Coefficient of determination

In statistics, the coefficient of determination R^{2} is used in the context of statistical models whose main purpose is the prediction of future outcomes on the basis of other related information. It is the proportion of variability in a data set that is accounted for by the statistical model.^{[1]} It provides a measure of how well future outcomes are likely to be predicted by the model.
There are several different definitions of R^{2} which are only sometimes equivalent. One class of such cases includes that of linear regression. In this case, if an intercept is included then R^{2} is simply the square of the sample correlation coefficient between the outcomes and their predicted values, or in the case of simple linear regression, between the outcomes and the values of the single regressor being used for prediction. In such cases, the coefficient of determination ranges from 0 to 1. Important cases where the computational definition of R^{2} can yield negative values, depending on the definition used, arise where the predictions which are being compared to the corresponding outcomes have not been derived from a modelfitting procedure using those data, and where linear regression is conducted without including an intercept. Additionally, negative values of R^{2} may occur when fitting nonlinear trends to data.^{[2]} In these instances, the mean of the data provides a fit to the data that is superior to that of the trend under this goodness of fit analysis.
Contents
Definitions
A data set has values y_{i}, each of which has an associated modelled value f_{i} (also sometimes referred to as ŷ_{i}). Here, the values y_{i} are called the observed values and the modelled values f_{i} are sometimes called the predicted values.
The "variability" of the data set is measured through different sums of squares:
 the total sum of squares (proportional to the sample variance);
 the regression sum of squares, also called the explained sum of squares.
 , the sum of squares of residuals, also called the residual sum of squares.
In the above is the mean of the observed data:
where n is the number of observations.
The notations SS_{R} and SS_{E} should be avoided, since in some texts their meaning is reversed to Residual sum of squares and Explained sum of squares, respectively.
The most general definition of the coefficient of determination is
Relation to unexplained variance
In a general form, R^{2} can be seen to be related to the unexplained variance, since the second term compares the unexplained variance (variance of the model's errors) with the total variance (of the data). See fraction of variance unexplained.
As explained variance
In some cases the total sum of squares equals the sum of the two other sums of squares defined above,
See sum of squares for a derivation of this result for one case where the relation holds. When this relation does hold, the above definition of R^{2} is equivalent to
In this form R^{2} is given directly in terms of the explained variance: it compares the explained variance (variance of the model's predictions) with the total variance (of the data).
This partition of the sum of squares holds for instance when the model values ƒ_{i} have been obtained by linear regression. A milder sufficient condition reads as follows: The model has the form
where the q_{i} are arbitrary values that may or may not depend on i or on other free parameters (the common choice q_{i} = x_{i} is just one special case), and the coefficients α and β are obtained by minimizing the residual sum of squares.
This set of conditions is an important one and it has a number of implications for the properties of the fitted residuals and the modelled values. In particular, under these conditions:
As squared correlation coefficient
Similarly, after least squares regression with a constant+linear model (i.e., simple linear regression), R^{2} equals the square of the correlation coefficient between the observed and modeled (predicted) data values.
Under general conditions, an R^{2} value is sometimes calculated as the square of the correlation coefficient between the original and modeled data values. In this case, the value is not directly a measure of how good the modeled values are, but rather a measure of how good a predictor might be constructed from the modeled values (by creating a revised predictor of the form α + βƒ_{i}). According to Everitt (2002, p. 78), this usage is specifically the definition of the term "coefficient of determination": the square of the correlation between two (general) variables.
Interpretation
R^{2} is a statistic that will give some information about the goodness of fit of a model. In regression, the R^{2} coefficient of determination is a statistical measure of how well the regression line approximates the real data points. An R^{2} of 1.0 indicates that the regression line perfectly fits the data.
Values of R^{2} outside the range 0 to 1 can occur where it is used to measure the agreement between observed and modelled values and where the "modelled" values are not obtained by linear regression and depending on which formulation of R^{2} is used. If the first formula above is used, values can never be greater than one. If the second expression is used, there are no constraints on the values obtainable.
