Performance Evaluation of ML Techniques for Trust-Based Employee Behavioural Classification for Access Control in Organizations

Priyanka C Hiremath, Raju G T, M. P, Chaitanya Kulkarni, Vaishak Bhuvan M R
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Abstract

In today's digital environment, it's reassuring to know that analysis and modelling have gone into improving security in information systems via better trust management of personnel. Security mechanisms like trust are used to deal with varying degrees of authorization within an organization. Building and testing different machine learning models of trust based on the behaviour of an organization's employee data set is the first stage in our trust study. In this work, we show trust modelling on security systems using various machine learning (ML) techniques such as Random Forest (RF), Decision Tree (RF), XG Boost (XGB) and Logistic Regression (LR). We perform the training and the testing of our ML models based on stochastic pattern recognition to classify the Trust of an employee into four classes namely, Trusted, Moderate, U ntrusted and Unexpected. Later a rigorous comparison of all these models is done based on a Model Error Rate (MER) of a recommended trust board.
基于信任的组织访问控制员工行为分类ML技术的性能评价
在当今的数字环境中,分析和建模已经通过更好的人员信任管理来提高信息系统的安全性,这让人感到安心。信任等安全机制用于处理组织内不同程度的授权。基于组织员工数据集的行为构建和测试不同的信任机器学习模型是我们信任研究的第一阶段。在这项工作中,我们展示了使用各种机器学习(ML)技术(如随机森林(RF),决策树(RF), XG Boost (XGB)和逻辑回归(LR))对安全系统的信任建模。我们对基于随机模式识别的ML模型进行训练和测试,将员工的信任分为可信、中等、不可信和意外四类。然后,根据推荐信托委员会的模型错误率(MER)对所有这些模型进行严格的比较。
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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