HOME

TheInfoList



OR:

In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an
estimator In statistics, an estimator is a rule for calculating an estimate of a given quantity based on observed data: thus the rule (the estimator), the quantity of interest (the estimand) and its result (the estimate) are distinguished. For example, the ...
(of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference between the estimated values and the actual value. MSE is a risk function, corresponding to the expected value of the squared error loss. The fact that MSE is almost always strictly positive (and not zero) is because of
randomness In common usage, randomness is the apparent or actual lack of pattern or predictability in events. A random sequence of events, symbols or steps often has no order and does not follow an intelligible pattern or combination. Individual rand ...
or because the estimator does not account for information that could produce a more accurate estimate. In
machine learning Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence. Machine ...
, specifically empirical risk minimization, MSE may refer to the ''empirical'' risk (the average loss on an observed data set), as an estimate of the true MSE (the true risk: the average loss on the actual population distribution). The MSE is a measure of the quality of an estimator. As it is derived from the square of Euclidean distance, it is always a positive value that decreases as the error approaches zero. The MSE is the second moment (about the origin) of the error, and thus incorporates both the variance of the estimator (how widely spread the estimates are from one data sample to another) and its bias (how far off the average estimated value is from the true value). For an
unbiased estimator In statistics, the bias of an estimator (or bias function) is the difference between this estimator's expected value and the true value of the parameter being estimated. An estimator or decision rule with zero bias is called ''unbiased''. In sta ...
, the MSE is the variance of the estimator. Like the variance, MSE has the same units of measurement as the square of the quantity being estimated. In an analogy to standard deviation, taking the square root of MSE yields the ''root-mean-square error'' or ''
root-mean-square deviation The root-mean-square deviation (RMSD) or root-mean-square error (RMSE) is a frequently used measure of the differences between values (sample or population values) predicted by a model or an estimator and the values observed. The RMSD represents ...
'' (RMSE or RMSD), which has the same units as the quantity being estimated; for an unbiased estimator, the RMSE is the square root of the variance, known as the
standard error The standard error (SE) of a statistic (usually an estimate of a parameter) is the standard deviation of its sampling distribution or an estimate of that standard deviation. If the statistic is the sample mean, it is called the standard error o ...
.


Definition and basic properties

The MSE either assesses the quality of a '' predictor'' (i.e., a function mapping arbitrary inputs to a sample of values of some random variable), or of an ''
estimator In statistics, an estimator is a rule for calculating an estimate of a given quantity based on observed data: thus the rule (the estimator), the quantity of interest (the estimand) and its result (the estimate) are distinguished. For example, the ...
'' (i.e., a
mathematical function In mathematics, a function from a set to a set assigns to each element of exactly one element of .; the words map, mapping, transformation, correspondence, and operator are often used synonymously. The set is called the domain of the functi ...
mapping a sample of data to an estimate of a
parameter A parameter (), generally, is any characteristic that can help in defining or classifying a particular system (meaning an event, project, object, situation, etc.). That is, a parameter is an element of a system that is useful, or critical, when ...
of the
population Population typically refers to the number of people in a single area, whether it be a city or town, region, country, continent, or the world. Governments typically quantify the size of the resident population within their jurisdiction using a ...
from which the data is sampled). The definition of an MSE differs according to whether one is describing a predictor or an estimator.


Predictor

If a vector of n predictions is generated from a sample of n data points on all variables, and Y is the vector of observed values of the variable being predicted, with \hat being the predicted values (e.g. as from a
least-squares fit The method of least squares is a standard approach in regression analysis to approximate the solution of overdetermined systems (sets of equations in which there are more equations than unknowns) by minimizing the sum of the squares of the re ...
), then the within-sample MSE of the predictor is computed as :\operatorname=\frac \sum_^n \left(Y_i-\hat\right)^2. In other words, the MSE is the ''mean'' \left(\frac \sum_^n \right) of the ''squares of the errors'' \left(Y_i-\hat\right)^2. This is an easily computable quantity for a particular sample (and hence is sample-dependent). In matrix notation, :\operatorname=\frac\sum_^n(e_i)^2=\frac\mathbf e^\mathsf T \mathbf e where e_i is (Y_i-\hat) and \mathbf e is the n \times 1 column vector. The MSE can also be computed on ''q ''data points that were not used in estimating the model, either because they were held back for this purpose, or because these data have been newly obtained. Within this process, known as statistical learning, the MSE is often called the
test MSE Test(s), testing, or TEST may refer to: * Test (assessment), an educational assessment intended to measure the respondents' knowledge or other abilities Arts and entertainment * ''Test'' (2013 film), an American film * ''Test'' (2014 film), ...
, and is computed as :\operatorname = \frac \sum_^ \left(Y_i-\hat\right)^2.


