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const LOT Coefficient 597,865 30,8658 Std. Error 7,72837 4,64595 t-ratio 77,36 6,644 p-value <0,0001 <0,0001 Mean dependent v

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Answer #1

The Coefficient of determination (R-square) is = 0.050492 = 5.049%

This means that only 5.049% of the variation in the price of residential housing (VALUE) is explained for or accounted for by the change in the area of the house as lot size (LOT).

Since this value is less than 55%, we can say that the data is not fitted well for this model and this is not a good model.

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