Skip to main content
Erschienen in: The Journal of Supercomputing 8/2021

18.01.2021

HybriDroid: an empirical analysis on effective malware detection model developed using ensemble methods

verfasst von: Arvind Mahindru, A. L. Sangal

Erschienen in: The Journal of Supercomputing | Ausgabe 8/2021

Einloggen

Aktivieren Sie unsere intelligente Suche, um passende Fachinhalte oder Patente zu finden.

search-config
loading …

Abstract

Malware detection from the smartphone has become a challenging issue for academicians and researchers. In this research paper, we applied five distinct machine learning algorithms and three different ensemble methods to develop a model for detecting malware from an Android-based smartphone. In this study, we proposed a framework that helps in selecting the right sets of the feature with an aim to improve the performance of the malware detection models. The proposed malware detection framework is then validated by considering two distinct performance parameters, i.e., accuracy and F-measure as a benchmark to detect malware from real-world apps. We performed an empirical study on thirty different categories of Android apps. The experimental data set consists of 1,94,659 benign apps and 67,538 malware apps that are collected from different promised repositories. Empirical results reveal that the models developed by using the proposed feature selection framework are able to detect more malware-infected apps when compared to all extracted feature sets. Moreover, the malware detection model build by using nonlinear ensemble decision tree forest (NDTF) approach is achieved a detection rate of 98.8%. In addition to that, the proposed malware detection framework is more effective in detecting malware-infected apps as compared to different anti-virus scanners and different frameworks or approaches developed in the literature.

Sie haben noch keine Lizenz? Dann Informieren Sie sich jetzt über unsere Produkte:

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Fußnoten
Literatur
1.
Zurück zum Zitat Allix K, Bissyandé TF, Jérome Q, Klein J, Traon YL et al (2016) Empirical assessment of machine learning-based malware detectors for android. Empir Softw Eng 21(1):183–211CrossRef Allix K, Bissyandé TF, Jérome Q, Klein J, Traon YL et al (2016) Empirical assessment of machine learning-based malware detectors for android. Empir Softw Eng 21(1):183–211CrossRef
2.
Zurück zum Zitat Alzaylaee MK, Yerima SY, Sezer S (2020) Dl-droid: deep learning based android malware detection using real devices. Comput Secur 89:101663CrossRef Alzaylaee MK, Yerima SY, Sezer S (2020) Dl-droid: deep learning based android malware detection using real devices. Comput Secur 89:101663CrossRef
3.
Zurück zum Zitat Arp D, Spreitzenbarth M, Hubner M, Gascon H, Rieck K, Siemens C (2014) Drebin: effective and explainable detection of android malware in your pocket. In: Ndss, vol 14, pp 23–26 Arp D, Spreitzenbarth M, Hubner M, Gascon H, Rieck K, Siemens C (2014) Drebin: effective and explainable detection of android malware in your pocket. In: Ndss, vol 14, pp 23–26
4.
Zurück zum Zitat Azmoodeh A, Dehghantanha A, Choo KKR (2018) Robust malware detection for internet of (battlefield) things devices using deep eigenspace learning. IEEE Trans Sustain Comput 4(1):88–95CrossRef Azmoodeh A, Dehghantanha A, Choo KKR (2018) Robust malware detection for internet of (battlefield) things devices using deep eigenspace learning. IEEE Trans Sustain Comput 4(1):88–95CrossRef
5.
Zurück zum Zitat Badhani S, Muttoo SK (2019) Android malware detection using code graphs. In: Kapur P et al (eds) System Performance and management analytics. Springer, Singapore, pp 203–215CrossRef Badhani S, Muttoo SK (2019) Android malware detection using code graphs. In: Kapur P et al (eds) System Performance and management analytics. Springer, Singapore, pp 203–215CrossRef
6.
Zurück zum Zitat Battiti R (1992) First- and second-order methods for learning: between steepest descent and newton’s method. Neural Comput 4(2):141–166CrossRef Battiti R (1992) First- and second-order methods for learning: between steepest descent and newton’s method. Neural Comput 4(2):141–166CrossRef
8.
Zurück zum Zitat Burguera I, Zurutuza U, Nadjm-Tehrani S (2011) Crowdroid: behavior-based malware detection system for android. In: Proceedings of the 1st ACM Workshop on Security and Privacy in Smartphones and Mobile Devices, pp 15–26 Burguera I, Zurutuza U, Nadjm-Tehrani S (2011) Crowdroid: behavior-based malware detection system for android. In: Proceedings of the 1st ACM Workshop on Security and Privacy in Smartphones and Mobile Devices, pp 15–26
9.
Zurück zum Zitat Chen KZ, Johnson NM, D’Silva V, Dai S, MacNamara K, Magrino TR, Wu EX, Rinard M, Song DX (2013) Contextual policy enforcement in android applications with permission event graphs. In: NDSS, p 234 Chen KZ, Johnson NM, D’Silva V, Dai S, MacNamara K, Magrino TR, Wu EX, Rinard M, Song DX (2013) Contextual policy enforcement in android applications with permission event graphs. In: NDSS, p 234
10.
Zurück zum Zitat Chidamber SR, Kemerer CF (1991) Towards a metrics suite for object oriented design. In: Conference Proceedings on Object-Oriented Programming Systems, Languages, and Applications, pp 197–211 Chidamber SR, Kemerer CF (1991) Towards a metrics suite for object oriented design. In: Conference Proceedings on Object-Oriented Programming Systems, Languages, and Applications, pp 197–211
11.
Zurück zum Zitat Desnos A et al. (2013) Androguard-reverse engineering, malware and goodware analysis of android applications. URL code google com/p/androguard 153 Desnos A et al. (2013) Androguard-reverse engineering, malware and goodware analysis of android applications. URL code google com/p/androguard 153
12.
Zurück zum Zitat Dini G, Martinelli F, Saracino A, Sgandurra D (2012) Madam: a multi-level anomaly detector for android malware. In: International Conference on Mathematical Methods, Models, and Architectures for Computer Network Security. Springer, pp 240–253 Dini G, Martinelli F, Saracino A, Sgandurra D (2012) Madam: a multi-level anomaly detector for android malware. In: International Conference on Mathematical Methods, Models, and Architectures for Computer Network Security. Springer, pp 240–253
