Machine Learning Models for Cybersecurity in the USA firms and
develop models to enhance threat detection
Affiliations
1
Department of Electrical & Electronic Engineering, Mymensingh Engineering College (University of Dhaka), Mymensingh-2208,
Bangladesh
Abstract
In the context of global digitalization trends, the problem of the impact of cyberattacks on the
company is significantly relevant. The rapid evolution and growth of the internet through the last
decades led to more concern about cyber-attacks that are continuously increasing and changing.
As a result, an effective intrusion detection system was required to protect data, and the discovery
of machine learning is one of the most successful ways to address this problem. This article is
devoted to the impact of cyberattacks on the US firms’ market value since it is an indicator of
firm performance and how it can be solved by using machine learning technology. The paper’s
central hypothesis is the assumption that a cyberattack announcement is supposed to change
market reaction, which is predicted to be harmful since cybercrime incidents can lead to high
implicit and explicit costs. The paper explores the effect of firm-specific and attack-specific
characteristics of cyberattacks on the CAR (Cumulative Abnormal Returns) with the data of
cyberattacks for US firms from 2011 to 2020. The previously used security systems are no longer
sufficient because cybercriminals are smart enough to evade conventional security systems.
Conventional security systems lack efficiency in detecting previously unseen and polymorphic
security attacks. Machine learning (ML) techniques are playing a vital role in numerous
applications of cyber security. It discusses recent machine learning w...
Keywords:
Cybersecurity, Cyberattack, Machine
Learning, Cumulative Abnormal
Returns (CAR), Threats