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Verification of the Multiple Regression Model

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Applied Regression Analysis for Business

Abstract

In the last section of the previous chapter, we provided the tentative interpretation of structural parameters of our model. However, before the model is fully interpreted and applied in practice for forecasting or making simulations, it must be verified for statistical correctness.

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Welc, J., Esquerdo, P.J.R. (2018). Verification of the Multiple Regression Model. In: Applied Regression Analysis for Business. Springer, Cham. https://doi.org/10.1007/978-3-319-71156-0_4

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