13.
Zurück zum Zitat Enck W, Gilbert P, Han S, Tendulkar V, Chun BG, Cox LP, Jung J, McDaniel P, Sheth AN (2014) Taintdroid: an information-flow tracking system for realtime privacy monitoring on smartphones. ACM Trans Comput Syst 32(2):1–29CrossRef Enck W, Gilbert P, Han S, Tendulkar V, Chun BG, Cox LP, Jung J, McDaniel P, Sheth AN (2014) Taintdroid: an information-flow tracking system for realtime privacy monitoring on smartphones. ACM Trans Comput Syst 32(2):1–29CrossRef
14.
Zurück zum Zitat Faruki P, Ganmoor V, Laxmi V, Gaur MS, Bharmal A (2013) Androsimilar: robust statistical feature signature for android malware detection. In: Proceedings of the 6th International Conference on Security of Information and Networks, pp 152–159 Faruki P, Ganmoor V, Laxmi V, Gaur MS, Bharmal A (2013) Androsimilar: robust statistical feature signature for android malware detection. In: Proceedings of the 6th International Conference on Security of Information and Networks, pp 152–159
15.
Zurück zum Zitat Fereidooni H, Conti M, Yao D, Sperduti A (2016) Anastasia: android malware detection using static analysis of applications. In: 2016 8th IFIP International Conference on New Technologies, Mobility and Security (NTMS). IEEE, pp 1–5 Fereidooni H, Conti M, Yao D, Sperduti A (2016) Anastasia: android malware detection using static analysis of applications. In: 2016 8th IFIP International Conference on New Technologies, Mobility and Security (NTMS). IEEE, pp 1–5
16.
Zurück zum Zitat Gonzalez H, Stakhanova N, Ghorbani AA (2014) Droidkin: lightweight detection of android apps similarity. In: International Conference on Security and Privacy in Communication Networks. Springer, pp 436–453 Gonzalez H, Stakhanova N, Ghorbani AA (2014) Droidkin: lightweight detection of android apps similarity. In: International Conference on Security and Privacy in Communication Networks. Springer, pp 436–453
17.
Zurück zum Zitat Horowitz JL, Savin N (2001) Binary response models: logits, probits and semiparametrics. J Econ Perspect 15(4):43–56CrossRef Horowitz JL, Savin N (2001) Binary response models: logits, probits and semiparametrics. J Econ Perspect 15(4):43–56CrossRef
18.
Zurück zum Zitat Hou S, Ye Y, Song Y, Abdulhayoglu M (2017) Hindroid: an intelligent android malware detection system based on structured heterogeneous information network. In: Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp 1507–1515 Hou S, Ye Y, Song Y, Abdulhayoglu M (2017) Hindroid: an intelligent android malware detection system based on structured heterogeneous information network. In: Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp 1507–1515
19.
Zurück zum Zitat Idrees F, Rajarajan M, Conti M, Chen TM, Rahulamathavan Y (2017) Pindroid: a novel android malware detection system using ensemble learning methods. Comput Secur 68:36–46CrossRef Idrees F, Rajarajan M, Conti M, Chen TM, Rahulamathavan Y (2017) Pindroid: a novel android malware detection system using ensemble learning methods. Comput Secur 68:36–46CrossRef
20.
Zurück zum Zitat Kadir AFA, Stakhanova N, Ghorbani AA (2015) Android botnets: what urls are telling us. In: International Conference on Network and System Security. Springer, pp 78–91 Kadir AFA, Stakhanova N, Ghorbani AA (2015) Android botnets: what urls are telling us. In: International Conference on Network and System Security. Springer, pp 78–91
21.
Zurück zum Zitat Karbab EB, Debbabi M, Derhab A, Mouheb D (2018) Maldozer: automatic framework for android malware detection using deep learning. Digit Investig 24:S48–S59CrossRef Karbab EB, Debbabi M, Derhab A, Mouheb D (2018) Maldozer: automatic framework for android malware detection using deep learning. Digit Investig 24:S48–S59CrossRef
22.
Zurück zum Zitat Kaur J, Singh S, Kahlon KS, Bassi P (2010) Neural network: a novel technique for software effort estimation. Int J Comput Theory Eng 2(1):17CrossRef Kaur J, Singh S, Kahlon KS, Bassi P (2010) Neural network: a novel technique for software effort estimation. Int J Comput Theory Eng 2(1):17CrossRef
23.
Zurück zum Zitat Kothari CR (2004) Research methodology: methods and techniques. New Age International, New Delhi Kothari CR (2004) Research methodology: methods and techniques. New Age International, New Delhi
24.
