Feature selection is crucial for high-dimensional sensor and biomedical data because it reduces
redundancy, improves generalization, and supports interpretable biomarker discovery. In this
study, we propose a Binary Chaos-Enhanced Newton-Raphson-Based Optimizer (BCNRBO)
for wrapper-based feature selection. The method integrates chaotic search dynamics, a
Hamming-distance-based dynamic potential mechanism, and a new binary transfer function
to enhance exploration and prevent premature convergence. BCNRBO was evaluated on
26 benchmark datasets using K-nearest neighbor (KNN), decision tree (DT), and Naive
Bayes (NB) classifiers. The proposed method consistently achieved competitive or superior
classification performance while selecting fewer features than competing binary metaheuristic
methods. In particular, BCNRBO obtained the best feature reduction in 15 datasets with
DT and 14 datasets with NB, and it achieved top Friedman ranks in 8 DT datasets and 9
NB datasets. Statistical tests confirmed significant improvements over competing methods
in most pairwise comparisons. These results suggest that BCNRBO is a promising feature-
selection strategy for sensor-derived biomedical and neurorehabilitation data, where compact
and reliable digital biomarkers are needed.