In many (but not all) instances where R^{2} is used, the predictors are calculated by ordinary leastsquares regression: that is, by minimizing SS_{err}. In this case Rsquared increases as we increase the number of variables in the model (R^{2} will not decrease). This illustrates a drawback to one possible use of R^{2}, where one might try to include more variables in the model until "there is no more improvement". This leads to the alternative approach of looking at the adjusted R^{2}. The explanation of this statistic is almost the same as R^{2} but it penalizes the statistic as extra variables are included in the model. For cases other than fitting by ordinary least squares, the R^{2} statistic can be calculated as above and may still be a useful measure. If fitting is by weighted least squares or generalized least squares, alternative versions of R^{2} can be calculated appropriate to those statistical frameworks, while the "raw" R^{2} may still be useful if it is more easily interpreted. Values for R^{2} can be calculated for any type of predictive model, which need not have a statistical basis.
In a linear model
Consider a linear model of the form
where, for the ith case, Y_{i} is the response variable, are p regressors, and ε_{i} is a mean zero error term. The quantities are unknown coefficients, whose values are determined by least squares. The coefficient of determination R^{2} is a measure of the global fit of the model. Specifically, R^{2} is an element of [0, 1] and represents the proportion of variability in Y_{i} that may be attributed to some linear combination of the regressors (explanatory variables) in X.
R^{2} is often interpreted as the proportion of response variation "explained" by the regressors in the model. Thus, R^{2} = 1 indicates that the fitted model explains all variability in y, while R^{2} = 0 indicates no 'linear' relationship (for straight line regression, this means that the straight line model is a constant line (slope=0, intercept=) between the response variable and regressors). An interior value such as R^{2} = 0.7 may be interpreted as follows: "Approximately seventy percent of the variation in the response variable can be explained by the explanatory variable. The remaining thirty percent can be explained by unknown, lurking variables or inherent variability."
A caution that applies to R^{2}, as to other statistical descriptions of correlation and association is that "correlation does not imply causation." In other words, while correlations may provide valuable clues regarding causal relationships among variables, a high correlation between two variables does not represent adequate evidence that changing one variable has resulted, or may result, from changes of other variables.
In case of a single regressor, fitted by least squares, R^{2} is the square of the Pearson productmoment correlation coefficient relating the regressor and the response variable. More generally, R^{2} is the square of the correlation between the constructed predictor and the response variable.
Inflation of R^{2}
In least squares regression, R^{2} is weakly increasing in the number of regressors in the model. As such, R^{2} alone cannot be used as a meaningful comparison of models with different numbers of independent variables. For a meaningful comparison between two models, an Ftest can be performed on the residual sum of squares, similar to the Ftests in Granger causality. As a reminder of this, some authors denote R^{2} by R^{2}_{p}, where p is the number of columns in X
To demonstrate this property, first recall that the objective of least squares regression is:
The optimal value of the objective is weakly smaller as additional columns of X are added, by the fact that relatively unconstrained minimization leads to a solution which is weakly smaller than relatively constrained minimization. Given the previous conclusion and noting that SS_{tot} depends only on y, the nondecreasing property of R^{2} follows directly from the definition above.
The intuitive reason that using an additional explanatory variable cannot lower the R^{2} is this: Minimizing SS_{err} is equivalent to maximizing R^{2}. When the extra variable is included, the data always have the option of giving it an estimated coefficient of zero, leaving the predicted values and the R^{2} unchanged. The only way that the optimization problem will give a nonzero coefficient is if doing so improves the R^{2}.
Notes on interpreting R^{2}
R² does not indicate whether:
 the independent variables are a true cause of the changes in the dependent variable;
 omittedvariable bias exists;
 the correct regression was used;
 the most appropriate set of independent variables has been chosen;
 there is collinearity present in the data on the explanatory variables;
 the model might be improved by using transformed versions of the existing set of independent variables.
