Blockchain-Integrated Advanced Persistent Threat Detection Using Optimized Deep Learning-Enabled Feature Fusion

Q4 Mathematics
V. Srinadh, B. Swaminathan, Ch. Vidyadhari
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引用次数: 0

Abstract

Through Advanced Persistent Threats (APTs), which can reveal data alteration, destruction, or Denial of Service attacks through the examples of exposed hardware and software, the information technology model advances. Moving Target (MTD) is a promising risk-reduction strategy that primarily relies on APTs by utilizing dynamic and randomization techniques on properties that are collaborated. Although there are various MTD approaches to implement the blind random mutation, it still produces better performance overhead as well as poor defense utility. Additionally, APT is a unique assault strategy that was typically developed by hacking groups to steal data or deactivate systems for enormous originalities and uniform countries. APT is a multi-stage, long-term representative, and it is difficult to identify attacks effectively using an outmoded approach. In this paper, Conditional Dingo Optimization Algorithm Deep Residual Network (CDOA-based DRN) is devised for APT detection. Moreover, correlation Tversky index-based similarity is designed for performing feature fusion. The hybrid optimization algorithm effectively increases the performance and reduces various real-world issues. Testing accuracy, True Positive Rate, and False Positive Rate of the newly developed CDOA-based DRN are 95.43%, 96.34%, and 91.43%, respectively, for better performance.
使用优化的深度学习功能融合的区块链集成高级持续威胁检测
通过高级持续威胁(APT),信息技术模型取得了进步,APT可以通过暴露的硬件和软件的例子来揭示数据更改、破坏或拒绝服务攻击。移动目标(MTD)是一种很有前途的风险降低策略,主要依靠APT,通过对协作属性使用动态和随机化技术。尽管有各种MTD方法来实现盲随机变异,但它仍然产生了更好的性能开销和较差的防御效用。此外,APT是一种独特的攻击策略,通常由黑客组织开发,用于窃取数据或停用庞大的原始国家和统一国家的系统。APT是一个多阶段、长期的代表,使用过时的方法很难有效识别攻击。本文设计了一种用于APT检测的条件丁戈优化算法——深度残差网络。此外,设计了基于相关性Tversky指数的相似度来进行特征融合。混合优化算法有效地提高了性能,减少了各种现实问题。新开发的基于CDOA的DRN的检测准确率、真阳性率和假阳性率分别为95.43%、96.34%和91.43%,性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Uncertain Systems
Journal of Uncertain Systems Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
39
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