Statistics for Business and Economics
Statistics for Business and Economics
1st Edition
ISBN: 9780132745680
Author: NEWBOLD, Paul/ Carlson
Publisher: Pearson College Div
Question
Chapter 1.2, Problem 8E

(a)

To determine

The example of categorical variable with ordinal response.

(b)

To determine

The example of categorical variable with nominal response.

(c)

To determine

The example of numerical variable with continuous response.

(d)

To determine

The example of numerical variable with discrete response.

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