Estimator

The MSE of an estimator \hat with respect to an unknown parameter \theta is defined as :\operatorname(\hat)=\operatorname_\left \hat-\theta)^2\right This definition depends on the unknown parameter, but the MSE is ''a priori'' a property of an estimator. The MSE could be a function of unknown parameters, in which case any ''estimator'' of the MSE based on estimates of these parameters would be a function of the data (and thus a random variable). If the estimator \hat is derived as a sample statistic and is used to estimate some population parameter, then the expectation is with respect to the sampling distribution of the sample statistic. The MSE can be written as the sum of the variance of the estimator and the squared bias of the estimator, providing a useful way to calculate the MSE and implying that in the case of unbiased estimators, the MSE and variance are equivalent. :\operatorname(\hat)=\operatorname_(\hat)+ \operatorname(\hat,\theta)^2.


Proof of variance and bias relationship

:\begin \operatorname(\hat) &= \operatorname_ \left \hat-\theta)^2 \right \\ &= \operatorname_\left left(\hat-\operatorname__[\hat\theta\operatorname_[\hat\theta.html" ;"title="hat\theta.html" ;"title="left(\hat-\operatorname_ [\hat\theta">left(\hat-\operatorname_ [\hat\theta\operatorname_[\hat\theta">hat\theta.html" ;"title="left(\hat-\operatorname_ [\hat\theta">left(\hat-\operatorname_ [\hat\theta\operatorname_[\hat\theta\theta\right)^2\right]\\ &= \operatorname_\left left(\hat-\operatorname_[\hat\thetaright)^2 +2\left (\hat-\operatorname_[\hat\theta] \right ) \left (\operatorname_ hat\theta\theta \right )+\left( \operatorname_ hat\theta\theta \right)^2\right] \\ &= \operatorname_\left left(\hat-\operatorname_[\hat\thetaright)^2\right.html" ;"title="hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right">hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right\operatorname_\left[2 \left (\hat-\operatorname_[\hat\theta] \right ) \left (\operatorname_ hat\theta\theta \right ) \right] + \operatorname_\left [ \left(\operatorname_ hat\theta\theta\right)^2 \right] \\ &= \operatorname_\left left(\hat-\operatorname_[\hat\thetaright)^2\right.html" ;"title="hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right">hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right 2 \left(\operatorname_ hat\theta\theta\right) \operatorname_\left[\hat-\operatorname_[\hat\theta] \right] + \left(\operatorname_ hat\theta\theta\right)^2 && \operatorname_ hat\theta\theta = \text \\ &= \operatorname_\left left(\hat-\operatorname_[\hat\thetaright)^2\right.html" ;"title="hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right">hat\theta.html" ;"title="left(\hat-\operatorname_[\hat\theta">left(\hat-\operatorname_[\hat\thetaright)^2\right 2 \left(\operatorname_ hat\theta\theta\right) \left ( \operatorname_[\hat]-\operatorname_[\hat\theta] \right )+ \left(\operatorname_ hat\theta\theta\right)^2 && \operatorname_[\hat\theta] = \text \\ &= \operatorname_\left left(\hat\theta-\operatorname_[\hat\thetaright)^2\right.html" ;"title="hat\theta.html" ;"title="left(\hat\theta-\operatorname_[\hat\theta">left(\hat\theta-\operatorname_[\hat\thetaright)^2\right">hat\theta.html" ;"title="left(\hat\theta-\operatorname_[\hat\theta">left(\hat\theta-\operatorname_[\hat\thetaright)^2\right\left(\operatorname_ hat\theta\theta\right)^2\\ &= \operatorname_(\hat\theta)+ \operatorname_(\hat\theta,\theta)^2 \end An even shorter proof can be achieved using the well-known formula that for a random variable X, \mathbb(X^2) = \operatorname(X) + (\mathbb(X))^2. By substituting X with, \hat\theta-\theta, we have\begin \operatorname(\hat) &= \mathbb[(\hat\theta-\theta)^2] \\ &= \operatorname(\hat - \theta) + (\mathbb[\hat\theta - \theta])^2 \\ &= \operatorname(\hat\theta) + \operatorname^2(\hat\theta) \endBut in real modeling case, MSE could be described as the addition of model variance, model bias, and irreducible uncertainty (see
Bias–variance tradeoff In statistics and machine learning, the bias–variance tradeoff is the property of a model that the variance of the parameter estimated across samples can be reduced by increasing the bias in the estimated parameters. The bias–variance di ...
). According to the relationship, the MSE of the estimators could be simply used for the efficiency comparison, which includes the information of estimator variance and bias. This is called MSE criterion.


