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@JingweiToo
JingweiToo
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Jingwei Too JingweiToo

I am a research scientist. My major interests are data mining, metaheuristic, machine learning, signal processing, and artificial intelligence

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JingweiToo /README.md

Hi there πŸ‘‹ I am Too Jing Wei Mail


WordPress MATLAB LinkedIn Publons SCOPUS Google ResearchGate


Presently, I' m an active open-source contributor. You may check out my projects:

⚑ Jx-AFST : Advanced Feature Selection Toolbox

⚑ Jx-WFST : Wrapper Feature Selection Toolbox

⚑ Jx-FFST : Filter Feature Selection Toolbox

⚑ Jx-MLT : Machine Learning Toolbox

⚑ Jx-NNT : Neural Network Toolbox

⚑ Jx-DLT : Deep Learning Toolbox

⚑ Jx-EMGT : Electromyography Feature Extraction Toolbox

⚑ Jx-EEGT : Electroencephalogram Feature Extraction Toolbox

πŸ˜„ : Stats

Stats

Langs

🌱 : Trophy

jingweitoo

jingweitoo

Popular repositories Loading

  1. Wrapper-Feature-Selection-Toolbox-Python Wrapper-Feature-Selection-Toolbox-Python Public

    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 281 71

  2. Wrapper-Feature-Selection-Toolbox Wrapper-Feature-Selection-Toolbox Public

    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 181 38

  3. EMG-Feature-Extraction-Toolbox EMG-Feature-Extraction-Toolbox Public

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

    MATLAB 106 24

  4. EEG-Feature-Extraction-Toolbox EEG-Feature-Extraction-Toolbox Public

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

    MATLAB 89 13

  5. Binary-Grey-Wolf-Optimization-for-Feature-Selection Binary-Grey-Wolf-Optimization-for-Feature-Selection Public

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

    MATLAB 35 8

  6. Advanced-Feature-Selection-Toolbox Advanced-Feature-Selection-Toolbox Public

    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 32 14

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