Pearson X-squared Statistic
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Pearson's chi-squared test (\chi^2) is a statistical test applied to sets of categorical data to evaluate how likely it is that any observed difference between the sets arose by chance. It is the most widely used of many
chi-squared test A chi-squared test (also chi-square or test) is a statistical hypothesis test used in the analysis of contingency tables when the sample sizes are large. In simpler terms, this test is primarily used to examine whether two categorical variable ...
s (e.g.,
Yates Yates may refer to: Places United States *Fort Yates, North Dakota *Yates Spring, a spring in Georgia, United States *Yates City, Illinois * Yates Township, Illinois *Yates Center, Kansas * Yates, Michigan * Yates Township, Michigan * Yates, Misso ...
, likelihood ratio, portmanteau test in time series, etc.) –
statistical Statistics (from German: ''Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industria ...
procedures whose results are evaluated by reference to the chi-squared distribution. Its properties were first investigated by
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 ...
in 1900. In contexts where it is important to improve a distinction between the test statistic and its distribution, names similar to ''Pearson χ-squared'' test or statistic are used. It tests a null hypothesis stating that the frequency distribution of certain
event Event may refer to: Gatherings of people * Ceremony, an event of ritual significance, performed on a special occasion * Convention (meeting), a gathering of individuals engaged in some common interest * Event management, the organization of eve ...
s observed in a
sample Sample or samples may refer to: Base meaning * Sample (statistics), a subset of a population – complete data set * Sample (signal), a digital discrete sample of a continuous analog signal * Sample (material), a specimen or small quantity of s ...
is consistent with a particular theoretical distribution. The events considered must be mutually exclusive and have total probability 1. A common case for this is where the events each cover an outcome of a
categorical variable In statistics, a categorical variable (also called qualitative variable) is a variable that can take on one of a limited, and usually fixed, number of possible values, assigning each individual or other unit of observation to a particular group or ...
. A simple example is the hypothesis that an ordinary six-sided is "fair" (i. e., all six outcomes are equally likely to occur.)


Definition

Pearson's chi-squared test is used to assess three types of comparison: goodness of fit, homogeneity, and independence. * A test of goodness of fit establishes whether an observed frequency distribution differs from a theoretical distribution. * A test of homogeneity compares the distribution of counts for two or more groups using the same categorical variable (e.g. choice of activity—college, military, employment, travel—of graduates of a high school reported a year after graduation, sorted by graduation year, to see if number of graduates choosing a given activity has changed from class to class, or from decade to decade).David E. Bock, Paul F. Velleman, Richard D. De Veaux (2007). "Stats, Modeling the World," pp. 606-627, Pearson Addison Wesley, Boston, * A test of independence assesses whether observations consisting of measures on two variables, expressed in a
contingency table In statistics, a contingency table (also known as a cross tabulation or crosstab) is a type of table in a matrix format that displays the (multivariate) frequency distribution of the variables. They are heavily used in survey research, business i ...
, are independent of each other (e.g. polling responses from people of different nationalities to see if one's nationality is related to the response). For all three tests, the computational procedure includes the following steps: # Calculate the chi-squared test
statistic A statistic (singular) or sample statistic is any quantity computed from values in a sample which is considered for a statistical purpose. Statistical purposes include estimating a population parameter, describing a sample, or evaluating a hypo ...
, \chi^2, which resembles a normalized sum of squared deviations between observed and theoretical
frequencies Frequency is the number of occurrences of a repeating event per unit of time. It is also occasionally referred to as ''temporal frequency'' for clarity, and is distinct from ''angular frequency''. Frequency is measured in hertz (Hz) which is eq ...
(see below). # Determine 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 ...
, df, of that statistic. ## For a test of goodness-of-fit, , where ''Cats'' is the number of observation categories recognized by the model, and ''Parms'' is the number of parameters in the model adjusted to make the model best fit the observations: The number of categories reduced by the number of fitted parameters in the distribution. ## For a test of homogeneity, , where ''Rows'' corresponds to the number of categories (i.e. rows in the associated contingency table), and ''Cols'' corresponds to the number of independent groups (i.e. columns in the associated contingency table). ## For a test of independence, , where in this case, ''Rows'' corresponds to the number of categories in one variable, and ''Cols'' corresponds to the number of categories in the second variable. # Select a desired level of confidence ( significance level, ''p''-value, or the corresponding alpha level) for the result of the test. # Compare \chi^2 to the critical value from the chi-squared distribution with ''df'' degrees of freedom and the selected confidence level (one-sided, since the test is only in one direction, i.e. is the test value greater than the critical value?), which in many cases gives a good approximation of the distribution of \chi^2. # Sustain or reject the null hypothesis that the observed frequency distribution is the same as the theoretical distribution based on whether the test statistic exceeds the critical value of \chi^2. If the test statistic exceeds the critical value of \chi^2, the null hypothesis (H_0 = there is ''no'' difference between the distributions) can be rejected, and the alternative hypothesis (H_1 = there ''is'' a difference between the distributions) can be accepted, both with the selected level of confidence. If the test statistic falls below the threshold \chi^2 value, then no clear conclusion can be reached, and the null hypothesis is sustained (we fail to reject the null hypothesis), though not necessarily accepted.


