Entropy, Perception, and Relativity

Abstract

In this paper, I expand Shannon's definition of entropy into a new form of entropy that allows integration of information from different random events. Shannon's notion of entropy is a special case of my more general definition of entropy. I define probability using a so-called performance function, which is de facto an exponential distribution. Assuming that my general notion of entropy reflects the true uncertainty about a probabilistic event, I understand that our perceived uncertainty differs. I claim that our perception is the result of two opposing forces similar to the two famous antagonists in Chinese philosophy: Yin and Yang. Based on this idea, I show that our perceived uncertainty matches the true uncertainty in points determined by the golden ratio. I demonstrate that the well-known sigmoid function, which we typically employ in artificial neural networks as a non-linear threshold function, describes the actual performance. Furthermore, I provide a motivation for the time dilation in Einstein's Special Relativity, basically claiming that although time dilation conforms with our perception, it does not correspond to reality. At the end of the paper, I show how to apply this theoretical framework to practical applications. I present recognition rates for a pattern recognition problem, and also propose a network architecture that can take advantage of general entropy to solve complex decision problems.

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Document Details

Document Type
Technical Report
Publication Date
Apr 01, 2006
Accession Number
ADA453569

Entities

People

  • Stefan Jaegar

Organizations

  • University of Maryland

Tags

DTIC Thesaurus Topics

  • Abstracts
  • Computers
  • Computing System Architectures
  • Information Operations
  • Language
  • Network Architecture
  • Neural Networks
  • Pattern Recognition
  • Perception
  • Recognition
  • Special Relativity
  • Two Dimensional
  • Uncertainty
  • Universities

Readers

  • Statistical inference.
  • Systems Analysis and Design
  • Theoretical Analysis.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Machine Learning Algorithms