Emergent Mind

Stability of Information in the Heat Flow Clustering

(2405.01244)
Published May 2, 2024 in cs.IT , cond-mat.stat-mech , and math.IT

Abstract

Clustering methods must be tailored to the dataset it operates on, as there is no objective or universal definition of cluster,'' but nevertheless arbitrariness in the clustering method must be minimized. This paper develops a quantitativestability'' method of determining clusters, where stable or persistent clustering signals are used to indicate real structures have been identified in the underlying dataset. This method is based on modulating clustering methods by controlling a parameter -- through a thermodynamic analogy, the modulation parameter is considered time'' and the evolving clustering methodologies can be considered aheat flow.'' When the information entropy of the heat flow is stable over a wide range of times -- either globally or in the local sense which we define -- we interpret this stability as an indication that essential features of the data have been found, and create clusters on this basis.

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