A Deep Reinforcement Learning Framework with Formal Verification

IF 1.4 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Zakaryae Boudi, Abderrahim Ait Wakrime, Mohamed Toub, Mohamed Haloua
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引用次数: 0

Abstract

Artificial Intelligence (AI) and data are reshaping organizations and businesses. Human Resources (HR) management and talent development make no exception, as they tend to involve more automation and growing quantities of data. Because this brings implications on workforce, career transparency, and equal opportunities, overseeing what fuels AI and analytical models, their quality standards, integrity, and correctness becomes an imperative for those aspiring to such systems. Based on an ontology transformation to B-machines, this article presents an approach to constructing a valid and error-free career agent with Deep Reinforcement Learning (DRL). In short, the agent's policy is built on a framework we called Multi State-Actor (MuStAc) using a decentralized training approach. Its purpose is to predict both relevant and valid career steps to employees, based on their profiles and company pathways (observations). Observations can comprise various data elements such as the current occupation, past experiences, performance, skills, qualifications, and so on. The policy takes in all these observations and outputs the next recommended career step, in an environment set as the combination of an HR ontology and an Event-B model, which generates action spaces with respect to formal properties. The Event-B model and formal properties are derived using OWL to B transformation.

具有形式化验证的深度强化学习框架
人工智能(AI)和数据正在重塑组织和企业。人力资源管理和人才发展也不例外,因为它们往往涉及更多的自动化和不断增长的数据量。因为这对劳动力、职业透明度和平等机会都有影响,所以监督人工智能和分析模型的动力、它们的质量标准、完整性和正确性对那些渴望建立这样的系统的人来说是必不可少的。基于本体到b机器的转换,提出了一种利用深度强化学习(DRL)构建有效、无错误的职业智能体的方法。简而言之,智能体的策略建立在我们称为多状态行为者(MuStAc)的框架上,使用分散的训练方法。其目的是根据员工的个人资料和公司发展路径(观察),预测员工相关且有效的职业发展步骤。观察可以包含各种数据元素,如当前职业、过去的经验、表现、技能、资格等等。该策略接受所有这些观察结果,并在HR本体和Event-B模型的组合环境中输出下一个推荐的职业步骤,后者根据形式属性生成操作空间。Event-B模型和形式属性是使用OWL to B转换派生的。
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来源期刊
Formal Aspects of Computing
Formal Aspects of Computing 工程技术-计算机:软件工程
CiteScore
3.30
自引率
0.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: This journal aims to publish contributions at the junction of theory and practice. The objective is to disseminate applicable research. Thus new theoretical contributions are welcome where they are motivated by potential application; applications of existing formalisms are of interest if they show something novel about the approach or application. In particular, the scope of Formal Aspects of Computing includes: well-founded notations for the description of systems; verifiable design methods; elucidation of fundamental computational concepts; approaches to fault-tolerant design; theorem-proving support; state-exploration tools; formal underpinning of widely used notations and methods; formal approaches to requirements analysis.
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