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Machine Learning Based Malware Detection: a Boosting Methodology
Author(s) -
Tejaswini Ghate*,
Chetan Pathade,
Chaitanya Nirhali,
Krunal Patil,
Nilesh Korade
Publication year - 2020
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.d1717.029420
Subject(s) - malware , computer science , machine learning , artificial intelligence , categorical variable , support vector machine , boosting (machine learning) , logistic regression , relevance vector machine , data mining , set (abstract data type) , computer security , programming language
Malware damages computers without user's consent; they cause various threats unknowingly, hence detection of these is very crucial. In this study, we proposed to detect the presence of malware by using the classification technique of Machine Learning. Classification type in Machine Learning requires the output variable to be of a categorical kind; it attempts to draw some conclusion from the ascertained values. In short, classification constructs a model based on the training set and values or predicts categorical class labels. In our work, we propose to classify the presence of malware by incorporating two chief classification algorithms, such as Support Vector Machine and Logistic Regression. The data set used for it was not satisfactory. Consequently, we tend to explore a data set that met our necessities and enforced Logistic Regression on the same moreover, we plotted a scatter-gram for the scope of visualization and incorporated XG-Boost for the performance enhancement. This study assists in analyzing the presence of malware by adopting a proper dataset and ascertaining pivotal attributes leading to this classification.

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