Use of Machine Learning to Validate an Intelligent Framework to Support Decision Making in the Public Sector

Á. Pinheiro, W. Santos, F. B. L. Neto
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Abstract

Problem: Currently, many public organizations have adopted applications for process automation to avoid repetitive work and produce more efficient results; however, the development of intelligent mechanisms to support complex decision-making is not often observed. In public services, in particular, difficulties may be related to the abundance of data sources and the number of legal norms to comply with. Objective: A formal specification of a framework for the application and service layer suitable for public services with machine learning to support decisionmaking by technology and business experts. Method: In this study, the Design Science Research Methodology (DSRM) method was used, dividing the work into the following stages: (i) identification of the problem and motivation; (ii) definition of the objectives; (iii) planning, design, and development; (iv) demonstrations of the simulations; (v) verification and validation of the experiments; and (vi) communication of results. Interspersed with Domain Engineering (DE) in three stages: (i) Domain Analysis, (ii) Domain Design, and (iii) Domain Implementation. Results: This research was carried out: (i) elicitation of characteristics for an Intelligent Framework for the Public Sector, (ii) execution of Domain Engineering in Public Sector projects to obtain the characteristics, (iii) construction of an architectural model with machine learning by reinforcement, and (iv) instantiation of the framework for its validation using five experimental cases.
使用机器学习验证智能框架以支持公共部门的决策
问题:目前,许多公共机构已经采用流程自动化应用程序,以避免重复工作并产生更高效的结果;然而,支持复杂决策的智能机制的发展并不经常被观察到。特别是在公共服务方面,困难可能与数据来源的丰富和需要遵守的法律规范的数量有关。目标:应用程序和服务层框架的正式规范,适用于具有机器学习的公共服务,以支持技术和业务专家的决策。方法:本研究采用设计科学研究方法论(DSRM)方法,将工作分为以下几个阶段:(1)问题和动机的识别;(ii)确定目标;(iii)规划、设计和开发;(iv)模拟的演示;(五)实验的验证和确认;(六)结果的沟通。穿插领域工程(DE)分为三个阶段:(i)领域分析,(ii)领域设计,(iii)领域实施。结果:本研究进行了:(i)公共部门智能框架的特征引出,(ii)在公共部门项目中执行领域工程以获得特征,(iii)通过强化构建具有机器学习的架构模型,以及(iv)使用五个实验案例对框架进行实例化验证。
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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