The LVQ-based Counter Propagation Network -- an Interpretable Information Bottleneck Approach Journalartikel uri icon

 

Abstract

  • In this paper we present a realization of the information-bottleneck-paradigm by means of an improved counter propagation network. It combines an unsupervised vector quantizer for data compression with a subsequent supervised learning vector quantization model. The approach is mathematically justified and yields an interpretable model for classification under the constraint of data compression, which is not longer independently learned from the classification task.

Veröffentlichungsjahr

  • 2021

Zugangsrechte

  • Open Access