XAI-PDF:利用基于 SHAP 的特征工程进行恶意 PDF 检测的稳健框架

Mustafa Al-Fayoumi, Q. Abu Al-haija, Rakan Armoush, Christine Amareen
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引用次数: 0

摘要

随着用于网络攻击的恶意 PDF 文件数量不断增加,开发高效、准确的分类器来检测和预防这些威胁至关重要。机器学习(ML)模型已成功检测出恶意 PDF 文件。本文介绍了 XAI-PDF,这是一种高效的恶意 PDF 检测系统,旨在提高准确性并最大限度地减少现代数据集(Evasive-PDFMal2022 数据集)上的决策时间。所提出的方法通过采用以 Shapley Additive Explanations (SHAP) 为指导的特征工程来优化恶意 PDF 分类器的性能。特别是,模型开发方法包括四个阶段:数据准备、模型构建、模型的可解释性和衍生特征。利用 SHAP 值的可解释性,确定关键特征并生成新特征,从而改进分类模型,展示可解释人工智能技术在提高模型性能方面的有效性。我们实施了各种可解释的 ML 模型,其中轻量级梯度提升机(LGBM)的表现优于其他分类器。可解释人工智能(XAI)全局代理模型为 LGBM 预测生成了解释。XAI-PDF 与基线方法的实验比较显示,XAI-PDF 在实现更高的准确度、精确度和 F1 分数以及最低的假阳性(FP)和假阴性(FN)率(分别为 99.9%、100%、99.89%、0.000 和 0.002)方面更具优势。此外,XAI-PDF 的每条预测记录仅需 1.36 毫秒,这表明与最先进的方法相比,XAI-PDF 在检测躲避性恶意 PDF 文件方面具有更强的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
XAI-PDF: A Robust Framework for Malicious PDF Detection Leveraging SHAP-Based Feature Engineering
With the increasing number of malicious PDF files used for cyberattacks, it is essential to develop efficient and accurate classifiers to detect and prevent these threats. Machine Learning (ML) models have successfully detected malicious PDF files. This paper presents XAI-PDF, an efficient system for malicious PDF detection designed to enhance accuracy and minimize decision-making time on a modern dataset, the Evasive-PDFMal2022 dataset. The proposed method optimizes malicious PDF classifier performance by employing feature engineering guided by Shapley Additive Explanations (SHAP). Particularly, the model development approach comprises four phases: data preparation, model building, explainability of the models, and derived features. Utilizing the interpretability of SHAP values, crucial features are identified, and new ones are generated, resulting in an improved classification model that showcases the effectiveness of interpretable AI techniques in enhancing model performance. Various interpretable ML models were implemented, with the Lightweight Gradient Boosting Machine (LGBM) outperforming other classifiers. The Explainable Artificial Intelligence (XAI) global surrogate model generated explanations for LGBM predictions. Experimental comparisons of XAI-PDF with baseline methods revealed its superiority in achieving higher accuracy, precision, and F1-scores with minimal False Positive (FP) and False Negative (FN) rates (99.9%, 100%, 99.89%,0.000, and 0.002, respectively). Additionally, XAI-PDF requires only 1.36 milliseconds per record for predictions, demonstrating increased resilience in detecting evasive malicious PDF files compared to state-of-the-art methods
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