Test for fit of a distribution


Discrete uniform distribution

In this case N observations are divided among n cells. A simple application is to test the hypothesis that, in the general population, values would occur in each cell with equal frequency. The "theoretical frequency" for any cell (under the null hypothesis of a
discrete uniform distribution In probability theory and statistics, the discrete uniform distribution is a symmetric probability distribution wherein a finite number of values are equally likely to be observed; every one of ''n'' values has equal probability 1/''n''. Anothe ...
) is thus calculated as :E_i=\frac\, , and the reduction in the degrees of freedom is p=1, notionally because the observed frequencies O_i are constrained to sum to N. One specific example of its application would be its application for log-rank test.


Other distributions

When testing whether observations are random variables whose distribution belongs to a given family of distributions, the "theoretical frequencies" are calculated using a distribution from that family fitted in some standard way. The reduction in the degrees of freedom is calculated as p=s+1, where s is the number of parameters used in fitting the distribution. For instance, when checking a three-parameter Generalized gamma distribution, p=4, and when checking a normal distribution (where the parameters are mean and standard deviation), p=3, and when checking a Poisson distribution (where the parameter is the expected value), p=2. Thus, there will be n-p degrees of freedom, where n is the number of categories. The degrees of freedom are not based on the number of observations as with a
Student's t 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 situa ...
or F-distribution. For example, if testing for a fair, six-sided , there would be five degrees of freedom because there are six categories or parameters (each number); the number of times the die is rolled does not influence the number of degrees of freedom.


Calculating the test-statistic

The value of the test-statistic is : \chi^2 = \sum_^ \frac = N \sum_^n \frac where * \chi^2 = Pearson's cumulative test statistic, which asymptotically approaches a \chi^2 distribution. *O_i = the number of observations of type ''i''. *N = total number of observations *E_i = N p_i = the expected (theoretical) count of type ''i'', asserted by the null hypothesis that the fraction of type ''i'' in the population is p_i *n = the number of cells in the table. The chi-squared statistic can then be used to calculate a
p-value In null-hypothesis significance testing, the ''p''-value is the probability of obtaining test results at least as extreme as the result actually observed, under the assumption that the null hypothesis is correct. A very small ''p''-value means ...
by comparing the value of the statistic to a chi-squared distribution. The number of
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 ...
is equal to the number of cells n, minus the reduction in degrees of freedom, p. The result about the numbers of degrees of freedom is valid when the original data are multinomial and hence the estimated parameters are efficient for minimizing the chi-squared statistic. More generally however, when maximum likelihood estimation does not coincide with minimum chi-squared estimation, the distribution will lie somewhere between a chi-squared distribution with n-1-p and n-1 degrees of freedom (See for instance Chernoff and Lehmann, 1954).


