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An Approach for Ushering Logistic Regression Early in Introductory Analytics Courses
Resource type
Authors/contributors
- Kunene, Niki (Author)
- Toskin, Katarzyna (Author)
Title
An Approach for Ushering Logistic Regression Early in Introductory Analytics Courses
Abstract
Logistic regression (LoR) is a foundational supervised machine learning algorithm and yet, unlike linear regression, appears rarely taught early on, where analogy and proximity to linear regression would be an advantage. A random sample of 50 syllabi from undergraduate business statistics courses shows only two percent of the courses included LoR. Conceivable reasons for this dearth of LoR content is likely related to topic complexity, time constraints, and varying degrees of tool ease of use and support. We propose that these constraints can be countered by: [1] introducing logistic regression early, [2] informed tool selection prioritizing ease of use with comprehensive output, and [3] using/developing innovative, accessible, and easy to understand concept learning aids. This approach would leverage the proximity to linear regression and probability readily embed distributed practice for student understanding of a foundational technique.
Publication
Information Systems Education Journal
Publisher
Information Systems and Computing Academic Professionals
Date
2022/12/00
Volume
20
Issue
5
Pages
42-53
Citation Key
kuneneApproachUsheringLogistic2022
Accessed
11/17/23, 8:38 PM
Language
en
Library Catalog
ERIC
Extra
ERIC Number: EJ1363423
Citation
Kunene, N., & Toskin, K. (2022). An Approach for Ushering Logistic Regression Early in Introductory Analytics Courses. Information Systems Education Journal, 20(5), 42–53. https://eric.ed.gov/?id=EJ1363423
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