调整 k 近邻中的 k 值以检测恶意软件

Mosleh M. Abualhaj, A. Abu-Shareha, Qusai Y. Shambour, S. Al-Khatib, Mohammad O. Hiari
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引用次数: 0

摘要

恶意软件(也称为恶意软件)对计算机网络、用户隐私和用户系统构成严重威胁。有效的网络安全取决于对恶意软件的正确检测和分类。为了提高其有效性,本研究将 K-Nearest Neighbors (KNN) 方法系统地应用于恶意软件检测任务中。本研究探讨了邻居数(K)参数对 KNN 性能的影响。将使用 MalMem-2022 恶意软件数据集和相关评估标准(如准确率、精确度、召回率和 F1 分数)来评估所建议技术的功效。实验通过比较各种参数设置的性能,评估参数调整如何影响恶意软件检测的准确性。研究结果表明,精心的参数调整大大提高了 KNN 方法的恶意软件检测能力。这项研究还凸显了参数调整 KNN 作为实际环境中恶意软件检测的有用工具的潜力,可以迅速准确地识别恶意软件。
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Tuning the k value in k-nearest neighbors for malware detection
Malicious software, also referred to as malware, poses a serious threat to computer networks, user privacy, and user systems. Effective cybersecurity depends on the correct detection and classification of malware. In order to improve its effectiveness, the K-Nearest Neighbors (KNN) method is applied systematically in this study to the task of malware detection. The study investigates the effect of the number of neighbors (K) parameter on the KNN's performance. MalMem-2022 malware datasets and relevant evaluation criteria like accuracy, precision, recall, and F1-score will be used to assess the efficacy of the suggested technique. The experiments evaluate how parameter tuning affects the accuracy of malware detection by comparing the performance of various parameter setups. The study findings show that careful parameter adjustment considerably boosts the KNN method's malware detection capability. The research also highlights the potential of KNN with parameter adjustment as a useful tool for malware detection in real-world circumstances, allowing for prompt and precise identification of malware.
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