Artificial Metaplasticity for Deep Learning: Application to WBCD Breast Cancer Database Classification

Loading...
Thumbnail Image
Identifiers

Publication date

Authors

Fombellida, Juan
Torres Alegre, Santiago
Andina, Diego

Advisors

Editors

Journal Title

Journal ISSN

Volume Title

Publisher

Springer International Publishing

Metrics

Google Scholar

Research Projects

Organizational Units

Journal Issue

Abstract

Deep Learning is a new area of Machine Learning research that deals with learning different levels of representation and abstraction in order to move Machine Learning closer to Artificial Intelligence. Artificial Metaplasticity are Artificial Learning Algorithms based on modelling higher level properties of biological plasticity: the plasticity of plasticity itself, so called Biological Metaplasticity. Artificial Metaplasticity aims to obtain general improvements in Machine Learning based on the experts generally accepted hypothesis that the Metaplasticity of neurons in Biological Brains is of high relevance in Biological Learning. This paper presents and discuss the results of applying different Artificial Metaplasticity implementations in Multilayer Perceptrons at artificial neuron learning level. To illustrate their potential, a relevant application that is the objective of state-of-the-art research has been chosen: the diagnosis of breast cancer data from the Wisconsin Breast Cancer Database. It then concludes that Artificial Metaplasticity also may play a high relevant role in Deep Learning.

Description

Keywords

Bibliographic reference

Fombellida, J., Torres-Alegre, S., Piñuela-Izquierdo, J. A., & Andina, D. (2015). Artificial Metaplasticity for Deep Learning: Application to WBCD Breast Cancer Database Classification. In J. M. Ferrández Vicente, J. R. Álvarez-Sánchez, F. de la Paz López, F. J. Toledo-Moreo, & H. Adeli (Eds.), IWINAC 2015: Bioinspired Computation in Artificial Systems (pp. 399–408). Cham: Springer International Publishing. https://doi.org/10.1007/978-3-319-18833-1_42

Type of document