 February 2004.

论文官网地址:https://doi.org/10.1016/j.amc.2004.01.006