An Optimized Authentication Mechanism for Mobile Agents by Using Machine Learning

Q1 Mathematics
Pradeep Kumar, N. Singhal, Mohammad Asim, Avimanyou K. Vatsa
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引用次数: 0

Abstract

A mobile agent is a small piece of software which works on direction of its source platform on a regular basis. Because mobile agents roam around wide area networks autonomously, the protection of the agents and platforms is a serious worry. The number of mobile agents-based software applications has increased dramatically over the past year. It has also enhanced the security risks associated with such applications. Most of the security mechanisms in the mobile agent architecture focus solely on platform security, leaving mobile agent safety to be a significant challenge. An efficient authentication scheme is proposed in this article to address the situation of protection and authentication of mobile agent at the hour of migration of across multiple platforms in malicious environment. An authentication mechanism for the mobile agent based on the Hopfield neural network proposed. The mobile agent’s identity and password are authenticate using the specified mechanism at the moment of execution of assigned operation. An evaluative assessment has been offered, along with their complex character, in comparison to numerous agent authentication approaches. The proposed method has been put into practice, and its different aspects have been put to the test. In contrasted to typical client-server and code-on-demand approaches, the analysis shows that computation here is often more safe and simpler.
利用机器学习优化移动代理认证机制
移动代理是一个小的软件,它在其源平台的方向上定期工作。由于移动代理在广域网中自主漫游,对代理和平台的保护是一个严重的问题。在过去的一年中,基于移动代理的软件应用程序的数量急剧增加。它还增强了与此类应用程序相关的安全风险。移动代理体系结构中的大多数安全机制只关注平台安全性,这使得移动代理的安全性成为一个重大挑战。针对恶意环境下移动代理跨平台迁移时的保护和认证问题,提出了一种高效的认证方案。提出了一种基于Hopfield神经网络的移动代理认证机制。在执行指定的操作时,使用指定的机制对移动代理的身份和密码进行身份验证。与许多代理身份验证方法相比,提供了一种可评估的评估方法,以及它们的复杂特性。所提出的方法已付诸实践,并对其各个方面进行了检验。与典型的客户机-服务器和按需代码方法相比,分析表明,这里的计算通常更安全、更简单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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