Feature indexing and search optimization for enhancing the forensic analysis of mobile cloud environment

Ibrahim Ali Alnajjar, M. Mahmuddin
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引用次数: 3

Abstract

ABSTRACT The increased utilization of Mobile Cloud Computing (MCC) technology creates an opportunity for cybercrimes. Modeling the suitable methods for mobile cloud forensic examination and analysis is essential to improve the investigation performance. This paper incorporates data mining and optimization methods to enforce precise handling of the mobile cloud evidence in examination and analysis to improve the investigation performance. It enhances the analysis of the mobile cloud forensics with the incorporation of the evidence indexing, cross-referencing, and keyword searching as the sub-processes. The proposed Forensic Examination and analysis methodology using the Data mining and Optimization (FEDO) approach examines the key features of the evidence and indexes the pieces of evidence with key features to facilitate the investigation over the massive cloud evidence. By analyzing the temporal and geo-information, it applies cross-referencing to alleviate the evidence toward the case-specific evidence. The proposed methodology improves the searching capability of the investigation through the Linearly Decreasing Weight (LDW) strategy based Particle Swarm Optimization (PSO) algorithm. Thus, the experimental results demonstrate that the proposed forensic methodology yields better investigation performance in terms of accuracy of evidence detection.
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特征索引和搜索优化,增强移动云环境的取证分析
移动云计算(MCC)技术的日益普及为网络犯罪创造了机会。建模适合移动云取证检测分析的方法,是提高调查性能的关键。本文结合数据挖掘和优化方法,对移动云证据在检验分析中进行精准处理,提高侦查效能。将证据索引、交叉引用和关键字搜索作为子流程,增强了移动云取证的分析能力。采用数据挖掘和优化(FEDO)方法的法医检验和分析方法检查证据的关键特征,并对具有关键特征的证据片段进行索引,以促进对大量云证据的调查。通过对时间信息和地理信息的分析,采用交叉引用的方法来减轻证据对具体案件证据的依赖。该方法通过基于线性降权(LDW)策略的粒子群优化(PSO)算法提高了调查的搜索能力。因此,实验结果表明,所提出的法医方法在证据检测的准确性方面具有更好的调查性能。
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