% Benchmark data set
load ionosphere.mat;
% Set 20% data as validation set
ho = 0.2;
% Hold-out method
HO = cvpartition(label,'HoldOut',ho);
% Parameter setting
N = 10;
max_Iter = 100;
% Whale Optimization Algorithm
[sFeat,Sf,Nf,curve] = jWOA(feat,label,N,max_Iter,HO);
% Accuracy
Acc = jKNN(sFeat,label,HO);
fprintf('\n Accuracy: %g %%',Acc);
% Plot convergence curve
plot(1:max_Iter,curve);
xlabel('Number of Iterations');
ylabel('Fitness Value');
title('WOA'); grid on;
@article{too2021spatial,
title={Spatial bound whale optimization algorithm: an efficient high-dimensional feature selection approach},
author={Too, Jingwei and Mafarja, Majdi and Mirjalili, Seyedali},
journal={Neural Computing and Applications},
pages={1--22},
year={2021},
publisher={Springer}
}