In regression

In regression analysis, plotting is a more natural way to view the overall trend of the whole data. The mean of the distance from each point to the predicted regression model can be calculated, and shown as the mean squared error. The squaring is critical to reduce the complexity with negative signs. To minimize MSE, the model could be more accurate, which would mean the model is closer to actual data. One example of a linear regression using this method is the least squares method—which evaluates appropriateness of linear regression model to model bivariate dataset, but whose limitation is related to known distribution of the data. The term ''mean squared error'' is sometimes used to refer to the unbiased estimate of error variance: the residual sum of squares divided by the number of degrees of freedom. This definition for a known, computed quantity differs from the above definition for the computed MSE of a predictor, in that a different denominator is used. The denominator is the sample size reduced by the number of model parameters estimated from the same data, (''n''−''p'') for ''p'' regressors or (''n''−''p''−1) if an intercept is used (see errors and residuals in statistics for more details). Although the MSE (as defined in this article) is not an unbiased estimator of the error variance, it is
consistent In classical deductive logic, a consistent theory is one that does not lead to a logical contradiction. The lack of contradiction can be defined in either semantic or syntactic terms. The semantic definition states that a theory is consistent ...
, given the consistency of the predictor. In regression analysis, "mean squared error", often referred to as
mean squared prediction error In statistics the mean squared prediction error or mean squared error of the predictions of a smoothing or curve fitting procedure is the expected value of the squared difference between the fitted values implied by the predictive function \wid ...
or "out-of-sample mean squared error", can also refer to the mean value of the
squared deviations Squared deviations from the mean (SDM) result from squaring deviations. In probability theory and statistics, the definition of ''variance'' is either the expected value of the SDM (when considering a theoretical distribution) or its average valu ...
of the predictions from the true values, over an out-of-sample test space, generated by a model estimated over a particular sample space. This also is a known, computed quantity, and it varies by sample and by out-of-sample test space.


Examples


Mean

Suppose we have a random sample of size n from a population, X_1,\dots,X_n. Suppose the sample units were chosen with replacement. That is, the n units are selected one at a time, and previously selected units are still eligible for selection for all n draws. The usual estimator for the \mu is the sample average :\overline=\frac\sum_^n X_i which has an expected value equal to the true mean \mu (so it is unbiased) and a mean squared error of :\operatorname\left(\overline\right)=\operatorname\left left(\overline-\mu\right)^2\right\left(\frac\right)^2= \frac where \sigma^2 is the population variance. For a Gaussian distribution, this is the
best unbiased estimator In statistics a minimum-variance unbiased estimator (MVUE) or uniformly minimum-variance unbiased estimator (UMVUE) is an Bias of an estimator, unbiased estimator that has lower variance than any other unbiased estimator for all possible values of t ...
(i.e., one with the lowest MSE among all unbiased estimators), but not, say, for a uniform distribution.


