Predicting Vocational Personality Type from Socio-demographic Features Using Machine Learning Methods

E. Bogacheva, Filipp Tatarenko, I. Smetannikov
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引用次数: 3

Abstract

This study aimed to apply supervised machine learning techniques to one domain of psychological research: vocational interests. Socio-demographic factors can be considered strong predictors of vocational interests, which might have far-reaching practical implications for professional counselling and social network analysis. The dataset used in this study is a collection of answers to the RIASEC (Holland Codes) psychological test. Different Machine Learning architectures were used to predict RIASEC scales using socio-demographic features. The problem was treated as a multioutput regression task, multiclass and multilabel classification. The following models were used: independent regression, regression chains, three-letter code classification, inferring label relations. Models comparison showed that the models that exploit intercorrelations between RIASEC scales yielded the best results.
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利用机器学习方法从社会人口特征预测职业人格类型
本研究旨在将监督机器学习技术应用于心理学研究的一个领域:职业兴趣。社会人口因素可以被认为是职业兴趣的有力预测因素,这可能对专业咨询和社会网络分析产生深远的实际影响。本研究中使用的数据集是RIASEC(荷兰代码)心理测试的答案集合。使用不同的机器学习架构来使用社会人口特征预测RIASEC量表。该问题被视为一个多输出回归任务,多类别和多标签分类。使用了以下模型:独立回归、回归链、三字母代码分类、推断标签关系。模型比较表明,利用RIASEC尺度间相互关系的模型效果最好。
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