Zurück zum Zitat Kumar L, Hota C, Mahindru A, Neti LBM (2019) Android malware prediction using extreme learning machine with different kernel functions. In: Proceedings of the Asian Internet Engineering Conference, pp 33–40 Kumar L, Hota C, Mahindru A, Neti LBM (2019) Android malware prediction using extreme learning machine with different kernel functions. In: Proceedings of the Asian Internet Engineering Conference, pp 33–40
25.
Zurück zum Zitat Lashkari AH, Kadir AFA, Taheri L, Ghorbani AA (2018) Toward developing a systematic approach to generate benchmark android malware datasets and classification. In: 2018 International Carnahan Conference on Security Technology (ICCST). IEEE, pp 1–7 Lashkari AH, Kadir AFA, Taheri L, Ghorbani AA (2018) Toward developing a systematic approach to generate benchmark android malware datasets and classification. In: 2018 International Carnahan Conference on Security Technology (ICCST). IEEE, pp 1–7
26.
Zurück zum Zitat Lee WY, Saxe J, Harang R (2019) Seqdroid: obfuscated android malware detection using stacked convolutional and recurrent neural networks. In: Alazab M, Tang M (eds) Deep learning applications for cyber security. Springer, Cham, pp 197–210CrossRef Lee WY, Saxe J, Harang R (2019) Seqdroid: obfuscated android malware detection using stacked convolutional and recurrent neural networks. In: Alazab M, Tang M (eds) Deep learning applications for cyber security. Springer, Cham, pp 197–210CrossRef
27.
Zurück zum Zitat Lindorfer M, Neugschwandtner M, Weichselbaum L, Fratantonio Y, Veen VVD, Platzer C (2014) Andrubis–1,000,000 apps later: a view on current android malware behaviors. In: 2014 Third International Workshop on Building Analysis Datasets and Gathering Experience Returns for Security (BADGERS). IEEE, pp 3–17 Lindorfer M, Neugschwandtner M, Weichselbaum L, Fratantonio Y, Veen VVD, Platzer C (2014) Andrubis–1,000,000 apps later: a view on current android malware behaviors. In: 2014 Third International Workshop on Building Analysis Datasets and Gathering Experience Returns for Security (BADGERS). IEEE, pp 3–17
28.
Zurück zum Zitat Mahindru A, Sangal A (2019) Deepdroid: feature selection approach to detect android malware using deep learning. In: 2019 IEEE 10th International Conference on Software Engineering and Service Science (ICSESS). IEEE, pp 16–19 Mahindru A, Sangal A (2019) Deepdroid: feature selection approach to detect android malware using deep learning. In: 2019 IEEE 10th International Conference on Software Engineering and Service Science (ICSESS). IEEE, pp 16–19
29.
Zurück zum Zitat Mahindru A, Sangal A (2020a) Dldroid: feature selection based malware detection framework for android apps developed during covid-19. Int J Emerg Technol 11(3):516–525 Mahindru A, Sangal A (2020a) Dldroid: feature selection based malware detection framework for android apps developed during covid-19. Int J Emerg Technol 11(3):516–525
30.
Zurück zum Zitat Mahindru A, Sangal A (2020b) Feature-based semi-supervised learning to detect malware from android. In: Satapathy et al. (eds) Automated software engineering: a deep learning-based approach. Springer, pp 93–118 Mahindru A, Sangal A (2020b) Feature-based semi-supervised learning to detect malware from android. In: Satapathy et al. (eds) Automated software engineering: a deep learning-based approach. Springer, pp 93–118
31.
Zurück zum Zitat Mahindru A, Sangal A (2020c) Gadroid: a framework for malware detection from android by using genetic algorithm as feature selection approach. Int J Adv Sci Technol 29(5):5532–5543 Mahindru A, Sangal A (2020c) Gadroid: a framework for malware detection from android by using genetic algorithm as feature selection approach. Int J Adv Sci Technol 29(5):5532–5543
33.
Zurück zum Zitat Mahindru A, Sangal A (2020e) Parudroid: validation of android malware detection dataset. J Cybersecur Inf Manag 3(2):42–52 Mahindru A, Sangal A (2020e) Parudroid: validation of android malware detection dataset. J Cybersecur Inf Manag 3(2):42–52
34.
Zurück zum Zitat Mahindru A, Sangal A (2020f) Perbdroid: effective malware detection model developed using machine learning classification techniques. In: Singh J et al (eds) A journey towards bio-inspired techniques in software engineering. Springer, Berlin, pp 103–139CrossRef Mahindru A, Sangal A (2020f) Perbdroid: effective malware detection model developed using machine learning classification techniques. In: Singh J et al (eds) A journey towards bio-inspired techniques in software engineering. Springer, Berlin, pp 103–139CrossRef
