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In statistics and
optimization Mathematical optimization (alternatively spelled ''optimisation'') or mathematical programming is the selection of a best element, with regard to some criterion, from some set of available alternatives. It is generally divided into two subfi ...
, errors and residuals are two closely related and easily confused measures of the deviation of an observed value of an element of a statistical sample from its "
true value In statistics, as opposed to its general use in mathematics, a parameter is any measured quantity of a statistical population that summarises or describes an aspect of the population, such as a mean or a standard deviation. If a population exa ...
" (not necessarily observable). The error of an observation is the deviation of the observed value from the true value of a quantity of interest (for example, a
population mean In statistics, a population is a set of similar items or events which is of interest for some question or experiment. A statistical population can be a group of existing objects (e.g. the set of all stars within the Milky Way galaxy) or a hypothe ...
). The residual is the difference between the observed value and the '' estimated'' value of the quantity of interest (for example, a
sample mean The sample mean (or "empirical mean") and the sample covariance are statistics computed from a sample of data on one or more random variables. The sample mean is the average value (or mean value) of a sample of numbers taken from a larger popu ...
). The distinction is most important in regression analysis, where the concepts are sometimes called the regression errors and regression residuals and where they lead to the concept of
studentized residual In statistics, a studentized residual is the quotient resulting from the division of a residual by an estimate of its standard deviation. It is a form of a Student's ''t''-statistic, with the estimate of error varying between points. This is ...
s. In econometrics, "errors" are also called disturbances.


Introduction

Suppose there is a series of observations from a
univariate distribution In statistics, a univariate distribution is a probability distribution of only one random variable. This is in contrast to a multivariate distribution, the probability distribution of a random vector (consisting of multiple random variables). Exam ...
and we want to estimate the mean of that distribution (the so-called location model). In this case, the errors are the deviations of the observations from the population mean, while the residuals are the deviations of the observations from the sample mean. A statistical error (or disturbance) is the amount by which an observation differs from its expected value, the latter being based on the whole
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 statistical unit was chosen randomly. For example, if the mean height in a population of 21-year-old men is 1.75 meters, and one randomly chosen man is 1.80 meters tall, then the "error" is 0.05 meters; if the randomly chosen man is 1.70 meters tall, then the "error" is −0.05 meters. The expected value, being the mean of the entire population, is typically unobservable, and hence the statistical error cannot be observed either. A residual (or fitting deviation), on the other hand, is an observable ''estimate'' of the unobservable statistical error. Consider the previous example with men's heights and suppose we have a random sample of ''n'' people. The ''
sample mean The sample mean (or "empirical mean") and the sample covariance are statistics computed from a sample of data on one or more random variables. The sample mean is the average value (or mean value) of a sample of numbers taken from a larger popu ...
'' could serve as a good estimator of the ''population'' mean. Then we have: * The difference between the height of each man in the sample and the unobservable ''population'' mean is a ''statistical error'', whereas * The difference between the height of each man in the sample and the observable ''sample'' mean is a ''residual''. Note that, because of the definition of the sample mean, the sum of the residuals within a random sample is necessarily zero, and thus the residuals are necessarily ''not independent''. The statistical errors, on the other hand, are independent, and their sum within the random sample is almost surely not zero. One can standardize statistical errors (especially of a normal distribution) in a
z-score In statistics, the standard score is the number of standard deviations by which the value of a raw score (i.e., an observed value or data point) is above or below the mean value of what is being observed or measured. Raw scores above the mean ...
(or "standard score"), and standardize residuals in a ''t''-statistic, or more generally
studentized residuals In statistics, a studentized residual is the quotient resulting from the division of a residual by an estimate of its standard deviation. It is a form of a Student's ''t''-statistic, with the estimate of error varying between points. This is ...
.


In univariate distributions

If we assume a normally distributed population with mean μ and standard deviation σ, and choose individuals independently, then we have :X_1, \dots, X_n \sim N\left(\mu, \sigma^2\right)\, and the
sample mean The sample mean (or "empirical mean") and the sample covariance are statistics computed from a sample of data on one or more random variables. The sample mean is the average value (or mean value) of a sample of numbers taken from a larger popu ...
:\overline= is a random variable distributed such that: :\overline \sim N \left(\mu, \frac n \right). The ''statistical errors'' are then :e_i = X_i - \mu,\, with expected values of zero, whereas the ''residuals'' are :r_i = X_i - \overline. The sum of squares of the statistical errors, divided by ''σ''2, has a chi-squared distribution with ''n'' degrees of freedom: : \frac 1 \sum_^n e_i^2\sim\chi^2_n. However, this quantity is not observable as the population mean is unknown. The sum of squares of the residuals, on the other hand, is observable. The quotient of that sum by σ2 has a chi-squared distribution with only ''n'' − 1 degrees of freedom: : \frac 1 \sum_^n r_i^2 \sim \chi^2_. This difference between ''n'' and ''n'' − 1 degrees of freedom results in
Bessel's correction In statistics, Bessel's correction is the use of ''n'' − 1 instead of ''n'' in the formula for the sample variance and sample standard deviation, where ''n'' is the number of observations in a sample. This method corrects the bias in ...
for the estimation of sample variance of a population with unknown mean and unknown variance. No correction is necessary if the population mean is known.


