Using Ordinal Data to Assess Distance Learning

11/16/2020
by   Matthew Norris, et al.
0

There is some disagreement on whether Likert scale data should be treated as ordinal or continuous. This paper treats Likert data as ordinal, uses non-parametric hypothesis testing, and clustering to validate those variables that have significant results from hypothesis testing.

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