Bayesian method

In Bayesian statistics, one would instead use a
Dirichlet distribution In probability and statistics, the Dirichlet distribution (after Peter Gustav Lejeune Dirichlet), often denoted \operatorname(\boldsymbol\alpha), is a family of continuous multivariate probability distributions parameterized by a vector \boldsymb ...
as conjugate prior. If one took a uniform prior, then the maximum likelihood estimate for the population probability is the observed probability, and one may compute a credible region around this or another estimate.


Testing for statistical independence

In this case, an "observation" consists of the values of two outcomes and the null hypothesis is that the occurrence of these outcomes is statistically independent. Each observation is allocated to one cell of a two-dimensional array of cells (called a
contingency table In statistics, a contingency table (also known as a cross tabulation or crosstab) is a type of table in a matrix format that displays the (multivariate) frequency distribution of the variables. They are heavily used in survey research, business i ...
) according to the values of the two outcomes. If there are ''r'' rows and ''c'' columns in the table, the "theoretical frequency" for a cell, given the hypothesis of independence, is :E_= N p_ p_ , where N is the total sample size (the sum of all cells in the table), and : p_ = \frac = \sum_^c \frac, is the fraction of observations of type ''i'' ignoring the column attribute (fraction of row totals), and : p_ = \frac = \sum_^r \frac is the fraction of observations of type ''j'' ignoring the row attribute (fraction of column totals). The term "
frequencies Frequency is the number of occurrences of a repeating event per unit of time. It is also occasionally referred to as ''temporal frequency'' for clarity, and is distinct from ''angular frequency''. Frequency is measured in hertz (Hz) which is eq ...
" refers to absolute numbers rather than already normalized values. The value of the test-statistic is : \chi^2 = \sum_^ \sum_^ : \ \ \ \ = N \sum_ p_p_ \left(\frac\right)^2 Note that \chi^2 is 0 if and only if O_ = E_ \forall i,j , i.e. only if the expected and true number of observations are equal in all cells. Fitting the model of "independence" reduces the number of degrees of freedom by ''p'' = ''r'' + ''c'' − 1. The number of
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 ...
is equal to the number of cells ''rc'', minus the reduction in degrees of freedom, ''p'', which reduces to (''r'' − 1)(''c'' − 1). For the test of independence, also known as the test of homogeneity, a chi-squared probability of less than or equal to 0.05 (or the chi-squared statistic being at or larger than the 0.05 critical point) is commonly interpreted by applied workers as justification for rejecting the null hypothesis that the row variable is independent of the column variable. The
alternative hypothesis In statistical hypothesis testing, the alternative hypothesis is one of the proposed proposition in the hypothesis test. In general the goal of hypothesis test is to demonstrate that in the given condition, there is sufficient evidence supporting ...
corresponds to the variables having an association or relationship where the structure of this relationship is not specified.


Assumptions

The chi-squared test, when used with the standard approximation that a chi-squared distribution is applicable, has the following assumptions: ; Simple random sample: The sample data is a random sampling from a fixed distribution or population where every collection of members of the population of the given sample size has an equal probability of selection. Variants of the test have been developed for complex samples, such as where the data is weighted. Other forms can be used such as purposive sampling. ; Sample size (whole table): A sample with a sufficiently large size is assumed. If a chi squared test is conducted on a sample with a smaller size, then the chi squared test will yield an inaccurate inference. The researcher, by using chi squared test on small samples, might end up committing a Type II error. For small sample sizes the
Cash test In economics, cash is money in the physical form of currency, such as banknotes and coins. In bookkeeping and financial accounting, cash is current assets comprising currency or currency equivalents that can be accessed immediately or near-immed ...
is preferred. ; Expected cell count: Adequate expected cell counts. Some require 5 or more, and others require 10 or more. A common rule is 5 or more in all cells of a 2-by-2 table, and 5 or more in 80% of cells in larger tables, but no cells with zero expected count. When this assumption is not met, Yates's correction is applied. ; Independence: The observations are always assumed to be independent of each other. This means chi-squared cannot be used to test correlated data (like matched pairs or panel data). In those cases,
McNemar's test In statistics, McNemar's test is a statistical test used on paired nominal data. It is applied to 2 × 2 contingency tables with a dichotomous trait, with matched pairs of subjects, to determine whether the row and column marginal fre ...
may be more appropriate. A test that relies on different assumptions is Fisher's exact test; if its assumption of fixed marginal distributions is met it is substantially more accurate in obtaining a significance level, especially with few observations. In the vast majority of applications this assumption will not be met, and Fisher's exact test will be over conservative and not have correct coverage.


