• Stars
    star
    12
  • Rank 1,597,372 (Top 32 %)
  • Language
    MATLAB
  • License
    BSD 3-Clause "New...
  • Created over 4 years ago
  • Updated almost 4 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

The binary version of Harris Hawk Optimization (HHO), called Binary Harris Hawk Optimization (BHHO) is applied for feature selection tasks.

More Repositories

1

Wrapper-Feature-Selection-Toolbox-Python

This toolbox offers 13 wrapper feature selection methods (PSO, GA, GWO, HHO, BA, WOA, and etc.) with examples. It is simple and easy to implement.
Python
243
star
2

Wrapper-Feature-Selection-Toolbox

This toolbox offers more than 40 wrapper feature selection methods include PSO, GA, DE, ACO, GSA, and etc. They are simple and easy to implement.
MATLAB
164
star
3

EMG-Feature-Extraction-Toolbox

This toolbox offers 40 feature extraction methods (EMAV, EWL, MAV, WL, SSC, ZC, and etc.) for Electromyography (EMG) signals applications.
MATLAB
79
star
4

EEG-Feature-Extraction-Toolbox

This toolbox offers 30 types of EEG feature extraction methods (HA, HM, HC, and etc.) for Electroencephalogram (EEG) applications.
MATLAB
69
star
5

Binary-Grey-Wolf-Optimization-for-Feature-Selection

Demonstration on how binary grey wolf optimization (BGWO) applied in the feature selection task.
MATLAB
33
star
6

Advanced-Feature-Selection-Toolbox

This toolbox offers advanced feature selection tools. Several modifications, variants, enhancements, or improvements of algorithms such as GWO, FPA, SCA, PSO and SSA are provided.
Python
31
star
7

Whale-Optimization-Algorithm-for-Feature-Selection

Application of Whale Optimization Algorithm (WOA) in the feature selection tasks.
MATLAB
23
star
8

Machine-Learning-Toolbox

This toolbox offers 8 machine learning methods including KNN, SVM, DA, DT, and etc., which are simpler and easy to implement.
MATLAB
22
star
9

Filter-Feature-Selection-Toolbox

Simple, fast and ease of implementation. The filter feature selection methods include Relief-F, PCC, TV, and NCA.
MATLAB
21
star
10

Ant-Colony-Optimization-for-Feature-Selection

Implantation of ant colony optimization (ACO) without predetermined number of selected features in feature selection tasks.
MATLAB
11
star
11

Binary-Differential-Evolution-for-Feature-Selection

The binary version of Differential Evolution (DE), named as Binary Differential Evolution (BDE) is applied for feature selection tasks.
MATLAB
10
star
12

Sine-Cosine-Algorithm-for-Feature-Selection

Application of Sine Cosine Algorithm (SCA) in the feature selection tasks.
MATLAB
9
star
13

Neural-Network-Toolbox

This toolbox contains 6 types of neural networks, which is simple and easy to implement.
MATLAB
9
star
14

Salp-Swarm-Algorithm-for-Feature-Selection

Application of Salp Swarm Algorithm (SSA) in the feature selection tasks.
MATLAB
8
star
15

Equilibrium-Optimizer-for-Feature-Selection

Application of Equilibrium Optimizer (EO) in the feature selection tasks.
MATLAB
7
star
16

Binary-Particle-Swarm-Optimization-for-Feature-Selection

Simple algorithm shows how binary particle swarm optimization (BPSO) used in feature selection problem.
MATLAB
7
star
17

Particle-Swarm-Optimization-for-Feature-Selection

Application of Particle Swarm Optimization (PSO) in the feature selection tasks.
MATLAB
7
star
18

Henry-Gas-Solubility-Optimization-for-Feature-Selection

Application of Henry Gas Solubility Optimization (HGSO) in the feature selection tasks.
MATLAB
6
star
19

Binary-Dragonfly-Algorithm-for-Feature-Selection

Application of Binary Dragonfly Algorithm (BDA) in the feature selection tasks.
MATLAB
6
star
20

Genetic-Algorithm-for-Feature-Selection

Simple algorithm shows how the genetic algorithm (GA) used in the feature selection problem.
MATLAB
5
star
21

Ant-Colony-System-for-Feature-Selection

Application of ant colony optimization (ACO) for feature selection problems.
MATLAB
4
star
22

Deep-Learning-Toolbox-Python

This toolbox offers several deep learning methods, which are simple and easy to implement.
Python
4
star
23

Binary-Tree-Growth-Algorithm-for-Feature-Selection

A feature selection algorithm, named as Binary Tree Growth Algorithm (BTGA) is applied for feature selection tasks.
MATLAB
4
star
24

Atom-Search-Optimization-for-Feature-Selection

Application of Atom Search Optimization (ASO) in the feature selection tasks.
MATLAB
4
star
25

Deep-Learning-Toolbox

This toolbox offers convolution neural networks (CNN) using k-fold cross-validation, which are simple and easy to implement.
MATLAB
3
star
26

Binary-Atom-Search-Optimization-for-Feature-Selection

A new feature selection algorithm, named as Binary Atom Search Optimization (BASO) is applied for feature selection tasks.
MATLAB
3
star
27

Machine-Learning-Regression-Toolbox

This toolbox offers 7 machine learning methods for regression problems.
Python
2
star
28

Machine-Learning-Toolbox-Python

This toolbox offers 6 machine learning methods including KNN, SVM, LDA, DT, and etc., which are simpler and easy to implement.
Python
2
star
29

JingweiToo

1
star
30

Dimensionality-Reduction-Demonstration

Application of principal component analysis (PCA) for feature reduction.
MATLAB
1
star