A New Approach for Feature Subset Selection using Quantum Inspired Owl Search Algorithm

Feature subset selection is the approach of selecting the optimal feature subset for the classification task by removing irrelevant and redundant features. However, searching for the optimal feature subset is challenging due to its inherent exponential time complexity. To address the problem, metaheuristics are frequently used for finding the sub-optimal solution in a reasonable time constraint. In this paper, a Quantum Inspired Owl Search Algorithm (QIOSA) for feature subset selection is proposed. In this method, features are represented as quantum superposition states, and quantum rotation gate is used to accelerate the search towards an optimal set of features. Simulation experiments have done to evaluate the efficiency of the proposed approach compared to Binary Owl Search Algorithm (BOSA) proposed earlier by authors and other population-based feature selection techniques, including Binary Genetic Algorithm (BGA) and Binary Particle Swarm optimization (BPSO) with twelve publicly available benchmark datasets. The experimental results show that QIOSA improves classification accuracy and effectively reduces the number of features compared to other metaheuristic algorithms.

[1]  N. Mermin Quantum Computer Science: An Introduction , 2007 .

[2]  Mohamed Elhoseny,et al.  Feature selection based on artificial bee colony and gradient boosting decision tree , 2019, Appl. Soft Comput..

[3]  Jong-Hwan Kim,et al.  Quantum-inspired evolutionary algorithm for a class of combinatorial optimization , 2002, IEEE Trans. Evol. Comput..

[4]  Hossam Faris,et al.  An efficient binary Salp Swarm Algorithm with crossover scheme for feature selection problems , 2018, Knowl. Based Syst..

[5]  Majdi M. Mafarja,et al.  Hybrid Whale Optimization Algorithm with simulated annealing for feature selection , 2017, Neurocomputing.

[6]  Shih-Wei Lin,et al.  Particle swarm optimization for parameter determination and feature selection of support vector machines , 2008, Expert Syst. Appl..

[7]  Vikrant Bhateja,et al.  Deluge based Genetic Algorithm for feature selection , 2019, Evolutionary Intelligence.

[8]  Lee Gomes,et al.  Quantum computing: Both here and not here , 2018, IEEE Spectrum.

[9]  Madhav J. Nigam,et al.  Applications of quantum inspired computational intelligence: a survey , 2014, Artificial Intelligence Review.

[10]  Sankalap Arora,et al.  Binary butterfly optimization approaches for feature selection , 2019, Expert Syst. Appl..

[11]  Yang Yu,et al.  Subset Selection by Pareto Optimization , 2015, NIPS.

[12]  Hossam Faris,et al.  Binary grasshopper optimisation algorithm approaches for feature selection problems , 2019, Expert Syst. Appl..

[13]  Nor Ashidi Mat Isa,et al.  A GA-based feature selection and parameter optimization of an ANN in diagnosing breast cancer , 2015, Pattern Analysis and Applications.

[14]  Chao Feng,et al.  Unsupervised Feature Selection by Pareto Optimization , 2019, AAAI.

[15]  Hossein Nezamabadi-pour,et al.  An advanced ACO algorithm for feature subset selection , 2015, Neurocomputing.

[16]  Ankit Pat,et al.  An adaptive quantum-inspired differential evolution algorithm for 0–1 knapsack problem , 2010, 2010 Second World Congress on Nature and Biologically Inspired Computing (NaBIC).

[17]  Vijander Singh,et al.  Owl search algorithm: A novel nature-inspired heuristic paradigm for global optimization , 2018, J. Intell. Fuzzy Syst..

[18]  Ling Zheng,et al.  Self-adjusting harmony search-based feature selection , 2014, Soft Computing.

[19]  Shulin Wang,et al.  Feature selection in machine learning: A new perspective , 2018, Neurocomputing.

[20]  Aboul Ella Hassanien,et al.  Chaotic dragonfly algorithm: an improved metaheuristic algorithm for feature selection , 2018, Applied Intelligence.

[21]  Huan Liu,et al.  Feature Selection for Clustering: A Review , 2018, Data Clustering: Algorithms and Applications.

[22]  Aboul Ella Hassanien,et al.  Feature selection via a novel chaotic crow search algorithm , 2017, Neural Computing and Applications.

[23]  Qiang Shen,et al.  Nature inspired feature selection meta-heuristics , 2015, Artificial Intelligence Review.

[24]  Yueh-Min Huang,et al.  A quantum-inspired Tabu search algorithm for solving combinatorial optimization problems , 2013, Soft Computing.

[25]  Siba Sankar Mahapatra,et al.  A quantum behaved particle swarm optimization for flexible job shop scheduling , 2016, Comput. Ind. Eng..

[26]  Basabi Chakraborty,et al.  Binary Owl Search Algorithm for Feature Subset Selection , 2019, 2019 IEEE 10th International Conference on Awareness Science and Technology (iCAST).

[27]  Aboul Ella Hassanien,et al.  Binary ant lion approaches for feature selection , 2016, Neurocomputing.

[28]  Nizamettin Aydin,et al.  Binary black hole algorithm for feature selection and classification on biological data , 2017, Appl. Soft Comput..

[29]  Aboul Ella Hassanien,et al.  Modified cuckoo search algorithm with rough sets for feature selection , 2018, Neural Computing and Applications.