Variance

The usual estimator for the variance is the ''corrected sample variance:'' :S^2_ = \frac\sum_^n\left(X_i-\overline \right)^2 =\frac\left(\sum_^n X_i^2-n\overline^2\right). This is unbiased (its expected value is \sigma^2), hence also called the ''unbiased sample variance,'' and its MSE is :\operatorname(S^2_)= \frac \left(\mu_4-\frac\sigma^4\right) =\frac \left(\gamma_2+\frac\right)\sigma^4, where \mu_4 is the fourth
central moment In probability theory and statistics, a central moment is a moment of a probability distribution of a random variable about the random variable's mean; that is, it is the expected value of a specified integer power of the deviation of the random ...
of the distribution or population, and \gamma_2=\mu_4/\sigma^4-3 is the
excess kurtosis In probability theory and statistics, kurtosis (from el, κυρτός, ''kyrtos'' or ''kurtos'', meaning "curved, arching") is a measure of the "tailedness" of the probability distribution of a real-valued random variable. Like skewness, kurtosi ...
. However, one can use other estimators for \sigma^2 which are proportional to S^2_, and an appropriate choice can always give a lower mean squared error. If we define :S^2_a = \fracS^2_= \frac\sum_^n\left(X_i-\overline\,\right)^2 then we calculate: :\begin \operatorname(S^2_a) &=\operatorname\left left(\frac S^2_-\sigma^2\right)^2 \right\\ &= \operatorname\left \frac S^4_ -2 \left ( \frac S^2_ \right ) \sigma^2 + \sigma^4 \right \\ &= \frac \operatorname\left S^4_ \right - 2 \left ( \frac\right ) \operatorname\left S^2_ \right \sigma^2 + \sigma^4 \\ &= \frac \operatorname\left S^4_ \right - 2 \left ( \frac\right ) \sigma^4 + \sigma^4 && \operatorname\left S^2_ \right = \sigma^2 \\ &= \frac \left ( \frac + \frac \right ) \sigma^4- 2 \left ( \frac\right ) \sigma^4+\sigma^4 && \operatorname\left S^4_ \right = \operatorname(S^2_) + \sigma^4 \\ &=\frac \left ((n-1)\gamma_2+n^2+n \right ) \sigma^4- 2 \left ( \frac\right ) \sigma^4+\sigma^4 \end This is minimized when :a=\frac = n+1+\frac\gamma_2. For a Gaussian distribution, where \gamma_2=0, this means that the MSE is minimized when dividing the sum by a=n+1. The minimum excess kurtosis is \gamma_2=-2, which is achieved by a Bernoulli distribution with ''p'' = 1/2 (a coin flip), and the MSE is minimized for a=n-1+\tfrac. Hence regardless of the kurtosis, we get a "better" estimate (in the sense of having a lower MSE) by scaling down the unbiased estimator a little bit; this is a simple example of a shrinkage estimator: one "shrinks" the estimator towards zero (scales down the unbiased estimator). Further, while the corrected sample variance is the
best unbiased estimator In statistics a minimum-variance unbiased estimator (MVUE) or uniformly minimum-variance unbiased estimator (UMVUE) is an Bias of an estimator, unbiased estimator that has lower variance than any other unbiased estimator for all possible values of t ...
(minimum mean squared error among unbiased estimators) of variance for Gaussian distributions, if the distribution is not Gaussian, then even among unbiased estimators, the best unbiased estimator of the variance may not be S^2_.


Gaussian distribution

The following table gives several estimators of the true parameters of the population, μ and σ2, for the Gaussian case.


Interpretation

An MSE of zero, meaning that the estimator \hat predicts observations of the parameter \theta with perfect accuracy, is ideal (but typically not possible). Values of MSE may be used for comparative purposes. Two or more statistical models may be compared using their MSEs—as a measure of how well they explain a given set of observations: An unbiased estimator (estimated from a statistical model) with the smallest variance among all unbiased estimators is the ''best unbiased estimator'' or MVUE (
Minimum-Variance Unbiased Estimator In statistics a minimum-variance unbiased estimator (MVUE) or uniformly minimum-variance unbiased estimator (UMVUE) is an unbiased estimator that has lower variance than any other unbiased estimator for all possible values of the parameter. For pra ...
). Both analysis of variance and linear regression techniques estimate the MSE as part of the analysis and use the estimated MSE to determine the statistical significance of the factors or predictors under study. The goal of experimental design is to construct experiments in such a way that when the observations are analyzed, the MSE is close to zero relative to the magnitude of at least one of the estimated treatment effects. In one-way analysis of variance, MSE can be calculated by the division of the sum of squared errors and the degree of freedom. Also, the f-value is the ratio of the mean squared treatment and the MSE. MSE is also used in several stepwise regression techniques as part of the determination as to how many predictors from a candidate set to include in a model for a given set of observations.


