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Flipped Instructional Design Factors in an Introductory and an Advanced Data Science Course

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Conference

2022 ASEE Annual Conference & Exposition

Location

Minneapolis, MN

Publication Date

August 23, 2022

Start Date

June 26, 2022

End Date

June 29, 2022

Conference Session

ERM: Instruction and Engagement

Page Count

19

DOI

10.18260/1-2--40957

Permanent URL

https://peer.asee.org/40957

Download Count

382

Paper Authors

biography

Shamima Mithun Indiana University - Purdue University Indianapolis

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Shamima Mithun is a Senior Lecturer at Computer Information Technology (CIT) department, IUPUI. She received her Ph.D. in Computer Science from Concordia University, Canada in 2012.

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Abstract

In this full research paper, we evaluate the flipped instructional designs of two undergraduate data science courses at a Midwestern university: an introductory course on database fundamentals and an advanced database design course. This study is built upon our prior work in which we identified a set of eight instructional design factors for effective flipped classrooms in the literature and assessed their efficacy with senior students. Our analysis relies on students’ course evaluations, self-reported survey data, focus group responses, course performance data, and instructor observation data to answer the following research questions: 1. How do the eight instructional design factors for effective flipped classrooms serve novice versus advanced data science students? 2. How should instruction in flipped classrooms be varied for novice versus advanced data science students? Our analysis indicates that novice data science students have different instructional needs and challenges compared to their senior peers particularly in relation to activities that require peer collaboration and were unmoderated by the instructor. We share the results of our quantitative analysis of self-reported survey data in which students ranked the aforementioned instructional design factors based on their effectiveness for their learning and a qualitative analysis which takes student comments (from free-response survey and focus group data) and instructor observation data to contextualize these rankings and inform our instructional design recommendations. These recommendations address students differing academic and interactional needs within the classroom and are to be implemented within the introductory course in its next iteration: (a) group norming and standardization around expectations for communication/collaboration, (b) transparent disclosure of the learning objectives for each activity, (c) offering guidelines to support students in providing actionable peer feedback, and (d) introducing low-stakes peer evaluations. We conclude with a discussion around the general affordances of the flipped classroom model for both introductory and advanced data science instruction compared to traditional lecture-based approaches.

Mithun, S. (2022, August), Flipped Instructional Design Factors in an Introductory and an Advanced Data Science Course Paper presented at 2022 ASEE Annual Conference & Exposition, Minneapolis, MN. 10.18260/1-2--40957

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