37.
Zurück zum Zitat Mahindru A, Singh P (2017) Dynamic permissions based android malware detection using machine learning techniques. In: Proceedings of the 10th Innovations in Software Engineering Conference, pp 202–210 Mahindru A, Singh P (2017) Dynamic permissions based android malware detection using machine learning techniques. In: Proceedings of the 10th Innovations in Software Engineering Conference, pp 202–210
38.
Zurück zum Zitat Mariconti E, Onwuzurike L, Andriotis P, De Cristofaro E, Ross G, Stringhini G (2016) Mamadroid: detecting android malware by building Markov chains of behavioral models. arXiv:161204433 Mariconti E, Onwuzurike L, Andriotis P, De Cristofaro E, Ross G, Stringhini G (2016) Mamadroid: detecting android malware by building Markov chains of behavioral models. arXiv:​161204433
39.
Zurück zum Zitat Martín A, Menéndez HD, Camacho D (2017) Mocdroid: multi-objective evolutionary classifier for android malware detection. Soft Comput 21(24):7405–7415CrossRef Martín A, Menéndez HD, Camacho D (2017) Mocdroid: multi-objective evolutionary classifier for android malware detection. Soft Comput 21(24):7405–7415CrossRef
40.
Zurück zum Zitat Mas’ud MZ, Sahib S, Abdollah MF, Selamat SR, Yusof R (2014) Analysis of features selection and machine learning classifier in android malware detection. In: 2014 International Conference on Information Science & Applications (ICISA). IEEE, pp 1–5 Mas’ud MZ, Sahib S, Abdollah MF, Selamat SR, Yusof R (2014) Analysis of features selection and machine learning classifier in android malware detection. In: 2014 International Conference on Information Science & Applications (ICISA). IEEE, pp 1–5
41.
Zurück zum Zitat McLaughlin N, del Rincon JM, Kang B, Yerima S, Miller P, Sezer S, Safaei Y, Trickel E, Zhao Z, Doupé A et al (2017) Deep android malware detection. In: Proceedings of the Seventh ACM on Conference on Data and Application Security and Privacy, pp 301–308 McLaughlin N, del Rincon JM, Kang B, Yerima S, Miller P, Sezer S, Safaei Y, Trickel E, Zhao Z, Doupé A et al (2017) Deep android malware detection. In: Proceedings of the Seventh ACM on Conference on Data and Application Security and Privacy, pp 301–308
42.
Zurück zum Zitat Narayanan A, Chandramohan M, Chen L, Liu Y (2018) A multi-view context-aware approach to android malware detection and malicious code localization. Empir Softw Eng 23(3):1222–1274CrossRef Narayanan A, Chandramohan M, Chen L, Liu Y (2018) A multi-view context-aware approach to android malware detection and malicious code localization. Empir Softw Eng 23(3):1222–1274CrossRef
43.
Zurück zum Zitat Narudin FA, Feizollah A, Anuar NB, Gani A (2016) Evaluation of machine learning classifiers for mobile malware detection. Soft Comput 20(1):343–357CrossRef Narudin FA, Feizollah A, Anuar NB, Gani A (2016) Evaluation of machine learning classifiers for mobile malware detection. Soft Comput 20(1):343–357CrossRef
44.
Zurück zum Zitat Saracino A, Sgandurra D, Dini G, Martinelli F (2016) Madam: effective and efficient behavior-based android malware detection and prevention. IEEE Trans Dependable Secure Comput 15(1):83–97CrossRef Saracino A, Sgandurra D, Dini G, Martinelli F (2016) Madam: effective and efficient behavior-based android malware detection and prevention. IEEE Trans Dependable Secure Comput 15(1):83–97CrossRef
45.
Zurück zum Zitat Shabtai A, Kanonov U, Elovici Y, Glezer C, Weiss Y (2012) “Andromaly”: a behavioral malware detection framework for android devices. J Intell Inf Syst 38(1):161–190CrossRef Shabtai A, Kanonov U, Elovici Y, Glezer C, Weiss Y (2012) “Andromaly”: a behavioral malware detection framework for android devices. J Intell Inf Syst 38(1):161–190CrossRef
46.
Zurück zum Zitat Shahzad F, Akbar M, Khan S, Farooq M (2013) Tstructdroid: realtime malware detection using in-execution dynamic analysis of kernel process control blocks on android. National University of Computer & Emerging Sciences, Islamabad, Pakistan, Technical report Shahzad F, Akbar M, Khan S, Farooq M (2013) Tstructdroid: realtime malware detection using in-execution dynamic analysis of kernel process control blocks on android. National University of Computer & Emerging Sciences, Islamabad, Pakistan, Technical report
