Training with Input Selection and Testing (TWIST) Algorithm: A Significant Advance in Pattern Recognition Performance of Machine Learning

Buscema, Massimo and Breda, Marco and Lodwick, Weldon (2013) Training with Input Selection and Testing (TWIST) Algorithm: A Significant Advance in Pattern Recognition Performance of Machine Learning. Journal of Intelligent Learning Systems and Applications, 05 (01). pp. 29-38. ISSN 2150-8402

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Abstract

This article shows the efficacy of TWIST, a methodology for the design of training and testing data subsets extracted from given dataset associated with a problem to be solved via ANNs. The methodology we present is embedded in algorithms and actualized in computer software. Our methodology as implemented in software is compared to the current standard methods of random cross validation: 10-Fold CV, random split into two subsets and the more advanced T&T. For each strategy, 13 learning machines, representing different families of the main algorithms, have been trained and tested. All algorithms were implemented using the well-known WEKA software package. On one hand a falsification test with randomly distributed dependent variable has been used to show how T&T and TWIST behaves as the other two strategies: when there is no information available on the datasets they are equivalent. On the other hand, using the real Statlog (Heart) dataset, a strong difference in accuracy is experimentally proved. Our results show that TWIST is superior to current methods. Pairs of subsets with similar probability density functions are generated, without coding noise, according to an optimal strategy that extracts the most useful information for pattern classification.

Item Type: Article
Subjects: Open Library Press > Engineering
Depositing User: Unnamed user with email support@openlibrarypress.com
Date Deposited: 30 Jan 2023 10:02
Last Modified: 30 Jan 2023 10:02
URI: https://openlibrarypress.com/id/eprint/358

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