4.6 Article

Exploring the Impact of AI-Based Cyber Security Financial Sector Management

Journal

APPLIED SCIENCES-BASEL
Volume 13, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/app13105875

Keywords

artificial intelligence; enhanced encryption; financial sector; cyber security

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Cyber threats encompass unauthorized access, alteration, or removal of private information, ransom demands, and business disruption. Cybercrime includes identity theft, malware threats, email and online fraud, and bank fraud. To protect data centers and digital systems, businesses and individuals employ security measures and call for more efficient approaches to tackle scalability issues and advanced threats. Cybercriminals employ AI and data poisoning, leveraging model theft strategies for automated attacks.
Cyber threats are attempts to secure unauthorized access to, change, or delete private information, to demand money from victims, or to disrupt business. Cybercrime includes everything from identity theft, malware threats, email and online fraud, to bank fraud. Businesses and individuals use this method to guard their data centers and other digital systems. The lack of scalability, sluggish response times, and inability to spot advanced and insider threats are among some of the problems with conventional approaches to network security. These flaws highlight the need for research to build more efficient and all-encompassing security methods to guard against the expanding variety of network attacks. Cybercriminals use AI and data poisoning, as well as model theft strategies to automate their attacks. A cyber security technique based on artificial intelligence is presented in this study for financial sector management (CS-FSM). In order to map and prevent unexpected risks from devouring a business, artificial intelligence is one of the best technologies. Using the proposed technique, cyberattack problems can be classified and solved. To ensure the security of financial sector information, algorithms such as the Enhanced Encryption Standard (EES) encrypt and decrypt data. By learning from the training data, the K-Nearest Neighbor (KNN) algorithm produces predictions. In the financial sector, it is used to detect and stop malware attacks. The proposed method increases cyber security systems' performance by increasing their defense against cyberattacks. CS-FSM enhances data privacy (18.3%), scalability (17.2%), risk reduction (13.2%), data protection (16.2%), and attack avoidance (11.2%) ratios.

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