Adjusted R^{2}
Adjusted R^{2} (often written as and pronounced "R bar squared") is a modification due to Theil^{[3]} of R^{2} that adjusts for the number of explanatory terms in a model. Unlike R^{2}, the adjusted R^{2} increases only if the new term improves the model more than would be expected by chance. The adjusted R^{2} can be negative, and will always be less than or equal to R^{2}. The adjusted R^{2} is defined as
where p is the total number of regressors in the linear model (but not counting the constant term), n is the sample size, df_{t} is the degrees of freedom n– 1 of the estimate of the population variance of the dependent variable, and df_{e} is the degrees of freedom n – p – 1 of the estimate of the underlying population error variance.
The principle behind the Adjusted R^{2} statistic can be seen by rewriting the ordinary R^{2} as
where VAR_{err} = SS_{err} / n and VAR_{tot} = SS_{tot} / n are estimates of the variances of the errors and of the observations, respectively. These estimates are replaced by statistically unbiased versions: VAR_{err} = SS_{err} / (n − p − 1) and VAR_{tot} = SS_{tot} / (n − 1).
Adjusted R^{2} does not have the same interpretation as R^{2}. As such, care must be taken in interpreting and reporting this statistic. Adjusted R^{2} is particularly useful in the Feature selection stage of model building..
The use of an adjusted R^{2} is an attempt to take account of the phenomenon of statistical shrinkage.^{[4]}
Generalized R^{2}
Nagelkerke (1991) generalizes the definition of the coefficient of determination:
 A generalized coefficient of determination should be consistent with the classical coefficient of determination when both can be computed;
 Its value should also be maximised by the maximum likelihood estimation of a model;
 It should be, at least asymptotically, independent of the sample size;
 Its interpretation should be the proportion of the variation explained by the model;
 It should be between 0 and 1, with 0 denoting that model does not explain any variation and 1 denoting that it perfectly explains the observed variation;
 It should not have any unit.
The generalized R² has all of these properties.
where L(0) is the likelihood of the model with only the intercept, is the likelihood of the estimated model and n is the sample size.
However, in the case of a logistic model, where cannot be greater than 1, R² is between 0 and : thus, it is possible to define a scaled R² as R²/R²_{max}.^{[5]}
See also
 Goodness of fit
 Fraction of variance unexplained
 Pearson productmoment correlation coefficient
 Nash–Sutcliffe model efficiency coefficient (hydrological applications)
 Regression model validation
 Proportional reduction in loss
 Root mean square deviation
 Multiple correlation
Notes
 ^ Steel, R. G. D. and Torrie, J. H., Principles and Procedures of Statistics, New York: McGrawHill, 1960, pp. 187, 287.
 ^ Cameron, A.C., Windmeijer, F.A.G., (1997)."An Rsquared measure of goodness of fit for some common nonlinear regression models." Journal of Econometrics, Volume 77, Issue 2, April 1997, Pages 329342.
 ^ Theil, Henri (1961). Economic Forecasts and Policy. Holland, Amsterdam: North.
 ^ Everitt, B.S. (2002) The Cambridge Dictionary of Statistics, CUP. ISBN 052181099x (See entries for "Shrinkage", "Shrinkage formulae")
 ^ N. Nagelkerke, "A Note on a General Definition of the Coefficient of Determination," Biometrika, vol. 78, no. 3, pp. 691–692, 1991.
References
 Draper, N.R. and Smith, H. (1998). Applied Regression Analysis. WileyInterscience. ISBN 0471170828
 Everitt, B.S. (2002). Cambridge Dictionary of Statistics (2nd Edition). CUP. ISBN 052181099x
 Nagelkerke, Nico J.D. (1992) Maximum Likelihood Estimation of Functional Relationships, PaysBas, Lecture Notes in Statistics, Volume 69, 110p ISBN 038797721X.
 Glantz, S.A. and Slinker, B.K., (1990). Primer of Applied Regression and Analysis of Variance. McGrawHill. ISBN 0070234078.
Categories: Regression analysis
 Statistical ratios
 Statistical terminology
 Least squares
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