Exploring acceptance of autonomous vehicle policies using KeyBERT and SNA: Targeting engineering students
Jinwoo Ha, Dongsoo Kim

TL;DR
This study compares two text-mining methods to analyze engineering students' acceptance of autonomous vehicle policies, revealing insights into user perceptions and potential risks associated with AV deployment.
Contribution
It introduces a novel comparison of CNA and C-SNA methods for understanding user acceptance of AV policies using student comments.
Findings
C-SNA provides clearer insights with fewer nodes.
Students identified potential risks in AV policies.
Text mining reveals user perceptions and concerns.
Abstract
This study aims to explore user acceptance of Autonomous Vehicle (AV) policies with improved text-mining methods. Recently, South Korean policymakers have viewed Autonomous Driving Car (ADC) and Autonomous Driving Robot (ADR) as next-generation means of transportation that will reduce the cost of transporting passengers and goods. They support the construction of V2I and V2V communication infrastructures for ADC and recognize that ADR is equivalent to pedestrians to promote its deployment into sidewalks. To fill the gap where end-user acceptance of these policies is not well considered, this study applied two text-mining methods to the comments of graduate students in the fields of Industrial, Mechanical, and Electronics-Electrical-Computer. One is the Co-occurrence Network Analysis (CNA) based on TF-IWF and Dice coefficient, and the other is the Contextual Semantic Network Analysis…
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Taxonomy
TopicsDiverse Approaches in Healthcare and Education Studies · Diverse Topics in Contemporary Research · Technology and Data Analysis
