Department of Productivity and Innovation, Universidad de la Costa CUC, Barranquilla 081001, Colombia.
School of Computing and Mathematics, Ulster University, Jordanstown BT37 0QB, UK.
Int J Environ Res Public Health. 2022 Jan 20;19(3):1133. doi: 10.3390/ijerph19031133.
The classifier selection problem in Assistive Technology Adoption refers to selecting the classification algorithms that have the best performance in predicting the adoption of technology, and is often addressed through measuring different single performance indicators. Satisfactory classifier selection can help in reducing time and costs involved in the technology adoption process. As there are multiple criteria from different domains and several candidate classification algorithms, the classifier selection process is now a problem that can be addressed using Multiple-Criteria Decision-Making (MCDM) methods. This paper proposes a novel approach to address the classifier selection problem by integrating Intuitionistic Fuzzy Sets (IFS), Decision Making Trial and Evaluation Laboratory (DEMATEL), and the Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS). The step-by-step procedure behind this application is as follows. First, IF-DEMATEL was used for estimating the criteria and sub-criteria weights considering uncertainty. This method was also employed to evaluate the interrelations among classifier selection criteria. Finally, a modified TOPSIS was applied to generate an overall suitability index per classifier so that the most effective ones can be selected. The proposed approach was validated using a real-world case study concerning the adoption of a mobile-based reminding solution by People with Dementia (PwD). The outputs allow public health managers to accurately identify whether PwD can adopt an assistive technology which results in (i) reduced cost overruns due to wrong classification, (ii) improved quality of life of adopters, and (iii) rapid deployment of intervention alternatives for non-adopters.
辅助技术采用中的分类器选择问题是指选择在预测技术采用方面性能最佳的分类算法,通常通过测量不同的单一性能指标来解决。令人满意的分类器选择可以帮助减少技术采用过程中的时间和成本。由于存在来自不同领域的多个标准和几个候选分类算法,因此分类器选择过程现在可以使用多准则决策 (MCDM) 方法来解决。本文提出了一种新的方法,通过集成直觉模糊集 (IFS)、决策试验和评估实验室 (DEMATEL) 以及偏好顺序排序技术 (TOPSIS) 来解决分类器选择问题。该应用程序背后的逐步过程如下。首先,使用 IF-DEMATEL 考虑不确定性来估计标准和子标准权重。该方法还用于评估分类器选择标准之间的相互关系。最后,应用改进的 TOPSIS 为每个分类器生成一个总体适用性指数,以便选择最有效的分类器。使用涉及痴呆症患者 (PwD) 采用基于移动的提醒解决方案的实际案例研究验证了所提出的方法。输出结果使公共卫生管理人员能够准确识别 PwD 是否可以采用辅助技术,从而 (i) 由于错误分类而导致成本超支减少,(ii) 提高采用者的生活质量,以及 (iii) 为非采用者快速部署干预替代方案。