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dc.contributor.authorDeore, Mahendra
dc.contributor.authorTarambale, Manoj
dc.contributor.authorRaja Kumar, Jambi Ratna
dc.contributor.authorSakhare, Sachin
dc.date2024-06
dc.date.accessioned2024-01-02T08:33:42Z
dc.date.available2024-01-02T08:33:42Z
dc.identifier.citationM. Deore, M. Tarambale, J. R. R. Kumar, S. Sakhare. GRASE: Granulometry Analysis With Semi Eager Classifier to Detect Malware, International Journal of Interactive Multimedia and Artificial Intelligence, (2023), http://dx.doi.org/10.9781/ijimai.2023.12.002es_ES
dc.identifier.citationMahendra Deore, Manoj Tarambale, Jambi Ratna Raja Kumar, Sachin Sakhare (2024). "GRASE: Granulometry Analysis With Semi Eager Classifier to Detect Malware", International Journal of Interactive Multimedia and Artificial Intelligence, vol. 8, issue Regular Issue, no. 6, pp. 120-134. https://doi.org/10.9781/ijimai.2023.12.002es_ES
dc.identifier.issn1989-1660
dc.identifier.urihttps://reunir.unir.net/handle/123456789/15785
dc.description.abstractTechnological advancement in communication leading to 5G, motivates everyone to get connected to the internet including ‘Devices’, a technology named Web of Things (WoT). The community benefits from this large-scale network which allows monitoring and controlling of physical devices. But many times, it costs the security as MALicious softWARE (MalWare) developers try to invade the network, as for them, these devices are like a ‘backdoor’ providing them easy ‘entry’. To stop invaders from entering the network, identifying malware and its variants is of great significance for cyberspace. Traditional methods of malware detection like static and dynamic ones, detect the malware but lack against new techniques used by malware developers like obfuscation, polymorphism and encryption. A machine learning approach to detect malware, where the classifier is trained with handcrafted features, is not potent against these techniques and asks for efforts to put in for the feature engineering. The paper proposes a malware classification using a visualization methodology wherein the disassembled malware code is transformed into grey images. It presents the efficacy of Granulometry texture analysis technique for improving malware classification. Furthermore, a Semi Eager (SemiE) classifier, which is a combination of eager learning and lazy learning technique, is used to get robust classification of malware families. The outcome of the experiment is promising since the proposed technique requires less training time to learn the semantics of higher-level malicious behaviours. Identifying the malware (testing phase) is also done faster. A benchmark database like malimg and Microsoft Malware Classification challenge (BIG-2015) has been utilized to analyse the performance of the system. An overall average classification accuracy of 99.03 and 99.11% is achieved, respectively.es_ES
dc.language.isoenges_ES
dc.publisherInternational Journal of Interactive Multimedia and Artificial Intelligence (IJIMAI)es_ES
dc.relation.ispartofseries;vol. 8, nº 6
dc.relation.uri
dc.rightsopenAccesses_ES
dc.subjectmalwarees_ES
dc.subjectSemi Eager Classification (Semi-E)es_ES
dc.subjectgranulometry analysises_ES
dc.subjectstatic and dynamic analysises_ES
dc.subjectIJIMAIes_ES
dc.titleGRASE: Granulometry Analysis with Semi Eager Classifier to Detect Malwarees_ES
dc.typearticlees_ES
reunir.tag~IJIMAIes_ES
dc.identifier.doihttps://doi.org/10.9781/ijimai.2023.12.002


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