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What is the SCL equation for your regression output?

A D 1 SUMMARY OUTPUT 2 Regression Statistics L3 4 Multiple R 5 R Square 6 Adjusted R Square 7 Standard Error 8 Observations 0
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Fum the giren oub pub f O.4904779o8 O.000 6G6 79 3LLe9ushion of Regressian oub put A Y O.000646179 t r6 4909 779ex

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