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A ''t''-test is any
statistical hypothesis test A statistical hypothesis test is a method of statistical inference used to decide whether the data at hand sufficiently support a particular hypothesis. Hypothesis testing allows us to make probabilistic statements about population parameters. ...
in which the test statistic follows a Student's ''t''-distribution under the null hypothesis. It is most commonly applied when the test statistic would follow a normal distribution if the value of a scaling term in the test statistic were known (typically, the scaling term is unknown and therefore a nuisance parameter). When the scaling term is estimated based on the data, the test statistic—under certain conditions—follows a Student's ''t'' distribution. The ''t''-test's most common application is to test whether the means of two populations are different.


History

The term "''t''-statistic" is abbreviated from "hypothesis test statistic". In statistics, the t-distribution was first derived as a posterior distribution in 1876 by Helmert and Lüroth. The t-distribution also appeared in a more general form as Pearson Type IV distribution in
Karl Pearson Karl Pearson (; born Carl Pearson; 27 March 1857 – 27 April 1936) was an English mathematician and biostatistician. He has been credited with establishing the discipline of mathematical statistics. He founded the world's first university st ...
's 1895 paper. However, the T-Distribution, also known as
Student's t-distribution In probability and statistics, Student's ''t''-distribution (or simply the ''t''-distribution) is any member of a family of continuous probability distributions that arise when estimating the mean of a normally distributed population in sit ...
, gets its name from William Sealy Gosset who first published it in English in 1908 in the scientific journal
Biometrika ''Biometrika'' is a peer-reviewed scientific journal published by Oxford University Press for thBiometrika Trust The editor-in-chief is Paul Fearnhead (Lancaster University). The principal focus of this journal is theoretical statistics. It was es ...
using the pseudonym "Student" because his employer preferred staff to use pen names when publishing scientific papers. Gosset worked at the Guinness Brewery in Dublin, Ireland, and was interested in the problems of small samples – for example, the chemical properties of barley with small sample sizes. Hence a second version of the etymology of the term Student is that Guinness did not want their competitors to know that they were using the t-test to determine the quality of raw material (see Student's ''t''-distribution for a detailed history of this pseudonym, which is not to be confused with the literal term ''
student A student is a person enrolled in a school or other educational institution. In the United Kingdom and most commonwealth countries, a "student" attends a secondary school or higher (e.g., college or university); those in primary or elementar ...
''). Although it was William Gosset after whom the term "Student" is penned, it was actually through the work of Ronald Fisher that the distribution became well known as "Student's distribution" and "Student's t-test". Gosset had been hired owing to Claude Guinness's policy of recruiting the best graduates from Oxford and Cambridge to apply biochemistry and
statistics Statistics (from German language, German: ''wikt:Statistik#German, Statistik'', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of ...
to Guinness's industrial processes. Gosset devised the ''t''-test as an economical way to monitor the quality of
stout Stout is a dark, top-fermented beer with a number of variations, including dry stout, oatmeal stout, milk stout, and imperial stout. The first known use of the word ''stout'' for beer, in a document dated 1677 found in the Egerton Manuscript ...
. The ''t''-test work was submitted to and accepted in the journal ''
Biometrika ''Biometrika'' is a peer-reviewed scientific journal published by Oxford University Press for thBiometrika Trust The editor-in-chief is Paul Fearnhead (Lancaster University). The principal focus of this journal is theoretical statistics. It was es ...
'' and published in 1908. Guinness had a policy of allowing technical staff leave for study (so-called "study leave"), which Gosset used during the first two terms of the 1906–1907 academic year in Professor Karl Pearson's Biometric Laboratory at University College London. Gosset's identity was then known to fellow statisticians and to editor-in-chief Karl Pearson.


Uses

The most frequently used ''t''-tests are one-sample and two-sample tests: * A one-sample location test of whether the mean of a population has a value specified in a null hypothesis. * A two-sample location test of the null hypothesis such that the means of two populations are equal. All such tests are usually called Student's ''t''-tests, though strictly speaking that name should only be used if the variances of the two populations are also assumed to be equal; the form of the test used when this assumption is dropped is sometimes called Welch's ''t''-test. These tests are often referred to as unpaired or ''independent samples'' ''t''-tests, as they are typically applied when the statistical units underlying the two samples being compared are non-overlapping.


Assumptions

Most test statistics have the form , where and are functions of the data. may be sensitive to the alternative hypothesis (i.e., its magnitude tends to be larger when the alternative hypothesis is true), whereas is a scaling parameter that allows the distribution of to be determined. As an example, in the one-sample ''t''-test :t = \frac = \frac where is the sample mean from a sample , of size , is the standard error of the mean, \widehat\sigma is the estimate of the
standard deviation In statistics, the standard deviation is a measure of the amount of variation or dispersion of a set of values. A low standard deviation indicates that the values tend to be close to the mean (also called the expected value) of the set, while ...
of the population, and is the population mean. The assumptions underlying a ''t''-test in the simplest form above are that: * follows a normal distribution with mean and variance * follows a distribution with
degrees of freedom Degrees of freedom (often abbreviated df or DOF) refers to the number of independent variables or parameters of a thermodynamic system. In various scientific fields, the word "freedom" is used to describe the limits to which physical movement or ...
. This assumption is met when the observations used for estimating come from a normal distribution (and i.i.d for each group). * and are independent. In the ''t''-test comparing the means of two independent samples, the following assumptions should be met: * The means of the two populations being compared should follow
normal distributions In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu is t ...
. Under weak assumptions, this follows in large samples from the central limit theorem, even when the distribution of observations in each group is non-normal. * If using Student's original definition of the ''t''-test, the two populations being compared should have the same variance (testable using ''F''-test, Levene's test, Bartlett's test, or the Brown–Forsythe test; or assessable graphically using a Q–Q plot). If the sample sizes in the two groups being compared are equal, Student's original ''t''-test is highly robust to the presence of unequal variances. Welch's ''t''-test is insensitive to equality of the variances regardless of whether the sample sizes are similar. * The data used to carry out the test should either be sampled independently from the two populations being compared or be fully paired. This is in general not testable from the data, but if the data are known to be dependent (e.g. paired by test design), a dependent test has to be applied. For partially paired data, the classical independent ''t''-tests may give invalid results as the test statistic might not follow a ''t'' distribution, while the dependent ''t''-test is sub-optimal as it discards the unpaired data. Most two-sample ''t''-tests are robust to all but large deviations from the assumptions. For exactness, the ''t''-test and ''Z''-test require normality of the sample means, and the ''t''-test additionally requires that the sample variance follows a scaled ''χ'' distribution, and that the sample mean and sample variance be statistically independent. Normality of the individual data values is not required if these conditions are met. By the central limit theorem, sample means of moderately large samples are often well-approximated by a normal distribution even if the data are not normally distributed. For non-normal data, the distribution of the sample variance may deviate substantially from a ''χ'' distribution. However, if the sample size is large,
Slutsky's theorem In probability theory, Slutsky’s theorem extends some properties of algebraic operations on convergent sequences of real numbers to sequences of random variables. The theorem was named after Eugen Slutsky. Slutsky's theorem is also attributed ...
implies that the distribution of the sample variance has little effect on the distribution of the test statistic. That is as sample size n increases: * \sqrt(\bar - \mu) \xrightarrow N\left(0, \sigma^2\right) as per the Central limit theorem. * s^2 \xrightarrow \sigma^2 as per the
Law of large numbers In probability theory, the law of large numbers (LLN) is a theorem that describes the result of performing the same experiment a large number of times. According to the law, the average of the results obtained from a large number of trials shou ...
. * \therefore \frac \xrightarrow N(0, 1)


Unpaired and paired two-sample ''t''-tests

Two-sample ''t''-tests for a difference in means involve independent samples (unpaired samples) or paired samples. Paired ''t''-tests are a form of blocking, and have greater power (probability of avoiding a type II error, also known as a false negative) than unpaired tests when the paired units are similar with respect to "noise factors" that are independent of membership in the two groups being compared. In a different context, paired ''t''-tests can be used to reduce the effects of confounding factors in an observational study.


Independent (unpaired) samples

The independent samples ''t''-test is used when two separate sets of independent and identically distributed samples are obtained, and one variable from each of the two populations is compared. For example, suppose we are evaluating the effect of a medical treatment, and we enroll 100 subjects into our study, then randomly assign 50 subjects to the treatment group and 50 subjects to the control group. In this case, we have two independent samples and would use the unpaired form of the ''t''-test.


Paired samples

Paired samples ''t''-tests typically consist of a sample of matched pairs of similar units, or one group of units that has been tested twice (a "repeated measures" ''t''-test). A typical example of the repeated measures ''t''-test would be where subjects are tested prior to a treatment, say for high blood pressure, and the same subjects are tested again after treatment with a blood-pressure-lowering medication. By comparing the same patient's numbers before and after treatment, we are effectively using each patient as their own control. That way the correct rejection of the null hypothesis (here: of no difference made by the treatment) can become much more likely, with statistical power increasing simply because the random interpatient variation has now been eliminated. However, an increase of statistical power comes at a price: more tests are required, each subject having to be tested twice. Because half of the sample now depends on the other half, the paired version of Student's ''t''-test has only degrees of freedom (with being the total number of observations). Pairs become individual test units, and the sample has to be doubled to achieve the same number of degrees of freedom. Normally, there are degrees of freedom (with being the total number of observations). A paired samples ''t''-test based on a "matched-pairs sample" results from an unpaired sample that is subsequently used to form a paired sample, by using additional variables that were measured along with the variable of interest. The matching is carried out by identifying pairs of values consisting of one observation from each of the two samples, where the pair is similar in terms of other measured variables. This approach is sometimes used in observational studies to reduce or eliminate the effects of confounding factors. Paired samples ''t''-tests are often referred to as "dependent samples ''t''-tests".


Calculations

Explicit expressions that can be used to carry out various ''t''-tests are given below. In each case, the formula for a test statistic that either exactly follows or closely approximates a ''t''-distribution under the null hypothesis is given. Also, the appropriate
degrees of freedom Degrees of freedom (often abbreviated df or DOF) refers to the number of independent variables or parameters of a thermodynamic system. In various scientific fields, the word "freedom" is used to describe the limits to which physical movement or ...
are given in each case. Each of these statistics can be used to carry out either a one-tailed or two-tailed test. Once the ''t'' value and degrees of freedom are determined, a ''p''-value can be found using a table of values from Student's ''t''-distribution. If the calculated ''p''-value is below the threshold chosen for
statistical significance In statistical hypothesis testing, a result has statistical significance when it is very unlikely to have occurred given the null hypothesis (simply by chance alone). More precisely, a study's defined significance level, denoted by \alpha, is the p ...
(usually the 0.10, the 0.05, or 0.01 level), then the null hypothesis is rejected in favor of the alternative hypothesis.


One-sample ''t''-test

In testing the null hypothesis that the population mean is equal to a specified value , one uses the statistic : t = \frac where \bar x is the sample mean, is the sample standard deviation and is the sample size. The degrees of freedom used in this test are . Although the parent population does not need to be normally distributed, the distribution of the population of sample means \bar x is assumed to be normal. By the central limit theorem, if the observations are independent and the second moment exists, then t will be approximately normal N(0;1).


Slope of a regression line

Suppose one is fitting the model : Y = \alpha + \beta x + \varepsilon where is known, and are unknown, is a normally distributed random variable with mean 0 and unknown variance , and is the outcome of interest. We want to test the null hypothesis that the slope is equal to some specified value (often taken to be 0, in which case the null hypothesis is that and are uncorrelated). Let : \begin \widehat\alpha, \widehat\beta & = \text, \\ SE_, SE_ & = \text. \end Then : t_\text = \frac\sim\mathcal_ has a ''t''-distribution with degrees of freedom if the null hypothesis is true. The standard error of the slope coefficient: : SE_ = \frac can be written in terms of the residuals. Let : \begin \widehat\varepsilon_i & = y_i - \widehat y_i = y_i - \left(\widehat\alpha + \widehat\beta x_i\right) = \text = \text, \\ \text & = \sum_^n ^2 = \text. \end Then score is given by: : t_\text = \frac. Another way to determine the score is: : t_\text = \frac, where ''r'' is the Pearson correlation coefficient. The score, intercept can be determined from the score, slope: : t_\text = \frac \frac where is the sample variance.


Independent two-sample ''t''-test


Equal sample sizes and variance

Given two groups (1, 2), this test is only applicable when: *the two sample sizes are equal; *it can be assumed that the two distributions have the same variance; Violations of these assumptions are discussed below. The statistic to test whether the means are different can be calculated as follows: : t = \frac where : s_p = \sqrt. Here is the
pooled standard deviation In statistics, pooled variance (also known as combined variance, composite variance, or overall variance, and written \sigma^2) is a method for estimating variance of several different populations when the mean of each population may be different ...
for and and are the unbiased estimators of the population variance. The denominator of is the standard error of the difference between two means. For significance testing, the
degrees of freedom Degrees of freedom (often abbreviated df or DOF) refers to the number of independent variables or parameters of a thermodynamic system. In various scientific fields, the word "freedom" is used to describe the limits to which physical movement or ...
for this test is where is sample size.


Equal or unequal sample sizes, similar variances ( < < 2)

This test is used only when it can be assumed that the two distributions have the same variance. (When this assumption is violated, see below.) The previous formulae are a special case of the formulae below, one recovers them when both samples are equal in size: . The statistic to test whether the means are different can be calculated as follows: :t = \frac where : s_p = \sqrt is the
pooled standard deviation In statistics, pooled variance (also known as combined variance, composite variance, or overall variance, and written \sigma^2) is a method for estimating variance of several different populations when the mean of each population may be different ...
of the two samples: it is defined in this way so that its square is an unbiased estimator of the common variance whether or not the population means are the same. In these formulae, is the number of degrees of freedom for each group, and the total sample size minus two (that is, ) is the total number of degrees of freedom, which is used in significance testing.


Equal or unequal sample sizes, unequal variances (''s''''X''1 > 2''s''''X''2 or ''s''''X''2 > 2''s''''X''1)

This test, also known as Welch's ''t''-test, is used only when the two population variances are not assumed to be equal (the two sample sizes may or may not be equal) and hence must be estimated separately. The statistic to test whether the population means are different is calculated as: :t = \frac where :s_ = \sqrt. Here is the unbiased estimator of the variance of each of the two samples with = number of participants in group ( = 1 or 2). In this case (s_)^2 is not a pooled variance. For use in significance testing, the distribution of the test statistic is approximated as an ordinary Student's ''t''-distribution with the degrees of freedom calculated using : \mathrm = \frac. This is known as the
Welch–Satterthwaite equation In statistics and uncertainty analysis, the Welch–Satterthwaite equation is used to calculate an approximation to the effective degrees of freedom of a linear combination of independent sample variances, also known as the pooled degrees of free ...
. The true distribution of the test statistic actually depends (slightly) on the two unknown population variances (see Behrens–Fisher problem).


Exact method for unequal variances and sample sizes

The test deals with the famous Behrens–Fisher problem, i.e., comparing the difference between the means of two normally distributed populations when the variances of the two populations are not assumed to be equal, based on two independent samples. The test is developed as an exact test that allows for unequal sample sizes and unequal variances of two populations. The exact property still holds even with small extremely small and unbalanced sample sizes (e.g. n_1=5, n_2=50). The Te statistic to test whether the means are different can be calculated as follows: Let X = _1,X_2,\ldots,X_mT and Y = _1,Y_2,\ldots,Y_nT be the i.i.d. sample vectors (m>n) from N(\mu_1,\sigma_1^2) and N(\mu_2,\sigma_2^2) separately. Let (P^T)_ be an n\times n orthogonal matrix whose elements of the first row are all 1/\sqrt, similarly, let (Q^T)_ be the first n rows of an m\times m orthogonal matrix (whose elements of the first row are all 1/\sqrt). Then Z:=(Q^T)_X/\sqrt-(P^T)_Y/\sqrt is an n-dimensional normal random vector. :Z \sim N( (\mu_1-\mu_2,0,...,0)^T , (\frac+\frac)I_n). From the above distribution we see that : Z_1-(\mu_1-\mu_2)\sim N(0,\frac+\frac), :\frac\sim \frac\times(\frac+\frac) :Z_1-(\mu_1-\mu_2) \perp \sum_^n Z^2_i. :T_e := \frac \sim t_.


Dependent ''t''-test for paired samples

This test is used when the samples are dependent; that is, when there is only one sample that has been tested twice (repeated measures) or when there are two samples that have been matched or "paired". This is an example of a paired difference test. The ''t'' statistic is calculated as :t = \frac where \bar_D and s_D are the average and standard deviation of the differences between all pairs. The pairs are e.g. either one person's pre-test and post-test scores or between-pairs of persons matched into meaningful groups (for instance drawn from the same family or age group: see table). The constant is zero if we want to test whether the average of the difference is significantly different. The degree of freedom used is , where represents the number of pairs. : :


Worked examples

Let denote a set obtained by drawing a random sample of six measurements: :A_1=\ and let denote a second set obtained similarly: :A_2=\ These could be, for example, the weights of screws that were chosen out of a bucket. We will carry out tests of the null hypothesis that the means of the populations from which the two samples were taken are equal. The difference between the two sample means, each denoted by , which appears in the numerator for all the two-sample testing approaches discussed above, is :\bar_1 - \bar_2 = 0.095. The sample standard deviations for the two samples are approximately 0.05 and 0.11, respectively. For such small samples, a test of equality between the two population variances would not be very powerful. Since the sample sizes are equal, the two forms of the two-sample ''t''-test will perform similarly in this example.


Unequal variances

If the approach for unequal variances (discussed above) is followed, the results are :\sqrt \approx 0.04849 and the degrees of freedom :\text \approx 7.031. The test statistic is approximately 1.959, which gives a two-tailed test ''p''-value of 0.09077.


Equal variances

If the approach for equal variances (discussed above) is followed, the results are :s_p \approx 0.08396 and the degrees of freedom :\text = 10. The test statistic is approximately equal to 1.959, which gives a two-tailed ''p''-value of 0.07857.


Related statistical tests


Alternatives to the ''t''-test for location problems

The ''t''-test provides an exact test for the equality of the means of two i.i.d. normal populations with unknown, but equal, variances. ( Welch's ''t''-test is a nearly exact test for the case where the data are normal but the variances may differ.) For moderately large samples and a one tailed test, the ''t''-test is relatively robust to moderate violations of the normality assumption. In large enough samples, the t-test asymptotically approaches the ''z''-test, and becomes robust even to large deviations from normality. If the data are substantially non-normal and the sample size is small, the ''t''-test can give misleading results. See Location test for Gaussian scale mixture distributions for some theory related to one particular family of non-normal distributions. When the normality assumption does not hold, a non-parametric alternative to the ''t''-test may have better
statistical power In statistics, the power of a binary hypothesis test is the probability that the test correctly rejects the null hypothesis (H_0) when a specific alternative hypothesis (H_1) is true. It is commonly denoted by 1-\beta, and represents the chances ...
. However, when data are non-normal with differing variances between groups, a t-test may have better type-1 error control than some non-parametric alternatives. Furthermore, non-parametric methods, such as the Mann-Whitney U test discussed below, typically do not test for a difference of means, so should be used carefully if a difference of means is of primary scientific interest. For example, Mann-Whitney U test will keep the type 1 error at the desired level alpha if both groups have the same distribution. It will also have power in detecting an alternative by which group B has the same distribution as A but after some shift by a constant (in which case there would indeed be a difference in the means of the two groups). However, there could be cases where group A and B will have different distributions but with the same means (such as two distributions, one with positive skewness and the other with a negative one, but shifted so to have the same means). In such cases, MW could have more than alpha level power in rejecting the Null hypothesis but attributing the interpretation of difference in means to such a result would be incorrect. In the presence of an
outlier 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 ...
, the t-test is not robust. For example, for two independent samples when the data distributions are asymmetric (that is, the distributions are
skewed In probability theory and statistics, skewness is a measure of the asymmetry of the probability distribution of a real-valued random variable about its mean. The skewness value can be positive, zero, negative, or undefined. For a unimoda ...
) or the distributions have large tails, then the Wilcoxon rank-sum test (also known as the Mann–Whitney ''U'' test) can have three to four times higher power than the ''t''-test. The nonparametric counterpart to the paired samples ''t''-test is the Wilcoxon signed-rank test for paired samples. For a discussion on choosing between the ''t''-test and nonparametric alternatives, see Lumley, et al. (2002). One-way analysis of variance (ANOVA) generalizes the two-sample ''t''-test when the data belong to more than two groups.


A design which includes both paired observations and independent observations

When both paired observations and independent observations are present in the two sample design, assuming data are missing completely at random (MCAR), the paired observations or independent observations may be discarded in order to proceed with the standard tests above. Alternatively making use of all of the available data, assuming normality and MCAR, the generalized partially overlapping samples t-test could be used.


Multivariate testing

A generalization of Student's ''t'' statistic, called Hotelling's ''t''-squared statistic, allows for the testing of hypotheses on multiple (often correlated) measures within the same sample. For instance, a researcher might submit a number of subjects to a personality test consisting of multiple personality scales (e.g. the
Minnesota Multiphasic Personality Inventory The Minnesota Multiphasic Personality Inventory (MMPI) is a standardized psychometric test of adult personality and psychopathology. Psychologists and other mental health professionals use various versions of the MMPI to help develop treatment ...
). Because measures of this type are usually positively correlated, it is not advisable to conduct separate univariate ''t''-tests to test hypotheses, as these would neglect the covariance among measures and inflate the chance of falsely rejecting at least one hypothesis ( Type I error). In this case a single multivariate test is preferable for hypothesis testing. Fisher's Method for combining multiple tests with ''
alpha Alpha (uppercase , lowercase ; grc, ἄλφα, ''álpha'', or ell, άλφα, álfa) is the first letter of the Greek alphabet. In the system of Greek numerals, it has a value of one. Alpha is derived from the Phoenician letter aleph , whic ...
'' reduced for positive correlation among tests is one. Another is Hotelling's ''T'' statistic follows a ''T'' distribution. However, in practice the distribution is rarely used, since tabulated values for ''T'' are hard to find. Usually, ''T'' is converted instead to an ''F'' statistic. For a one-sample multivariate test, the hypothesis is that the mean vector () is equal to a given vector (). The test statistic is Hotelling's ''t'': : t^2=n(\bar-)'^(\bar-) where is the sample size, is the vector of column means and is an sample covariance matrix. For a two-sample multivariate test, the hypothesis is that the mean vectors () of two samples are equal. The test statistic is Hotelling's two-sample ''t'': :t^2 = \frac\left(\bar_1-\bar_2\right)'^\left(\bar_1-\bar_2\right).


Software implementations

Many spreadsheet programs and statistics packages, such as
QtiPlot QtiPlot is a cross-platform computer program for interactive Plot (graphics), scientific graphing and data analysis. It is similar to the proprietary programs Origin (data analysis software), Origin or SigmaPlot. QtiPlot can be used to present 2 ...
, LibreOffice Calc, Microsoft Excel,
SAS SAS or Sas may refer to: Arts, entertainment, and media * ''SAS'' (novel series), a French book series by Gérard de Villiers * ''Shimmer and Shine'', an American animated children's television series * Southern All Stars, a Japanese rock ba ...
, SPSS,
Stata Stata (, , alternatively , occasionally stylized as STATA) is a general-purpose statistical software package developed by StataCorp for data manipulation, visualization, statistics, and automated reporting. It is used by researchers in many fie ...
, DAP, gretl, R, Python, PSPP, MATLAB and Minitab, include implementations of Student's ''t''-test.


See also

*
Conditional change model The conditional change model in statistics is the analytic procedure in which change scores are regressed on baseline values, together with the explanatory variables of interest (often including indicators of treatment groups). The method has som ...
* ''F''-test * Noncentral ''t''-distribution in power analysis * Student's ''t''-statistic * ''Z''-test * Mann–Whitney ''U'' test * Šidák correction for ''t''-test * Welch's ''t''-test * Analysis of variance (ANOVA)


References


Citations


Sources

* *


Further reading

* *


External links

* * Trochim, William M.K.
The T-Test
, ''Research Methods Knowledge Base'', conjoint.ly * by Mark Thoma {{DEFAULTSORT:Student's T-Test Statistical tests Parametric statistics