2019
DOI: 10.7494/csci.2019.20.3.3285
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Adapting Text Categorization for Manifest based Android Malware Detection

Abstract: Malware is a shorthand of malicious software that are created with the intent of damaging hardware systems, stealing data, and causing a mess to make money, protest something, or even make war between governments. Malware is often spread by downloading some applications for your hardware from some download platforms. It is highly probable to face with a malware while you try to load some applications for your smart phones nowadays. Therefore it is very important that some tools are needed to detect malware bef… Show more

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Cited by 6 publications
(5 citation statements)
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References 41 publications
(87 reference statements)
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“…Also, ContagioDump, VirusTotal, and VirusShare were also employed for malware samples. However, in this SLR study, VirusShare [68], [63], [76], [86], [97], [102], [107], [117], [120], [58], [116] is found as the most popular dataset used in their experiments, followed by DREBIN, [67], [72], [80], [87], [88], [108], [109], [62], [64] Malware Genome Project, [114], [115], [64], [74], [112], [118], Google Play Store, [64], [74], [85], [115], [114] and many more type of datasets as shown in TABLE 14 in Appendix A.…”
Section: ) Classification By Datasetmentioning
confidence: 96%
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“…Also, ContagioDump, VirusTotal, and VirusShare were also employed for malware samples. However, in this SLR study, VirusShare [68], [63], [76], [86], [97], [102], [107], [117], [120], [58], [116] is found as the most popular dataset used in their experiments, followed by DREBIN, [67], [72], [80], [87], [88], [108], [109], [62], [64] Malware Genome Project, [114], [115], [64], [74], [112], [118], Google Play Store, [64], [74], [85], [115], [114] and many more type of datasets as shown in TABLE 14 in Appendix A.…”
Section: ) Classification By Datasetmentioning
confidence: 96%
“…Meta-Heuristic [30] 81.23% -99.91% NF [87], [92], [93] 69.44% -91% Bayesian [32], [49], [66], [67], [88] 80% -> 97% Gaussian [32], [36], [52], [70], [94] 80% -> 91.1% KNN [28], [29], [37], [48], [51], [55], [60], [69], [71], [72], [73], [74], [85], [96], [99], [100] 80.50% -99.2% N-grams [30], [31], [42], [43], [44], [56], [62], [63], [76], [77], [98] 81.23% -100% Meanwhile, each algorithm's average detection accuracy rate has been obtained, and SVM continues to perform well, with a 90.55% accuracy rate. N-grams have the greatest average detection accuracy rate of 97.80%, followed by KNN 92.72%, DT 92.23%, K-Means 89%, Bayesian 89.08%, Gaussian 87.42%, NB 86.45%, NF 83.48%, and Meta-Heuristic with 81.23%.…”
Section: Related Workmentioning
confidence: 99%
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