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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. Stabilising Explainability Fragility in Cybersecurity AI: The Impact and Mitigation of Multicollinearity in Public Benchmark Datasets

    This paper introduces a novel metric, the Explanability Fragility Score, to quantify instability in AI explanations within cybersecurity intrusion detection systems. The research demonstrates that multicollinearity, a statistical issue with correlated features, can significantly inflate explanation variance and make feature importances non-identifiable. To address this, the paper proposes two mitigation methods, CAA-Filtering and SHARP, aimed at stabilizing AI explanations and improving trustworthiness in security-critical applications. AI

    IMPACT Introduces methods to improve the trustworthiness and reproducibility of AI explanations in security-critical systems.