Social Science Research Design and Statistics, 2/e Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton Bivariate Linear Regression PowerPoint Prepared.

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Social Science Research Design and Statistics, 2/e Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton Bivariate Linear Regression PowerPoint Prepared by Michael K. Ponton Presentation © 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton IBM® SPSS® Screen Prints Courtesy of International Business Machines Corporation, © International Business Machines Corporation.

Uses of the Bivariate Linear Regression Predict the value of a single dependent (or criterion) variable using values of a single independent (or predictor) variable. Test the hypothesis that there is no correlation between the actual and predicted DV values in the population; that is, the IV does not statistically predict the DV. Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton

Open the dataset Motivation.sav. File available at

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton Follow the menu as indicated.

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton Select and move Classroom Community [c_community] and Perceived Learning [p_learning] to the Dependent and Independent variable boxes, respectively; click OK.

How well does the linear regression equation model the relationship between the DV and IV? We must define R to answer this question. R = Pearson product-moment correlation between DV(raw data) and DV(predicted)*. That is, for every value of the IV in the raw data, we can calculate a predicted value for the DV using the regression equation. The correlation between these predictions and the raw data associated with the DV is R. If the equation is a very good prediction model for the DV, then R should be very close to 1 (R will always range from 0 to 1) because DV(predicted) will be very similar to DV(raw data) for each value of the IV(raw data). *Note: For bivariate linear regression, R = |r DV,IV |. Copyright 2014 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton To test the statistical significance of the regression equation, we check the significance associated with the ANOVA table from the linear regression output. The null hypothesis is H o : R pop = 0. The null hypothesis is H o : R pop = 0. (R pop represents the population parameter for R; R is the sample statistic.) (R pop represents the population parameter for R; R is the sample statistic.) Choose  (for this example, choose  =.05). Choose  (for this example, choose  =.05). In this example, Sig. <.001, which is less than  ; therefore, we reject H o. In this example, Sig. <.001, which is less than  ; therefore, we reject H o. We conclude that our linear regression equation is statistically significant.

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton To determine practical significance, we look at the value for R. Similar to correlation (i.e., r), we can qualitatively interpret R as being moderate; cf. Hinkle, D. E., Wiersma, W., & Jurs, S. G. (1998). Applied statistics for the behavioral sciences (4th ed.). Boston, MA: Houghton Mifflin. p. 120.

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton R 2 indicates that 27.7% of the variance in the DV (classroom community) is associated with the IV (perceived learning).

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton R 2 indicates that 27.7% of the variance in the DV (classroom community) is associated with the IV (perceived learning). Scroll down to the bottom portion of the output.

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton R 2 indicates that 27.7% of the variance in the DV (classroom community) is associated with the IV (perceived learning). We use the “Unstandardized Coefficients” to develop a linear regression equation for prediction. Unstandardized indicates that the coefficients are for an equation in units of the raw data (i.e., data as actually recorded and not converted to z-scores).

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton R 2 indicates that 27.7% of the variance in the DV (classroom community) is associated with the IV (perceived learning). The (rounded) unstandardized coefficients are used to produce the following prediction equation: DV’ = 1.87 * IV where DV’ = classroom community (predicted) and IV = perceived learning. Thus, for a given IV value, we can use this equation to predict a DV value.

Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton R 2 indicates that 27.7% of the variance in the DV (classroom community) is associated with the IV (perceived learning). The “Standardized [Beta] Coefficients” are used to develop a standardized regression equation that is written in terms of z-scores. The “Sig.” value is used to test the null hypothesis  = 0 for the IV indicated in the row. Note that  for perceived learning is statistically nonzero (Sig. <.001).  =.526 in the standardized regression equation for this example indicates that the predicted value for classroom community increases 1 standard deviation unit for an increase of.526 standard deviation units in perceived learning.

End of Presentation Copyright 2013 by Alfred P. Rovai, Jason D. Baker, and Michael K. Ponton