Optimal Employee Recruitment in Organizations under Attribute-Based Access Control.

IF 2.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Management Information Systems Pub Date : 2021-01-01 DOI:10.1145/3403950
Arindam Roy, Shamik Sural, Arun Kumar Majumdar, Jaideep Vaidya, Vijayalakshmi Atluri
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Abstract

For any successful business endeavor, recruitment of required number of appropriately qualified employees in proper positions is a key requirement. For effective utilization of human resources, reorganization of such workforce assignment is also a task of utmost importance. This includes situations when the under-performing employees have to be substituted with fresh applicants. Generally, the number of candidates applying for a position is large and hence, the task of identifying an optimal subset becomes critical. Moreover, a human resource manager would also like to make use of the opportunity of retirement of employees to improve manpower utilization. However, the constraints enforced by the security policies prohibit any arbitrary assignment of tasks to employees. Further, the new employees should have the capabilities required to handle the assigned tasks. In this article, we formalize this problem as the Optimal Recruitment Problem (ORP), wherein the goal is to select the minimum number of fresh employees from a set of candidates to fill the vacant positions created by the outgoing employees, while ensuring satisfiability of the specified security conditions. The model used for specification of authorization policies and constraints is Attribute Based Access Control (ABAC), since it is considered to be the de facto next generation framework for handling organizational security policies. We show that the ORP problem is NP-hard and propose a greedy heuristic for solving it. Extensive experimental evaluation shows both the effectiveness as well as efficiency of the proposed solution.

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基于属性的访问控制下组织中的最佳员工招聘。
对于任何成功的企业来说,在适当的岗位上招聘所需数量的合格员工都是一项关键要求。为了有效利用人力资源,重新安排工作任务也是一项极其重要的任务。这包括必须用新的应聘者替代表现不佳的员工。一般来说,申请一个职位的候选人数量很多,因此,确定一个最佳子集的任务就变得至关重要。此外,人力资源经理还希望利用员工退休的机会提高人力利用率。但是,由于安全政策的限制,员工不能任意分配任务。此外,新员工应具备处理分配任务所需的能力。在本文中,我们将这一问题形式化为 "最优招聘问题"(ORP),其目标是从一组候选人中选择最少数量的新员工来填补离职员工的空缺职位,同时确保满足指定的安全条件。用于指定授权策略和约束条件的模型是基于属性的访问控制(ABAC),因为它被认为是处理组织安全策略的事实上的下一代框架。我们证明了 ORP 问题的 NP 难度,并提出了一种解决该问题的贪婪启发式。广泛的实验评估显示了所提解决方案的有效性和效率。
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来源期刊
ACM Transactions on Management Information Systems
ACM Transactions on Management Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.30
自引率
20.00%
发文量
60
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