Applications

*Minimizing MSE is a key criterion in selecting estimators: see
minimum mean-square error In statistics and signal processing, a minimum mean square error (MMSE) estimator is an estimation method which minimizes the mean square error (MSE), which is a common measure of estimator quality, of the fitted values of a dependent variable. In ...
. Among unbiased estimators, minimizing the MSE is equivalent to minimizing the variance, and the estimator that does this is the minimum variance unbiased estimator. However, a biased estimator may have lower MSE; see estimator bias. *In statistical modelling the MSE can represent the difference between the actual observations and the observation values predicted by the model. In this context, it is used to determine the extent to which the model fits the data as well as whether removing some explanatory variables is possible without significantly harming the model's predictive ability. *In
forecasting Forecasting is the process of making predictions based on past and present data. Later these can be compared (resolved) against what happens. For example, a company might estimate their revenue in the next year, then compare it against the actual ...
and prediction, the
Brier score The Brier Score is a ''strictly proper score function'' or ''strictly proper scoring rule'' that measures the accuracy of probabilistic predictions. For unidimensional predictions, it is strictly equivalent to the mean squared error as applied t ...
is a measure of forecast skill based on MSE.


Loss function

Squared error loss is one of the most widely used loss functions in statistics, though its widespread use stems more from mathematical convenience than considerations of actual loss in applications.
Carl Friedrich Gauss Johann Carl Friedrich Gauss (; german: Gauß ; la, Carolus Fridericus Gauss; 30 April 177723 February 1855) was a German mathematician and physicist who made significant contributions to many fields in mathematics and science. Sometimes refer ...
, who introduced the use of mean squared error, was aware of its arbitrariness and was in agreement with objections to it on these grounds. The mathematical benefits of mean squared error are particularly evident in its use at analyzing the performance of linear regression, as it allows one to partition the variation in a dataset into variation explained by the model and variation explained by randomness.


Criticism

The use of mean squared error without question has been criticized by the decision theorist James Berger. Mean squared error is the negative of the expected value of one specific
utility function As a topic of economics, utility is used to model worth or value. Its usage has evolved significantly over time. The term was introduced initially as a measure of pleasure or happiness as part of the theory of utilitarianism by moral philosoph ...
, the quadratic utility function, which may not be the appropriate utility function to use under a given set of circumstances. There are, however, some scenarios where mean squared error can serve as a good approximation to a loss function occurring naturally in an application. Like variance, mean squared error has the disadvantage of heavily weighting
outliers In statistics, an outlier is a data point that differs significantly from other observations. An outlier may be due to a variability in the measurement, an indication of novel data, or it may be the result of experimental error; the latter are ...
. This is a result of the squaring of each term, which effectively weights large errors more heavily than small ones. This property, undesirable in many applications, has led researchers to use alternatives such as the
mean absolute error In statistics, mean absolute error (MAE) is a measure of errors between paired observations expressing the same phenomenon. Examples of ''Y'' versus ''X'' include comparisons of predicted versus observed, subsequent time versus initial time, and ...
, or those based on the median.


See also

*
Bias–variance tradeoff In statistics and machine learning, the bias–variance tradeoff is the property of a model that the variance of the parameter estimated across samples can be reduced by increasing the bias in the estimated parameters. The bias–variance di ...
* Hodges' estimator *
James–Stein estimator The James–Stein estimator is a biased estimator of the mean, \boldsymbol\theta, of (possibly) correlated Gaussian distributed random vectors Y = \ with unknown means \. It arose sequentially in two main published papers, the earlier version ...
* Mean percentage error * Mean square quantization error * Mean square weighted deviation * Mean squared displacement *
Mean squared prediction error In statistics the mean squared prediction error or mean squared error of the predictions of a smoothing or curve fitting procedure is the expected value of the squared difference between the fitted values implied by the predictive function \wid ...
* Minimum mean square error * Minimum mean squared error estimator * Overfitting *
Peak signal-to-noise ratio Peak signal-to-noise ratio (PSNR) is an engineering term for the ratio between the maximum possible power of a signal and the power of corrupting noise that affects the fidelity of its representation. Because many signals have a very wide dynamic ...


Notes


References

{{reflist Point estimation performance Statistical deviation and dispersion Loss functions Least squares