Remark

It is remarkable that the sum of squares of the residuals and the sample mean can be shown to be independent of each other, using, e.g. Basu's theorem. That fact, and the normal and chi-squared distributions given above form the basis of calculations involving the
t-statistic In statistics, the ''t''-statistic is the ratio of the departure of the estimated value of a parameter from its hypothesized value to its standard error. It is used in hypothesis testing via Student's ''t''-test. The ''t''-statistic is used in a ...
: : T = \frac, where \overline_n - \mu_0 represents the errors, S_n represents the sample standard deviation for a sample of size ''n'', and unknown ''σ'', and the denominator term S_n/\sqrt n accounts for the standard deviation of the errors according to: \operatorname\left(\overline_n\right) = \frac n The probability distributions of the numerator and the denominator separately depend on the value of the unobservable population standard deviation ''σ'', but ''σ'' appears in both the numerator and the denominator and cancels. That is fortunate because it means that even though we do not know ''σ'', we know the probability distribution of this quotient: it has a Student's t-distribution with ''n'' − 1 degrees of freedom. We can therefore use this quotient to find a confidence interval for ''μ''. This t-statistic can be interpreted as "the number of standard errors away from the regression line."


Regressions

In regression analysis, the distinction between ''errors'' and ''residuals'' is subtle and important, and leads to the concept of
studentized residual In statistics, a studentized residual is the quotient resulting from the division of a residual by an estimate of its standard deviation. It is a form of a Student's ''t''-statistic, with the estimate of error varying between points. This is ...
s. Given an unobservable function that relates the independent variable to the dependent variable – say, a line – the deviations of the dependent variable observations from this function are the unobservable errors. If one runs a regression on some data, then the deviations of the dependent variable observations from the ''fitted'' function are the residuals. If the linear model is applicable, a scatterplot of residuals plotted against the independent variable should be random about zero with no trend to the residuals. If the data exhibit a trend, the regression model is likely incorrect; for example, the true function may be a quadratic or higher order polynomial. If they are random, or have no trend, but "fan out" - they exhibit a phenomenon called heteroscedasticity. If all of the residuals are equal, or do not fan out, they exhibit homoscedasticity. However, a terminological difference arises in the expression
mean squared error In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an estimator (of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference between ...
(MSE). The mean squared error of a regression is a number computed from the sum of squares of the computed ''residuals'', and not of the unobservable ''errors''. If that sum of squares is divided by ''n'', the number of observations, the result is the mean of the squared residuals. Since this is a biased estimate of the variance of the unobserved errors, the bias is removed by dividing the sum of the squared residuals by ''df'' = ''n'' − ''p'' − 1, instead of ''n'', where ''df'' is the number of degrees of freedom (''n'' minus the number of parameters (excluding the intercept) p being estimated - 1). This forms an unbiased estimate of the variance of the unobserved errors, and is called the mean squared error. Another method to calculate the mean square of error when analyzing the variance of linear regression using a technique like that used in
ANOVA Analysis of variance (ANOVA) is a collection of statistical models and their associated estimation procedures (such as the "variation" among and between groups) used to analyze the differences among means. ANOVA was developed by the statistician ...
(they are the same because ANOVA is a type of regression), the sum of squares of the residuals (aka sum of squares of the error) is divided by the degrees of freedom (where the degrees of freedom equal ''n'' − ''p'' − 1, where ''p'' is the number of parameters estimated in the model (one for each variable in the regression equation, not including the intercept)). One can then also calculate the mean square of the model by dividing the sum of squares of the model minus the degrees of freedom, which is just the number of parameters. Then the F value can be calculated by dividing the mean square of the model by the mean square of the error, and we can then determine significance (which is why you want the mean squares to begin with.). However, because of the behavior of the process of regression, the ''distributions'' of residuals at different data points (of the input variable) may vary ''even if'' the errors themselves are identically distributed. Concretely, in a linear regression where the errors are identically distributed, the variability of residuals of inputs in the middle of the domain will be ''higher'' than the variability of residuals at the ends of the domain: linear regressions fit endpoints better than the middle. This is also reflected in the influence functions of various data points on the
regression coefficient In statistics, linear regression is a linear approach for modelling the relationship between a scalar response and one or more explanatory variables (also known as dependent and independent variables). The case of one explanatory variable is cal ...
s: endpoints have more influence. Thus to compare residuals at different inputs, one needs to adjust the residuals by the expected variability of ''residuals,'' which is called
studentizing In statistics, Studentization, named after William Sealy Gosset, who wrote under the pseudonym ''Student'', is the adjustment consisting of division of a first-degree statistic derived from a sample, by a sample-based estimate of a population stan ...
. This is particularly important in the case of detecting
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 ...
, where the case in question is somehow different than the other's in a dataset. For example, a large residual may be expected in the middle of the domain, but considered an outlier at the end of the domain.


