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Perspectives on risk prioritization of data center vulnerabilities using rank aggregation and multi-objective optimization

Nowadays, data has become an invaluable asset to entities and companies, and keeping it secure represents a major challenge. Data centers are responsible for storing data provided by software applications. Nevertheless, the number of vulnerabilities has been increasing every day. Managing such vulne...

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Published in:arXiv.org 2022-02
Main Authors: Grisci, Bruno, Kuhn, Gabriela, Colombelli, Felipe, Matter, Vítor, Lima, Leomar, Heinen, Karine, Pegoraro, Mauricio, Borges, Marcio, Rigo, Sandro, Barbosa, Jorge, Rodrigo da Rosa Righi, da Costa, Cristiano André, de Oliveira Ramos, Gabriel
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container_title arXiv.org
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creator Grisci, Bruno
Kuhn, Gabriela
Colombelli, Felipe
Matter, Vítor
Lima, Leomar
Heinen, Karine
Pegoraro, Mauricio
Borges, Marcio
Rigo, Sandro
Barbosa, Jorge
Rodrigo da Rosa Righi
da Costa, Cristiano André
de Oliveira Ramos, Gabriel
description Nowadays, data has become an invaluable asset to entities and companies, and keeping it secure represents a major challenge. Data centers are responsible for storing data provided by software applications. Nevertheless, the number of vulnerabilities has been increasing every day. Managing such vulnerabilities is essential for building a reliable and secure network environment. Releasing patches to fix security flaws in software is a common practice to handle these vulnerabilities. However, prioritization becomes crucial for organizations with an increasing number of vulnerabilities since time and resources to fix them are usually limited. This review intends to present a survey of vulnerability ranking techniques and promote a discussion on how multi-objective optimization could benefit the management of vulnerabilities risk prioritization. The state-of-the-art approaches for risk prioritization were reviewed, intending to develop an effective model for ranking vulnerabilities in data centers. The main contribution of this work is to point out multi-objective optimization as a not commonly explored but promising strategy to prioritize vulnerabilities, enabling better time management and increasing security.
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subjects Applications programs
Computer centers
Data centers
Multiple objective analysis
Optimization
Ranking
Risk
Security
Software
Time management
title Perspectives on risk prioritization of data center vulnerabilities using rank aggregation and multi-objective optimization
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