Derivation

The null distribution of the Pearson statistic with ''j'' rows and ''k'' columns is approximated by the chi-squared distribution with (''k'' − 1)(''j'' − 1) degrees of freedom.Statistics for Applications. ''MIT OpenCourseWare''
Lecture 23
Pearson's Theorem. Retrieved 21 March 2007.
This approximation arises as the true distribution, under the null hypothesis, if the expected value is given by a multinomial distribution. For large sample sizes, the central limit theorem says this distribution tends toward a certain multivariate normal distribution.


Two cells

In the special case where there are only two cells in the table, the expected values follow a
binomial distribution In probability theory and statistics, the binomial distribution with parameters ''n'' and ''p'' is the discrete probability distribution of the number of successes in a sequence of ''n'' independent experiments, each asking a yes–no quest ...
, : O \ \sim \ \mbox(n,p), \, where :''p'' = probability, under the null hypothesis, :''n'' = number of observations in the sample. In the above example the hypothesised probability of a male observation is 0.5, with 100 samples. Thus we expect to observe 50 males. If ''n'' is sufficiently large, the above binomial distribution may be approximated by a Gaussian (normal) distribution and thus the Pearson test statistic approximates a chi-squared distribution, : \text(n,p) \approx \text(np, np(1-p)). \, Let ''O''1 be the number of observations from the sample that are in the first cell. The Pearson test statistic can be expressed as : \frac + \frac, which can in turn be expressed as : \left(\frac\right)^2. By the normal approximation to a binomial this is the squared of one standard normal variate, and hence is distributed as chi-squared with 1 degree of freedom. Note that the denominator is one standard deviation of the Gaussian approximation, so can be written : \frac. So as consistent with the meaning of the chi-squared distribution, we are measuring how probable the observed number of standard deviations away from the mean is under the Gaussian approximation (which is a good approximation for large ''n''). The chi-squared distribution is then integrated on the right of the statistic value to obtain the
P-value In null-hypothesis significance testing, the ''p''-value is the probability of obtaining test results at least as extreme as the result actually observed, under the assumption that the null hypothesis is correct. A very small ''p''-value means ...
, which is equal to the probability of getting a statistic equal or bigger than the observed one, assuming the null hypothesis.


Two-by-two contingency tables

When the test is applied to a
contingency table In statistics, a contingency table (also known as a cross tabulation or crosstab) is a type of table in a matrix format that displays the (multivariate) frequency distribution of the variables. They are heavily used in survey research, business i ...
containing two rows and two columns, the test is equivalent to a Z-test of proportions.


Many cells

Broadly similar arguments as above lead to the desired result, though the details are more involved. One may apply an orthogonal change of variables to turn the limiting summands in the test statistic into one fewer squares of i.i.d. standard normal random variables. Let us now prove that the distribution indeed approaches asymptotically the \chi^2 distribution as the number of observations approaches infinity. Let n be the number of observations, m the number of cells and p_i the probability of an observation to fall in the i-th cell, for 1\le i\le m. We denote by \ the configuration where for each i there are k_i observations in the i-th cell. Note that :\sum_^m k_i = n \qquad \text \qquad \sum_^m p_i = 1. Let \chi^2_P(\,\) be Pearson's cumulative test statistic for such a configuration, and let \chi^2_P(\) be the distribution of this statistic. We will show that the latter probability approaches the \chi^2 distribution with m-1 degrees of freedom, as n \to \infty. For any arbitrary value T: : P(\chi^2_P(\) > T) = \sum_ \frac \prod_^m ^ We will use a procedure similar to the approximation in de Moivre–Laplace theorem. Contributions from small k_i are of subleading order in n and thus for large n we may use
Stirling's formula In mathematics, Stirling's approximation (or Stirling's formula) is an approximation for factorials. It is a good approximation, leading to accurate results even for small values of n. It is named after James Stirling, though a related but less ...
for both n! and k_i! to get the following: :P(\chi^2_P(\) > T) \sim \sum_ \prod_^m \left (\frac\right)^ \sqrt By substituting for :x_i = \frac, \qquad i = 1, \cdots, m-1, we may approximate for large n the sum over the k_i by an integral over the x_i. Noting that: :k_m = np_m-\sqrt \sum_^x_i, we arrive at : \begin P(\chi^2_P (\) > T) &\sim \sqrt \int_ \left \ \left \ \\ &= \sqrt \int_ \left \\times \\ &\qquad \qquad \times \left \ \end By expanding the logarithm and taking the leading terms in n, we get : P(\chi^2_P(\) > T) \sim \frac \int_ \left \ \prod_^ \exp\left \frac\sum_^\frac -\frac\left (\sum_^ \right )^2 \right/math> Pearson's chi, \chi^2_P(\,\) = \chi^2_P(\,\), is precisely the argument of the exponent (except for the -1/2; note that the final term in the exponent's argument is equal to (k_m-n p_m)^2/(n p_m)). This argument can be written as: :-\frac\sum_^x_i A_ x_j, \qquad i,j = 1, \cdots, m-1, \quad A_ = \tfrac + \tfrac. A is a regular symmetric (m-1) \times (m-1) matrix, and hence diagonalizable. It is therefore possible to make a linear change of variables in \ so as to get m-1 new variables \ so that: :\sum_^x_i A_ x_j = \sum_^y_i^2. This linear change of variables merely multiplies the integral by a constant
Jacobian In mathematics, a Jacobian, named for Carl Gustav Jacob Jacobi, may refer to: *Jacobian matrix and determinant *Jacobian elliptic functions *Jacobian variety *Intermediate Jacobian In mathematics, the intermediate Jacobian of a compact Kähler m ...
, so we get: :P(\chi^2_P(\) > T) \sim C \int_ \left\ \prod_^ \exp\left \frac\left(\sum_^ y_i^2 \right)\right/math> Where C is a constant. This is the probability that squared sum of m-1 independent normally distributed variables of zero mean and unit variance will be greater than T, namely that \chi^2 with m-1 degrees of freedom is larger than T. We have thus shown that at the limit where n \to \infty, the distribution of Pearson's chi approaches the chi distribution with m-1 degrees of freedom.


Examples


Fairness of dice

A 6-sided die is thrown 60 times. The number of times it lands with 1, 2, 3, 4, 5 and 6 face up is 5, 8, 9, 8, 10 and 20, respectively. Is the die biased, according to the Pearson's chi-squared test at a significance level of 95% and/or 99%? The null hypothesis is that the die is unbiased, hence each number is expected to occur the same number of times, in this case, = 10. The outcomes can be tabulated as follows: We then consult an
Upper-tail critical values of chi-square distribution
' table. There the tabular value refers to the sum (not the average) of the given number (N=60 trials) of squared Normal variables, so 13.4 is the experimental result whose unlikeliness (with a fair die) we wish to estimate. The experimental sum of 13.4 is between the critical values of 97.5% and 99% significance or confidence (
p-value In null-hypothesis significance testing, the ''p''-value is the probability of obtaining test results at least as extreme as the result actually observed, under the assumption that the null hypothesis is correct. A very small ''p''-value means ...
). Specifically, getting 20 rolls of 6, when the expectation is only 10 such values, is unlikely with a fair die.


Goodness of fit

In this context, the
frequencies Frequency is the number of occurrences of a repeating event per unit of time. It is also occasionally referred to as ''temporal frequency'' for clarity, and is distinct from ''angular frequency''. Frequency is measured in hertz (Hz) which is eq ...
of both theoretical and empirical distributions are unnormalised counts, and for a chi-squared test the total sample sizes N of both these distributions (sums of all cells of the corresponding
contingency tables In statistics, a contingency table (also known as a cross tabulation or crosstab) is a type of table in a matrix format that displays the (multivariate) frequency distribution of the variables. They are heavily used in survey research, business ...
) have to be the same. For example, to test the hypothesis that a random sample of 100 people has been drawn from a population in which men and women are equal in frequency, the observed number of men and women would be compared to the theoretical frequencies of 50 men and 50 women. If there were 44 men in the sample and 56 women, then : \chi^2 = + = 1.44. If the null hypothesis is true (i.e., men and women are chosen with equal probability), the test statistic will be drawn from a chi-squared distribution with one degree of freedom (because if the male frequency is known, then the female frequency is determined). Consultation of the chi-squared distribution for 1 degree of freedom shows that the probability of observing this difference (or a more extreme difference than this) if men and women are equally numerous in the population is approximately 0.23. This probability is higher than conventional criteria 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 ...
(0.01 or 0.05), so normally we would not reject the null hypothesis that the number of men in the population is the same as the number of women (i.e., we would consider our sample within the range of what we would expect for a 50/50 male/female ratio.)


Problems

The approximation to the chi-squared distribution breaks down if expected frequencies are too low. It will normally be acceptable so long as no more than 20% of the events have expected frequencies below 5. Where there is only 1 degree of freedom, the approximation is not reliable if expected frequencies are below 10. In this case, a better approximation can be obtained by reducing the absolute value of each difference between observed and expected frequencies by 0.5 before squaring; this is called
Yates's correction for continuity In statistics, Yates's correction for continuity (or Yates's chi-squared test) is used in certain situations when testing for independence (probability theory), independence in a contingency table. It aims at correcting the error introduced by assum ...
. In cases where the expected value, E, is found to be small (indicating a small underlying population probability, and/or a small number of observations), the normal approximation of the multinomial distribution can fail, and in such cases it is found to be more appropriate to use the G-test, a likelihood ratio-based test statistic. When the total sample size is small, it is necessary to use an appropriate exact test, typically either the binomial test or, for
contingency tables In statistics, a contingency table (also known as a cross tabulation or crosstab) is a type of table in a matrix format that displays the (multivariate) frequency distribution of the variables. They are heavily used in survey research, business ...
, Fisher's exact test. This test uses the conditional distribution of the test statistic given the marginal totals, and thus assumes that the margins were determined before the study; alternatives such as Boschloo's test which do not make this assumption are
uniformly more powerful In statistical hypothesis testing, a uniformly most powerful (UMP) test is a hypothesis test which has the greatest power 1 - \beta among all possible tests of a given size ''α''. For example, according to the Neyman–Pearson lemma, the likeli ...
. It can be shown that the \chi^2 test is a low order approximation of the \Psi test. (''Link is to a fragmentary edition of March 1996''.) The above reasons for the above issues become apparent when the higher order terms are investigated.


See also

* Chi-squared nomogram * Cramér's V – a measure of correlation for the chi-squared test * Degrees of freedom (statistics) * Deviance (statistics), another measure of the quality of fit * Fisher's exact test * G-test, test to which chi-squared test is an approximation * Lexis ratio, earlier statistic, replaced by chi-squared *
Mann–Whitney U test In statistics, the Mann–Whitney ''U'' test (also called the Mann–Whitney–Wilcoxon (MWW/MWU), Wilcoxon rank-sum test, or Wilcoxon–Mann–Whitney test) is a nonparametric test of the null hypothesis that, for randomly selected values ''X'' ...
* Median test *
Minimum chi-square estimation In statistics, minimum chi-square estimation is a method of estimation of unobserved quantities based on observed data. In certain chi-square tests, one rejects a null hypothesis about a population distribution if a specified test statistic is too ...


Notes


References

* * * {{Statistics Statistical tests for contingency tables Normality tests Statistical approximations