![]() This is why we're really here, but if we take what we learned in simple linear This will be explained later, but there are correlationsīetween variables that don't show themselves here. Size was n = 14, our df = 14 - 4 = 10 for these tests.Ī further note - don't just blindly get rid of every variable that doesn't appear We're estimating, the constant and the three coefficients. Well, in this case, we have four (4) parameters The df for each of these tests was actually the sample size minus the number If you remember what we wrote during simple linear regression, They are once again the coefficient dividedīy the standard error of the coefficient, but this time that don't have n-2ĭegrees of freedom. To the ability to perform the clean & jerkĪ note about the T test statistics. The weight one is able to snatch does significantly contribute Even so, we leave it in the model.Īge does not significantly contribute to the ability to perform the clean & jerkīody weight does not significantly contribute to the ability to perform the clean & jerk We're making our decision at an α = 0.05 level of significance, so if the p-value < 0.05, we'll reject the null Here's a summary of the table of coefficients. If the coefficient is zero, then that variableĭrops out of the model and it doesn't contribute significantly to the model. Hypothesis in each case is that the population parameter for that particularĬoefficient (or constant) is zero. ![]() There were four hypothesis tests going on and four null hypotheses. The constant 32.88 is b 0, the coefficientĪlso notice that we have four test statistics and four p-values. That you find in the regression equation. Notice how the coefficients column (labeled "Coef") are again the coefficients Table of Coefficients Predictor Coef SE Coef T P You really should look further down the page to see if the equation is a good You can use it for estimation purposes, but Predictor Variables: age, body, snatch Regression Equation The regression equation isĬlean = 32.9 + 1.03 age + 0.106 body + 0.828 snatch Minitab was used to perform the regression analysis. Regression Analysis Explained Round 1: All Predictor Variables Included To involve k predictor variables instead of just one. + b kx k.īasically, everything we did with simple linear regression will just be extended This gives us a regression equation used for prediction of y = b 0 + b 1x 1 + b 2x 2 +. Parameters are estimated by b 0, b 1, b 2. ε is the error term or the residual that can't be explained by the model. Those parameters are the same as before, β 0 is the y-intercept or constant, β 1 is the coefficient on the first predictor variable, β 2 is the coefficient on the second predictor variable, and so on. , x k represent the k predictor variables. If there are k predictor variables, then the regression equation model is Jerk lift Total The total weight (kg) lifted by the competitor Age ![]() Body The weight (kg) of the competitor Snatch The maximum weight (kg) lifted during the three attempts at a snatch lift Clean The maximum weight (kg) lifted during the three attempts at a clean and Data Dictionary Age The age the competitor will be on their birthday in 2004. The heaviest weights (in kg) that men who weigh more than 105 kg were able Going to use total because it's just the sum of snatch and clean. Will have several predictor (x) variables, age, body, and snatch. We will still have one response (y) variable, clean, but we Now we're going to look at the rest of the data that we collected about the ![]()
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