47.
Zurück zum Zitat Shankar VG, Somani G, Gaur MS, Laxmi V, Conti M (2017) Androtaint: an efficient android malware detection framework using dynamic taint analysis. In: 2017 ISEA Asia Security and Privacy (ISEASP). IEEE, pp 1–13 Shankar VG, Somani G, Gaur MS, Laxmi V, Conti M (2017) Androtaint: an efficient android malware detection framework using dynamic taint analysis. In: 2017 ISEA Asia Security and Privacy (ISEASP). IEEE, pp 1–13
48.
Zurück zum Zitat Suarez-Tangil G, Dash SK, Ahmadi M, Kinder J, Giacinto G, Cavallaro L (2017) Droidsieve: fast and accurate classification of obfuscated android malware. In: Proceedings of the Seventh ACM on Conference on Data and Application Security and Privacy, pp 309–320 Suarez-Tangil G, Dash SK, Ahmadi M, Kinder J, Giacinto G, Cavallaro L (2017) Droidsieve: fast and accurate classification of obfuscated android malware. In: Proceedings of the Seventh ACM on Conference on Data and Application Security and Privacy, pp 309–320
49.
Zurück zum Zitat Tam K, Khan SJ, Fattori A, Cavallaro L (2015) Copperdroid: automatic reconstruction of android malware behaviors. In: Ndss Tam K, Khan SJ, Fattori A, Cavallaro L (2015) Copperdroid: automatic reconstruction of android malware behaviors. In: Ndss
50.
Zurück zum Zitat Xu R, Saïdi H, Anderson R (2012) Aurasium: practical policy enforcement for android applications. In: Presented as part of the 21st \(\{\)USENIX\(\}\) Security Symposium (\(\{\)USENIX\(\}\) Security 12), pp 539–552 Xu R, Saïdi H, Anderson R (2012) Aurasium: practical policy enforcement for android applications. In: Presented as part of the 21st \(\{\)USENIX\(\}\) Security Symposium (\(\{\)USENIX\(\}\) Security 12), pp 539–552
51.
Zurück zum Zitat Yerima SY, Sezer S, McWilliams G, Muttik I (2013) A new android malware detection approach using Bayesian classification. In: 2013 IEEE 27th International Conference on Advanced Information Networking and Applications (AINA). IEEE, pp 121–128 Yerima SY, Sezer S, McWilliams G, Muttik I (2013) A new android malware detection approach using Bayesian classification. In: 2013 IEEE 27th International Conference on Advanced Information Networking and Applications (AINA). IEEE, pp 121–128
52.
Zurück zum Zitat Yerima SY, Sezer S, McWilliams G (2014) Analysis of Bayesian classification-based approaches for android malware detection. IET Inf Secur 8(1):25–36CrossRef Yerima SY, Sezer S, McWilliams G (2014) Analysis of Bayesian classification-based approaches for android malware detection. IET Inf Secur 8(1):25–36CrossRef
53.
Zurück zum Zitat Yuan Z, Lu Y, Xue Y (2016) Droiddetector: android malware characterization and detection using deep learning. Tsinghua Sci Technol 21(1):114–123CrossRef Yuan Z, Lu Y, Xue Y (2016) Droiddetector: android malware characterization and detection using deep learning. Tsinghua Sci Technol 21(1):114–123CrossRef
54.
Zurück zum Zitat Zhang C, Wei H, Xie L, Shen Y, Zhang K (2016) Direct interval forecasting of wind speed using radial basis function neural networks in a multi-objective optimization framework. Neurocomputing 205:53–63CrossRef Zhang C, Wei H, Xie L, Shen Y, Zhang K (2016) Direct interval forecasting of wind speed using radial basis function neural networks in a multi-objective optimization framework. Neurocomputing 205:53–63CrossRef
56.
Zurück zum Zitat Zhu HJ, You ZH, Zhu ZX, Shi WL, Chen X, Cheng L (2018) Droiddet: effective and robust detection of android malware using static analysis along with rotation forest model. Neurocomputing 272:638–646CrossRef Zhu HJ, You ZH, Zhu ZX, Shi WL, Chen X, Cheng L (2018) Droiddet: effective and robust detection of android malware using static analysis along with rotation forest model. Neurocomputing 272:638–646CrossRef
Metadaten
Titel
HybriDroid: an empirical analysis on effective malware detection model developed using ensemble methods
verfasst von
Arvind Mahindru
A. L. Sangal
Publikationsdatum
18.01.2021
Verlag
Springer US
Erschienen in
The Journal of Supercomputing / Ausgabe 8/2021
Print ISSN: 0920-8542
Elektronische ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-020-03569-4

Weitere Artikel der Ausgabe 8/2021

The Journal of Supercomputing 8/2021 Zur Ausgabe