INTRUSION DETECTION AND PREVENTION FRAMEWORK USING DATA MINING TECHNIQUES FOR FINANCIAL SECTOR

Gaurav Sharma, A. Kapil
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引用次数: 3

Abstract

Security becomes the main concern when the resources are shared over a network for many purposes. For ease of use and time saving several services offered by banks and other financial companies are accessible over mobile apps and computers connected with the Internet. Intrusion detection (ID) is the act of detecting actions that attempt to compromise the confidentiality, integrity, or availability of a shared resource over a network. Intrusion detection does not include the prevention of intrusions. A different solution is required for intrusion prevention. The major intrusion detection technique is host-based where major accountabilities are taken by the server itself to detect relevant security attacks. In this paper, an intrusion detection algorithm using data mining is presented. The proposed algorithm is compared with the signature apriori algorithm for performance. The proposed algorithm observed better results. This framework may help to explore new areas of future research in increasing security in the banking and financial sector enabled by an intrusion detection system (IDS).
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基于数据挖掘技术的金融入侵检测与防御框架
当出于多种目的在网络上共享资源时,安全性成为主要关注的问题。为了方便使用和节省时间,银行和其他金融公司提供的一些服务可以通过连接互联网的移动应用程序和计算机访问。入侵检测(ID)是检测试图破坏网络上共享资源的机密性、完整性或可用性的行为。入侵检测不包括入侵预防。入侵防御需要不同的解决方案。主要的入侵检测技术是基于主机的,其中主要的责任由服务器本身承担,以检测相关的安全攻击。本文提出了一种基于数据挖掘的入侵检测算法。将该算法与签名先验算法进行性能比较。该算法取得了较好的效果。该框架可能有助于探索未来研究的新领域,即通过入侵检测系统(IDS)提高银行和金融部门的安全性。
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