Conditioning of extreme learning machine for noisy data using heuristic optimization

Abstract

This article provides a tool that can be used in the exact sciences to obtain good approximations to reality when noisy data is inevitable. Two heuristic optimization algorithms are implemented: Simulated Annealing and Particle Swarming for the determination of the extreme learning machine output weights. The first operates in a large search space and at each iteration it probabilistically decides between staying at its current state or moving to another. The swarm of particles, it optimizes a problem from a population of candidate solutions, moving them throughout the search space according to position and speed. The methodology consists of building data sets around a polynomial function, implementing the heuristic algorithms and comparing the errors with the traditional computation method using the Moore-Penrose inverse. The results show that the heuristic optimization algorithms implemented improve the estimation of the output weights when the input have highly noisy data.

Más información

Título según SCOPUS: Conditioning of extreme learning machine for noisy data using heuristic optimization
Título de la Revista: Journal of Physics: Conference Series
Volumen: 1514
Número: 1
Editorial: Institute of Physics
Fecha de publicación: 2020
Idioma: English
DOI:

10.1088/1742-6596/1514/1/012007

Notas: SCOPUS - SCOPUS