Cyber Guard: Advanced Machine Learning Model for Anticipating and Preventing Cyber Hacking Breaches Using Random Forest and Multi layer Perceptron

Authors

  • Gorla Siva Sai PG scholar, Department of MCA, DNR college, Bhimavaram, Andhra Pradesh Author
  • B.S.MURTHY Assistant Professor), Master of Computer Applications, DNR college, Bhimavaram, Andhra Pradesh. Author

Keywords:

Machine learning framework, cyber hacking breaches, Random Forest, Multi Layer Perceptron, pattern recognition, cyber threats, data protection

Abstract

Cyber Guard" presents an innovative machine learning framework designed to proactively anticipate and mitigate cyber hacking breaches. Leveraging the capabilities of Random Forest and Multi Layer Perceptron (MLP) algorithms, Cyber
Guard employs advanced pattern recognition and classification techniques. Through the synergy of Random Forest's ensemble learning and MLP's deep neural network architecture, Cyber Guard analyzes data patterns to detect and prevent potential cyber threats. This abstract highlights Cyber Guard's adaptability. continuous leaming, and robust defense mechanisms, ensuring the protection of critical systems and sensitive data against evolving cyber threats. Cyber hacking breaches prediction is one of the emerging technologies and it has been a quite challenging task to recognize breaches detection and prediction using computer algorithms. Making malware detection more responsive, scalable, and efficient than traditional systems that call for human involvement is the main goal of applying machine learning for breaches detection and prediction. Various types of cyber hacking attacks any of them will harm a person’s information and financial reputation. Data from governmental and non profit organizations, such as user and company information, may be compromised, posing a risk to their finances and reputation. The information can be collected from websites that can trigger cyberattack. Organizations like the healthcare industry are able to contain sensitive data that needs to be kept discreet and safe. Identity theft, fraud, and other losses may be caused by data breaches. The findings indicate that 70% of breaches affect numerous organizations, including the healthcare industry. The analysis displays the likelihood of a data breach. Due to increased usage of computer applications, the security for host and network is leading to the risk of data breaches. Machine learning methods can be used to find these assaults. By research, machine learning models are utilized to protect the website from security flaws. The dataset can be obtained from the Privacy Rights Clearinghouse. Data breaches can be decreased by educating staff on the use of modern security measures. This can aid in understanding the attacks knowledge and data security. The machine learning models like Random Forest, Decision Tree, k means and Multilayer Perceptron are used to predict the data breaches.

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Published

2025-04-25

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Section

Articles

How to Cite

Cyber Guard: Advanced Machine Learning Model for Anticipating and Preventing Cyber Hacking Breaches Using Random Forest and Multi layer Perceptron. (2025). International Journal of Engineering and Science Research, 15(2s), 208-212. https://ijesr.org/index.php/ijesr/article/view/284

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