Enhancing employment outcomes for autistic youth: Using machine learning to identify strategies for success

IF 1.2 Q3 REHABILITATION
A. Griffiths, Amy E. HURLEY-HANSON, Cristina Giannantonio, Kaleigh Hyde, Erik J. Linstead, Rachel Wiegand, J. Brady
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Abstract

BACKGROUND: The employment rates of autistic young adults continue to be significantly lower than that of their neurotypical peers. OBJECTIVE: Researchers in this study sought to identify the barriers and facilitators associated with these individuals’ transition into the workforce to better understand how educators and stakeholders can support students’ post-secondary career plans. METHODS: Investigators used a classification tree analysis with a sample of 236 caregivers of autistic individuals or the individuals themselves, who completed an online survey. RESULTS: The analysis identified critical factors in predicting successful employment for respondents 21 years and under and those over 21 years old. These factors included: difficulties in the job search process, challenges with relationships at work, resources used, job maintenance, motivation to work, and the application process. CONCLUSION: These findings represent the first use of machine learning to identify pivotal points on the path to employment for autistic individuals. This information will better prepare school-based professionals and other stakeholders to support their students in attaining and maintaining employment, a critical aspect of achieving fulfillment and independence. Future research should consider the perspectives of other stakeholders, including employers, and apply the findings to the development of interventions.
提高自闭症青年的就业成果:利用机器学习确定成功策略
背景:自闭症青年的就业率持续显著低于他们的神经正常的同龄人。目的:本研究的研究人员试图确定与这些个人过渡到劳动力相关的障碍和促进因素,以更好地了解教育工作者和利益相关者如何支持学生的中学后职业规划。方法:研究人员对236名自闭症患者的护理人员或患者自己进行了分类树分析,他们完成了一项在线调查。结果:分析确定了预测21岁及以下受访者和21岁以上受访者成功就业的关键因素。这些因素包括:求职过程中的困难、工作关系的挑战、资源的使用、工作的维持、工作的动机和申请过程。结论:这些发现代表了首次使用机器学习来确定自闭症患者就业道路上的关键点。这些信息将更好地为学校专业人员和其他利益相关者做好准备,以支持他们的学生获得和维持就业,这是实现成就和独立的关键方面。未来的研究应考虑包括雇主在内的其他利益相关者的观点,并将研究结果应用于干预措施的制定。
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来源期刊
CiteScore
1.70
自引率
33.30%
发文量
45
期刊介绍: The Journal of Vocational Rehabilitation will provide a forum for discussion and dissemination of information about the major areas that constitute vocational rehabilitation. Periodically, there will be topics that are directed either to specific themes such as long term care or different disability groups such as those with psychiatric impairment. Often a guest editor who is an expert in the given area will provide leadership on a specific topic issue. However, all articles received directly or submitted for a special issue are welcome for peer review. The emphasis will be on publishing rehabilitation articles that have immediate application for helping rehabilitation counselors, psychologists and other professionals in providing direct services to people with disabilities.
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