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Consider the data in the chart below. a) Generate a model for y as a function...

Consider the data in the chart below. a) Generate a model for y as a function of x b. Is this model useful? Justify your conclusion (based on i) R2 adjusted, ii) Hypothesis test for model coefficient, iii) overall model adequacy test and iv) regression assumptions) c. If needed, modify model as appropriate and generate the new model.

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