Exploring a Language-Based Interest Assessment: Predicting Vocational Interests on Social Media Using Natural Language Processing
Yan Yi Lance Du,
Devansh Jain,
Young-Min Cho
et al.
Abstract:For more than a century, self-report inventories have been the traditional method for assessing vocational interests. Little research has examined the use of machine learning techniques, such as natural language processing (NLP), in interest assessment. This paper explores the extent to which natural language on social media can be used to predict individuals’ self-ratings on eight basic interests representing the SETPOINT model: Agriculture, Engineering, Human Resources, Life Science, Management/Administratio… Show more
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