Multilayer Perceptrons and Data Compression

Authors

  • Robert Manger
  • Krunoslav Puljić

Keywords:

Artificial neural networks, data compression, multilayer perceptrons, holographic neural networks, experiments

Abstract

This paper investigates the feasibility of using artificial neural networks as a tool for data compression. More precisely, the paper measures compression capabilities of the standard multilayer perceptrons. An outline of a possible "neural'' data compression method is given. The method is based on training a perceptron to reproduce a given data file. Experiments are presented, where the outlined method has been simulated by using differently configured perceptrons and various data files. The best compression rates obtained in the experiments are listed, and compared with similar results produced in a previous paper by holographic neural networks.

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Published

2012-01-27

How to Cite

Manger, R., & Puljić, K. (2012). Multilayer Perceptrons and Data Compression. Computing and Informatics, 26(1), 45–62. Retrieved from http://147.213.75.17/ojs/index.php/cai/article/view/299