计算机网络中SOM集群对用户认证系统模型的竞争

S. Joshi, V. Phoha
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引用次数: 6

摘要

传统的互联网认证系统面临着严重的入侵问题。在这种情况下,我们提出了一个通过击键动力学进行用户认证的神经结构。建议的体系结构由一组自组织映射组成,其中每个用户都有一个不同的映射。每个映射由输入层中的n个神经元组成,其中n是击键模式的长度;然而,为了确定输出层的神经元数量,提出了一种策略。为了验证所要求的用户,确定给定模式的可能用户以及所要求的用户的映射与给定模式之间的相似程度。最后,使用阈值标准对真实性进行判断。评价结果表明,当误拒率为3.55%时,最佳误接受率为0.88%,认证准确率为97.83%。并给出了该方法在计算机网络环境中的应用场景。
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Competition between SOM Clusters to Model User Authentication System in Computer Networks
Traditional authentication systems employed on Internet are facing an acute problem of intrusions. In this context we propose a neural architecture for user authentication through keystroke dynamics. Proposed architecture consists of a set of self organizing maps where each user has a distinct map. Each map consists of n neurons in the input layer where n is the length of a keystroke pattern; however to determine the number of neurons in the output layer, a strategy is proposed. For authenticating claimed user, probable user(s) for a given pattern and the degree of similarity between the map of the claimed user and a given pattern are determined. Finally, a decision on the authenticity is made using threshold criteria. Evaluation results show the best false accept rate of 0.88% when false reject rate was 3.55% with authentication accuracy of 97.83%. An application scenario of the method in a computer network environment is also presented.
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