Assessing the Learning Behavioral Intention of Commuters in Mobility
Practices
- URL: http://arxiv.org/abs/2105.08915v1
- Date: Wed, 19 May 2021 04:27:11 GMT
- Title: Assessing the Learning Behavioral Intention of Commuters in Mobility
Practices
- Authors: Waqas Ahmed, Habiba Akter, Sheikh M. Hizam, Ilham Sentosa and Syeliya
Md. Zaini
- Abstract summary: The study aims to assess the learning behavioral intention (LBI) of commuters in Greater Kuala Lumpur.
The perceived usefulness of learning during traveling and transit service quality has a vibrant impact on LBI.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Learning behavior mechanism is widely anticipated in managed settings through
the formal syllabus. However, heading for learning stimulus whilst daily
mobility practices through urban transit is the novel feature in learning
sciences. Theory of planned behavior (TPB), technology acceptance model (TAM),
and service quality of transit are conceptualized to assess the learning
behavioral intention (LBI) of commuters in Greater Kuala Lumpur. An online
survey was conducted to understand the LBI of 117 travelers who use the
technology to engage in the informal learning process during daily commuting.
The results explored that all the model variables i.e., perceived ease of use,
perceived usefulness, service quality, and subjective norms are significant
predictors of LBI. The perceived usefulness of learning during traveling and
transit service quality has a vibrant impact on LBI. The research will support
the informal learning mechanism from commuters point of view. The study is a
novel contribution to transport and learning literature that will open the new
prospect of research in urban mobility and its connotation with personal
learning and development.
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