Abstract

Particularly in the last decade, Internet usage has been growing rapidly. However, as the Internet becomes a part of the day to day activities, cybercrime is also on the rise. Cybercrime will cost nearly $6 trillion per annum by 2021 as per the cybersecurity ventures report in 2020. For illegal activities, cybercriminals utilize any network computing devices as a primary means of communication with a victims’ devices, so attackers get profit in terms of finance, publicity and others by exploiting the vulnerabilities over the system. Cybercrimes are steadily increasing daily. Evaluating cybercrime attacks and providing protective measures by manual methods using existing technical approaches and also investigations has often failed to control cybercrime attacks. Existing literature in the area of cybercrime offenses suffers from a lack of a computation methods to predict cybercrime, especially on unstructured data. Therefore, this study proposes a flexible computational tool using machine learning techniques to analyze cybercrimes rate at a state wise in a country that helps to classify cybercrimes. Security analytics with the association of data analytic approaches help us for analyzing and classifying offenses from India-based integrated data that may be either structured or unstructured. The main strength of this work is testing analysis reports, which classify the offenses accurately with 99 percent accuracy.

Highlights

  • Cybercrime is being used with diverse terminologies such as computer crime, e-crime, Internet crime, etc. [1]

  • The association of chief police officers of England (ACPO) and the U.S Department of Justice (DOJ) define cybercrime as any crime committed by any electronic computing devices [2,3,4]

  • Naïve Bayes is used for classification [28,29,30,31,32,33,34] and k-means are used for clustering [35]

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Summary

Introduction

Cybercrime is being used with diverse terminologies such as computer crime, e-crime, Internet crime, etc. [1]. The proposed tool will provide the essential broad knowledge of cybercrime offenses in the society, enable them to consider the threat landscape of such attacks, and avoid the personification of the cybercrime offenses. Prediction analysis of the integrated cybercrime offenses are made, to make year-wise analysis and find the occurrences of the various offenses in a particular location and find the crime rate in a particular year In this proposed work, we present a framework that will analyze and classify the cybercrime offenses and the datasets (for cybercrime in India) were obtained from Kaggle and CERT-In repositories.

Related Works
Proposed Methodology
Clustering and Classification
Prediction Analysis
Results and Analysis
Conclusions and Future Scope
Full Text
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