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Bibliographic Details
Main Authors: Assunção, Gustavo, Menezes, Paulo
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.12435
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author Assunção, Gustavo
Menezes, Paulo
author_facet Assunção, Gustavo
Menezes, Paulo
contents Lack of data on which to perform experimentation is a recurring issue in many areas of research, particularly in machine learning. The inability of most automated data mining techniques to be generalized to all types of data is inherently related with their dependency on those types which deems them ineffective against anything slightly different. Meta-heuristics are algorithms which attempt to optimize some solution independently of the type of data used, whilst classifiers or neural networks focus on feature extrapolation and dimensionality reduction to fit some model onto data arranged in a particular way. These two algorithmic fields encompass a group of characteristics which when combined are seemingly capable of achieving data mining regardless of how it is arranged. To this end, this work proposes a means of combining meta-heuristic methods with conventional classifiers and neural networks in order to perform automated data mining. Experiments on the MNIST dataset for handwritten digit recognition were performed and it was empirically observed that using a ground truth labeled dataset's validation accuracy is inadequate for correcting labels of other previously unseen data instances.
format Preprint
id arxiv_https___arxiv_org_abs_2410_12435
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Approaching Metaheuristic Deep Learning Combos for Automated Data Mining
Assunção, Gustavo
Menezes, Paulo
Machine Learning
Lack of data on which to perform experimentation is a recurring issue in many areas of research, particularly in machine learning. The inability of most automated data mining techniques to be generalized to all types of data is inherently related with their dependency on those types which deems them ineffective against anything slightly different. Meta-heuristics are algorithms which attempt to optimize some solution independently of the type of data used, whilst classifiers or neural networks focus on feature extrapolation and dimensionality reduction to fit some model onto data arranged in a particular way. These two algorithmic fields encompass a group of characteristics which when combined are seemingly capable of achieving data mining regardless of how it is arranged. To this end, this work proposes a means of combining meta-heuristic methods with conventional classifiers and neural networks in order to perform automated data mining. Experiments on the MNIST dataset for handwritten digit recognition were performed and it was empirically observed that using a ground truth labeled dataset's validation accuracy is inadequate for correcting labels of other previously unseen data instances.
title Approaching Metaheuristic Deep Learning Combos for Automated Data Mining
topic Machine Learning
url https://arxiv.org/abs/2410.12435