Abstract
This study aims to determine the likelihood of adopting blended learning using the rotation model as an enhanced learning modality among college students in light of the innovation theory. The researcher utilized a quantitative design using a descriptive-correlational approach to examine factors like compatibility, simplicity, trialability, observability, relative advantage, cost, and behavioral intention in relation to blended learning adoption. A simple random sampling technique was utilized to gather 180 respondents. The study reveals a high level of adoption of innovation, the blended learning rotation model with the three main factors: compatibility, observability, and relative advantage. Users who are to adopt this innovation align well with the existing values and needs if they can see the benefits of using it and perceive it as superior to alternatives. On the other hand, factors such as simplicity and trialability do not seem to have a significant relationship with the adoption of blended learning using the rotation model. Addressing concerns related to cost is paramount to ensure widespread adoption. The findings highlight the relevance of considering these key factors when presenting innovations in educational settings. It proposed that efforts should be focused on ensuring that the innovation adopted is compatible with users’ needs, its benefits are visible, and it is perceived as advantageous compared to other options. This could involve training and support to help students and teachers understand the benefits and how to use the innovation effectively.
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