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SUMMARY OUTPUT Regression Statistics Multiple R 0.58175248 R Square 0.33843594 Adjusted R S 0.31393357 Standard Err 1.1991813What is the coefficient?

What is the standard error?

What is the z-statistic?

Is the coefficient sufficiently different from zero? How about one? Explain.

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Answer #1

Coef ficient O.4o2247 19 Standod Eo co.10823 2788 rjeion 99 J 8 |2 f S a/s Arsai &S ou ?. 7 LG5003 J23 2 o. o139 CC 4 8 2 Nea

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