Given a regression sum of squares equal to 2373.59 and a total sum of squares equal to 2489.52, the R-square value is? A) .953 B) 1.04 C) .047 D) .873
Solution :
Given that,
Regression sum of squares = 2373.59 and
A total sum of squares = 2489.52
R-square = 1 - (Regression sum of squares / A total sum of squares )
= 1 - (2373.59 / 2489.52)
= 1 - 0.953
= 0.047
R-square value is 0.047 .
Option C)
Given a regression sum of squares equal to 2373.59 and a total sum of squares equal...
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