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On learning Random Forests for Random Forest-clustering

Manuele Bicego, Francisco Escolano

202120 citationsDOI

Abstract

In this paper we study the poorly investigated problem of learning Random Forests for distance-based Random Forest clustering. We studied both classic schemes as well as alternative approaches, novel in this context. In particular, we investigated the suitability of Gaussian Density Forests, Random Forests specifically designed for density estimation. Further, we introduce a novel variant of Random Forest, based on an effective non parametric by-pass estimator of the Rényi entropy, which can be useful when the parametric assumption is too strict. An empirical evaluation involving different datasets and different RF-clustering strategies confirms that the learning step is crucial for RF-clustering. We also present a set of practical guidelines useful to determine the most suitable variant of RF-clustering according to the problem under examination.

Topics & Concepts

Random forestCluster analysisEstimatorComputer scienceEntropy (arrow of time)Machine learningContext (archaeology)Artificial intelligenceData miningGaussianMathematicsStatisticsGeographyPhysicsQuantum mechanicsArchaeologyAnomaly Detection Techniques and ApplicationsGaussian Processes and Bayesian InferenceBayesian Methods and Mixture Models