软件计算在防止勒索软件依赖于更大规模的数据和分析

Attila Mate KOVACS
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引用次数: 0

摘要

勒索软件攻击继续对全球的组织和个人构成重大威胁。攻击者不断发展和调整策略的能力挑战了传统网络安全方法的步伐。针对医疗保健行业的勒索软件攻击占所有报告的网络攻击的45%。攻击的性质和规模以及越来越多的医疗保健技术的采用将继续构成勒索软件攻击的风险。然而,通过收集和分析大量数据以及应用软件计算技术,网络安全专家可以提高他们检测和防止勒索软件攻击的能力。因此,软计算提供了检测和防止恶意软件攻击的选项。使用软计算领域的方法,如模糊逻辑、神经网络和遗传算法,使得对大型数据集进行彻底分析成为可能。这些可以产生有洞察力的信息,有助于识别和应对勒索软件攻击。这些技术还可以帮助解密使用勒索软件加密的文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SOFT COMPUTING IN PREVENTING RANSOMWARE RELYING ON LARGER-SCALE DATA AND ANALYSIS
Ransomware attacks continue to pose a significant threat to organizations and individuals worldwide. The attackers’ ability to constantly evolve and adapt their tactics challenges traditional cybersecurity approaches to keep pace. Ransomware attacks targeting the healthcare industry accounted for 45% of all reported cyberattacks. The nature and scale of attacks and the increasing healthcare technology adoption will continue to pose ransomware attack risks. However, by collecting and analyzing large volumes of data and applying soft computing techniques, cybersecurity experts can improve their ability to detect and prevent ransomware attacks. As a result, soft computing offers options for detecting and preventing malware attacks. Using methods from the field of soft computing, such as fuzzy logic, neural networks, and genetic algorithms, makes it possible to conduct a thorough analysis of large data sets. These can yield insightful information that can help recognize and react to ransomware attacks. These techniques can also help to decrypt files that have been encrypted using ransomware.
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