Other uses of the word "error" in statistics

The use of the term "error" as discussed in the sections above is in the sense of a deviation of a value from a hypothetical unobserved value. At least two other uses also occur in statistics, both referring to observable prediction errors: The '' ''mean squared error'' (MSE) refers to the amount by which the values predicted by an estimator differ from the quantities being estimated (typically outside the sample from which the model was estimated). The '' root mean square error'' (RMSE) is the square-root of MSE. The ''sum of squares of errors'' (SSE) is the MSE multiplied by the sample size. ''
Sum of squares of residuals In statistics, the residual sum of squares (RSS), also known as the sum of squared estimate of errors (SSE), is the sum of the squares of residuals (deviations predicted from actual empirical values of data). It is a measure of the discrepan ...
'' (SSR) is the sum of the squares of the deviations of the actual values from the predicted values, within the sample used for estimation. This is the basis for the least squares estimate, where the regression coefficients are chosen such that the SSR is minimal (i.e. its derivative is zero). Likewise, the ''
sum of absolute errors In statistics, mean absolute error (MAE) is a measure of Error (statistics), errors between paired observations expressing the same phenomenon. Examples of ''Y'' versus ''X'' include comparisons of predicted versus observed, subsequent time versus ...
'' (SAE) is the sum of the absolute values of the residuals, which is minimized in the least absolute deviations approach to regression. The mean error (ME) is the bias. The ''mean residual'' (MR) is always zero for least-squares estimators.


See also

*
Absolute deviation In mathematics and statistics, deviation is a measure of difference between the observed value of a variable and some other value, often that variable's mean. The sign of the deviation reports the direction of that difference (the deviation is posi ...
*
Consensus forecasts Used in a number of sciences, ranging from econometrics to meteorology, consensus forecasts are predictions of the future that are created by combining together several separate forecasts which have often been created using different methodologies ...
* Error detection and correction *
Explained sum of squares In statistics, the explained sum of squares (ESS), alternatively known as the model sum of squares or sum of squares due to regression (SSR – not to be confused with the residual sum of squares (RSS) or sum of squares of errors), is a quantity ...
*
Innovation (signal processing) In time series analysis (or forecasting) — as conducted in statistics, signal processing, and many other fields — the innovation is the difference between the observed value of a variable at time ''t'' and the optimal forecast of that value bas ...
* Lack-of-fit sum of squares *
Margin of error The margin of error is a statistic expressing the amount of random sampling error in the results of a survey. The larger the margin of error, the less confidence one should have that a poll result would reflect the result of a census of the e ...
*
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 ...
* Observational error * Propagation of error * Probable error * Random and systematic errors *
Reduced chi-squared statistic In statistics, the reduced chi-square statistic is used extensively in goodness of fit testing. It is also known as mean squared weighted deviation (MSWD) in isotopic dating and variance of unit weight in the context of weighted least squares. ...
* Regression dilution *
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 ...
*
Sampling error In statistics, sampling errors are incurred when the statistical characteristics of a population are estimated from a subset, or sample, of that population. Since the sample does not include all members of the population, statistics of the sample ( ...
*
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 ...
*
Studentized residual In statistics, a studentized residual is the quotient resulting from the division of a residual by an estimate of its standard deviation. It is a form of a Student's ''t''-statistic, with the estimate of error varying between points. This is ...
* Type I and type II errors


References

* * * *


External links

* {{DEFAULTSORT:Errors And Residuals In Statistics Statistical deviation and dispersion Regression analysis