LGOct 16, 2015

Improving the Speed of Response of Learning Algorithms Using Multiple Models

arXiv:1510.05034v211 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental approach for researchers in machine learning, focusing on enhancing algorithm speed using existing multiple model methods.

The authors tackled the problem of slow response in learning algorithms by applying multiple models to Learning Automata, aiming to improve speed, but no concrete results or numbers are provided.

This is the first of a series of papers that the authors propose to write on the subject of improving the speed of response of learning systems using multiple models. During the past two decades, the first author has worked on numerous methods for improving the stability, robustness, and performance of adaptive systems using multiple models and the other authors have collaborated with him on some of them. Independently, they have also worked on several learning methods, and have considerable experience with their advantages and limitations. In particular, they are well aware that it is common knowledge that machine learning is in general very slow. Numerous attempts have been made by researchers to improve the speed of convergence of algorithms in different contexts. In view of the success of multiple model based methods in improving the speed of convergence in adaptive systems, the authors believe that the same approach will also prove fruitful in the domain of learning. In this paper, a first attempt is made to use multiple models for improving the speed of response of the simplest learning schemes that have been studied. i.e. Learning Automata.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes