Enhancing performance of Bayes classifier for the hardened password mechanism

N. Pavaday, K. Soyjaudah
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引用次数: 6

Abstract

In pattern recognition, Bayes classifier is considered a powerful tool in the decision making process as its gives the lowest probability of committing a classification error. This has been highlighted in a number of previous works. The diversity in algorithm parameters, criteria used and number of users involved as well as the evaluation method makes the task of comparing their results and selecting an appropriate system a very thorny one. The purpose of this paper is four fold: to study the different approaches reported using a true password, to establish how normalization and using a single variance/mean impact on the results, using a maximum number of features does necessarily improve performance and finally demonstrate that performance optimization is feasible through careful selection of features and approach taken.
增强强化密码机制下贝叶斯分类器的性能
在模式识别中,贝叶斯分类器被认为是决策过程中的一个强大工具,因为它给出了最低的分类错误概率。这在之前的一些作品中已经得到了强调。算法参数、使用的标准、涉及的用户数量以及评估方法的多样性使得比较它们的结果并选择合适的系统成为一项非常棘手的任务。本文的目的有四个方面:研究使用真实密码报告的不同方法,建立规范化和使用单个方差/平均值对结果的影响,使用最大数量的特征确实必然提高性能,并最终证明通过仔细选择特征和所采取的方法进行性能优化是可行的。
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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