Moutaz Alazab, Ruba Abu Khurma, David Camacho, Alejandro Martín
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This constitutes a formidable challenge due to the dynamic nature of ransomware, which renders traditional security protocols inadequate, as they might have a high false alarm rate and exert significant processing demands on mobile devices that are restricted by limited battery life, CPU, and memory. This paper proposes a novel intelligent method for detecting ransomware that is based on a hybrid multi-solution binary JAYA algorithm with a single-solution simulated annealing (SA). The primary objective is to leverage the exploitation power of SA in supporting the exploration power of the binary JAYA algorithm. This approach results in a better balance between global and local search milestones. The empirical results of our research demonstrate the superiority of the proposed SMO-BJAYA-SA-SVM method over other algorithms based on the evaluation measures used. The proposed method achieved an accuracy rate of 98.7%, a precision of 98.6%, a recall of 98.7%, and an F1 score of 98.6%. 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引用次数: 0
摘要
勒索软件是一种对智能手机安全构成严重威胁的重大安全威胁,其对便携式设备的影响已在许多研究论文中进行了广泛讨论。近来,这种威胁显著增加,给个人和组织都造成了巨大损失。各种形式的勒索软件不断涌现并广泛传播,严重阻碍了可靠安全措施的有效实施。由于勒索软件的动态特性,传统的安全协议可能会有较高的误报率,并对受限于电池寿命、CPU 和内存的移动设备提出了大量的处理要求,这就构成了一个巨大的挑战。本文提出了一种新型智能方法来检测勒索软件,该方法基于混合多解二进制 JAYA 算法和单解模拟退火(SA)。其主要目的是利用 SA 的开发能力来支持二进制 JAYA 算法的探索能力。这种方法能更好地平衡全局和局部搜索里程碑。我们的研究实证结果表明,根据所使用的评估指标,所提出的 SMO-BJAYA-SA-SVM 方法优于其他算法。提出的方法达到了 98.7% 的准确率、98.6% 的精确率、98.7% 的召回率和 98.6% 的 F1 分数。因此,我们认为我们的方法是检测便携式设备上勒索软件的有效方法。它有望为这一日益严重的安全威胁提供更可靠、更高效的解决方案。
Enhanced Android Ransomware Detection Through Hybrid Simultaneous Swarm-Based Optimization
Ransomware is a significant security threat that poses a serious risk to the security of smartphones, and its impact on portable devices has been extensively discussed in a number of research papers. In recent times, this threat has witnessed a significant increase, causing substantial losses for both individuals and organizations. The emergence and widespread occurrence of diverse forms of ransomware present a significant impediment to the pursuit of reliable security measures that can effectively combat them. This constitutes a formidable challenge due to the dynamic nature of ransomware, which renders traditional security protocols inadequate, as they might have a high false alarm rate and exert significant processing demands on mobile devices that are restricted by limited battery life, CPU, and memory. This paper proposes a novel intelligent method for detecting ransomware that is based on a hybrid multi-solution binary JAYA algorithm with a single-solution simulated annealing (SA). The primary objective is to leverage the exploitation power of SA in supporting the exploration power of the binary JAYA algorithm. This approach results in a better balance between global and local search milestones. The empirical results of our research demonstrate the superiority of the proposed SMO-BJAYA-SA-SVM method over other algorithms based on the evaluation measures used. The proposed method achieved an accuracy rate of 98.7%, a precision of 98.6%, a recall of 98.7%, and an F1 score of 98.6%. Therefore, we believe that our approach is an effective method for detecting ransomware on portable devices. It has the potential to provide a more reliable and efficient solution to this growing security threat.
期刊介绍:
Cognitive Computation is an international, peer-reviewed, interdisciplinary journal that publishes cutting-edge articles describing original basic and applied work involving biologically-inspired computational accounts of all aspects of natural and artificial cognitive systems. It provides a new platform for the dissemination of research, current practices and future trends in the emerging discipline of cognitive computation that bridges the gap between life sciences, social sciences, engineering, physical and mathematical sciences, and humanities.