题名 | Detecting Temporal Inconsistency in Biased Datasets for Android Malware Detection |
作者 | |
DOI | |
发表日期 | 2023
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会议名称 | SEP 11-15, 2023
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ISSN | 2151-0830
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ISBN | 979-8-3503-3033-5
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会议录名称 | |
页码 | 17-23
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会议日期 | 11-15 Sept. 2023
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会议地点 | Luxembourg, Luxembourg
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摘要 | Machine learning (ML) has exhibited great potential in Android malware detection. Yet, the reliability of these ML models, as well as the fairness of their evaluation, hinge significantly on the quality of the datasets used. A significant issue compromising these aspects is the presence of temporal inconsistencies within datasets, which could lead to overestimated detection performance. While previous research has acknowledged the impact of temporal inconsistencies, the proposed detection approaches often falter in accuracy and practicality. Previous studies have had limitations when it comes to dealing with complex cases of temporal inconsistencies. Additionally, their approaches require knowledge of a dataset's temporal attributes, which is often not realistic in real-world applications. In response to these challenges, we propose a novel ML-based approach to comprehensively and effectively detect temporal inconsistencies in Android malware datasets, regardless of the magnitude of these inconsistencies. Distinguishing itself from prior attempts, our approach accurately identifies inconsistencies in unknown datasets, without making any assumptions about their temporal attributes. Moreover, we introduce a new benchmark dataset of 78,000 diverse Android samples, spanning malware to benign samples from 2010 to 2022, for exploring temporal inconsistency. A rigorous evaluation of our approach using this dataset reveals its proficiency in managing temporal inconsistencies, achieving a remarkable 98.3% detection accuracy. We further validate the efficacy of our feature selection procedure and demonstrate the robustness of our approach when applied to unknown datasets. Collectively, our findings pioneer a novel performance standard in Android malware detection assessments, contributing to the enhancement of reliability in ML-based techniques. |
关键词 | |
学校署名 | 第一
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语种 | 英语
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相关链接 | [IEEE记录] |
收录类别 | |
WOS记录号 | WOS:001096603000005
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EI入藏号 | 20234915149978
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EI主题词 | Android (operating system)
; Chemical detection
; Mobile security
; Petroleum reservoir evaluation
; Quality control
|
EI分类号 | Petroleum Deposits : Development Operations:512.1.2
; Computer Software, Data Handling and Applications:723
; Data Processing and Image Processing:723.2
; Chemistry:801
; Quality Assurance and Control:913.3
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来源库 | IEEE
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全文链接 | https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=10298755 |
引用统计 |
被引频次[WOS]:1
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成果类型 | 会议论文 |
条目标识符 | http://sustech.caswiz.com/handle/2SGJ60CL/609971 |
专题 | 南方科技大学 |
作者单位 | 1.Southern University of Science and Technology 2.Monash University 3.Beihang University |
第一作者单位 | 南方科技大学 |
第一作者的第一单位 | 南方科技大学 |
推荐引用方式 GB/T 7714 |
Haonan Hu,Yue Liu,Yanjie Zhao,et al. Detecting Temporal Inconsistency in Biased Datasets for Android Malware Detection[C],2023:17-23.
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条目包含的文件 | 条目无相关文件。 |
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