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Updated: Apr 14, 2026

Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances
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Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances

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Adversarial Feature Selection Against Evasion Attacks.

Fei Zhang, Patrick P K Chan, Battista Biggio

    IEEE Transactions on Cybernetics
    |April 25, 2015
    PubMed
    Summary
    This summary is machine-generated.

    Feature selection can weaken machine learning security against evasion attacks. A new adversary-aware feature selection model enhances security by considering attacker strategies, improving detection of spam and malware.

    Related Experiment Videos

    Last Updated: Apr 14, 2026

    Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances
    07:35

    Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances

    Published on: October 11, 2018

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    Area of Science:

    • Computer Science
    • Machine Learning
    • Cybersecurity

    Background:

    • Machine learning is used in adversarial settings like spam and malware detection.
    • Security against evasion attacks, where data is manipulated at test time, is not fully understood.
    • Feature selection may negatively impact classifier security against evasion.

    Purpose of the Study:

    • Investigate the impact of feature selection on classifier security against evasion attacks.
    • Propose a novel adversary-aware feature selection model to enhance security.
    • Improve the robustness of machine learning models in adversarial environments.

    Main Methods:

    • Developed a novel adversary-aware feature selection model.
    • Incorporated assumptions on the adversary's data manipulation strategy.
    • Implemented an efficient, wrapper-based approach for feature selection.

    Main Results:

    • Classifier security can be worsened by standard feature selection.
    • The proposed adversary-aware feature selection model improves classifier security.
    • Experimental validation on spam and malware detection confirms the model's effectiveness.

    Conclusions:

    • Feature selection's impact on adversarial robustness requires careful consideration.
    • Adversary-aware feature selection offers a promising direction for enhancing machine learning security.
    • The proposed model effectively improves detection rates against evasion attacks.