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Golden lichtenberg algorithm: a fibonacci sequence approach applied to feature selection

Computational and technological advancements have led to an increase in data generation and storage capacity. Many annotated datasets have been used to train machine learning models for predictive tasks. Feature selection (FS) is a combinatorial binary optimization problem that arises from a need to...

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Published in:Neural computing & applications 2024-11, Vol.36 (32), p.20493-20511
Main Authors: Pereira, João Luiz Junho, Francisco, Matheus Brendon, Ma, Benedict Jun, Gomes, Guilherme Ferreira, Lorena, Ana Carolina
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Francisco, Matheus Brendon
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description Computational and technological advancements have led to an increase in data generation and storage capacity. Many annotated datasets have been used to train machine learning models for predictive tasks. Feature selection (FS) is a combinatorial binary optimization problem that arises from a need to reduce dataset dimensionality by finding the subset of features with maximum predictive accuracy. While different methodologies have been proposed, metaheuristics adapted to binary optimization have proven to be reliable and efficient techniques for FS. This paper applies the first and unique population-trajectory metaheuristic, the Lichtenberg algorithm (LA), and enhances it with a Fibonacci sequence to improve its exploration capabilities in FS. Substituting the random scales that controls the Lichtenberg figures' size and the population distribution in the original version by a sequence based on the golden ratio, a new optimal exploration–exploitation LF's size decay is presented. The new few hyperparameters golden Lichtenberg algorithm (GLA), LA, and eight other popular metaheuristics are then equipped with the v -shaped transfer function and associated with the K -nearest neighbor classifier in the search of the optimized feature subsets through a double cross-validation experiment method on 15 UCI machine learning repository datasets. The binary GLA selected reduced subsets of features, leading to the best predictive accuracy and fitness values at the lowest computational cost.
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subjects Accuracy
Algorithms
Artificial Intelligence
Combinatorial analysis
Computational Biology/Bioinformatics
Computational Science and Engineering
Computer Science
Computing costs
Data Mining and Knowledge Discovery
Datasets
Feature selection
Fibonacci numbers
Heuristic methods
Image Processing and Computer Vision
K-nearest neighbors algorithm
Machine learning
Optimization
Original Article
Population distribution
Probability and Statistics in Computer Science
Sequences
Storage capacity
Transfer functions
title Golden lichtenberg algorithm: a fibonacci sequence approach applied to feature selection
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