| """ |
| Contingency table functions (:mod:`scipy.stats.contingency`) |
| ============================================================ |
| |
| Functions for creating and analyzing contingency tables. |
| |
| .. currentmodule:: scipy.stats.contingency |
| |
| .. autosummary:: |
| :toctree: generated/ |
| |
| chi2_contingency |
| relative_risk |
| odds_ratio |
| crosstab |
| association |
| |
| expected_freq |
| margins |
| |
| """ |
|
|
|
|
| from functools import reduce |
| import math |
| import numpy as np |
| from ._stats_py import power_divergence, _untabulate |
| from ._relative_risk import relative_risk |
| from ._crosstab import crosstab |
| from ._odds_ratio import odds_ratio |
| from scipy._lib._bunch import _make_tuple_bunch |
| from scipy import stats |
|
|
|
|
| __all__ = ['margins', 'expected_freq', 'chi2_contingency', 'crosstab', |
| 'association', 'relative_risk', 'odds_ratio'] |
|
|
|
|
| def margins(a): |
| """Return a list of the marginal sums of the array `a`. |
| |
| Parameters |
| ---------- |
| a : ndarray |
| The array for which to compute the marginal sums. |
| |
| Returns |
| ------- |
| margsums : list of ndarrays |
| A list of length `a.ndim`. `margsums[k]` is the result |
| of summing `a` over all axes except `k`; it has the same |
| number of dimensions as `a`, but the length of each axis |
| except axis `k` will be 1. |
| |
| Examples |
| -------- |
| >>> import numpy as np |
| >>> from scipy.stats.contingency import margins |
| |
| >>> a = np.arange(12).reshape(2, 6) |
| >>> a |
| array([[ 0, 1, 2, 3, 4, 5], |
| [ 6, 7, 8, 9, 10, 11]]) |
| >>> m0, m1 = margins(a) |
| >>> m0 |
| array([[15], |
| [51]]) |
| >>> m1 |
| array([[ 6, 8, 10, 12, 14, 16]]) |
| |
| >>> b = np.arange(24).reshape(2,3,4) |
| >>> m0, m1, m2 = margins(b) |
| >>> m0 |
| array([[[ 66]], |
| [[210]]]) |
| >>> m1 |
| array([[[ 60], |
| [ 92], |
| [124]]]) |
| >>> m2 |
| array([[[60, 66, 72, 78]]]) |
| """ |
| margsums = [] |
| ranged = list(range(a.ndim)) |
| for k in ranged: |
| marg = np.apply_over_axes(np.sum, a, [j for j in ranged if j != k]) |
| margsums.append(marg) |
| return margsums |
|
|
|
|
| def expected_freq(observed): |
| """ |
| Compute the expected frequencies from a contingency table. |
| |
| Given an n-dimensional contingency table of observed frequencies, |
| compute the expected frequencies for the table based on the marginal |
| sums under the assumption that the groups associated with each |
| dimension are independent. |
| |
| Parameters |
| ---------- |
| observed : array_like |
| The table of observed frequencies. (While this function can handle |
| a 1-D array, that case is trivial. Generally `observed` is at |
| least 2-D.) |
| |
| Returns |
| ------- |
| expected : ndarray of float64 |
| The expected frequencies, based on the marginal sums of the table. |
| Same shape as `observed`. |
| |
| Examples |
| -------- |
| >>> import numpy as np |
| >>> from scipy.stats.contingency import expected_freq |
| >>> observed = np.array([[10, 10, 20],[20, 20, 20]]) |
| >>> expected_freq(observed) |
| array([[ 12., 12., 16.], |
| [ 18., 18., 24.]]) |
| |
| """ |
| |
| |
| |
| observed = np.asarray(observed, dtype=np.float64) |
|
|
| |
| margsums = margins(observed) |
|
|
| |
| |
| |
| d = observed.ndim |
| expected = reduce(np.multiply, margsums) / observed.sum() ** (d - 1) |
| return expected |
|
|
|
|
| Chi2ContingencyResult = _make_tuple_bunch( |
| 'Chi2ContingencyResult', |
| ['statistic', 'pvalue', 'dof', 'expected_freq'], [] |
| ) |
|
|
|
|
| def chi2_contingency(observed, correction=True, lambda_=None, *, method=None): |
| """Chi-square test of independence of variables in a contingency table. |
| |
| This function computes the chi-square statistic and p-value for the |
| hypothesis test of independence of the observed frequencies in the |
| contingency table [1]_ `observed`. The expected frequencies are computed |
| based on the marginal sums under the assumption of independence; see |
| `scipy.stats.contingency.expected_freq`. The number of degrees of |
| freedom is (expressed using numpy functions and attributes):: |
| |
| dof = observed.size - sum(observed.shape) + observed.ndim - 1 |
| |
| |
| Parameters |
| ---------- |
| observed : array_like |
| The contingency table. The table contains the observed frequencies |
| (i.e. number of occurrences) in each category. In the two-dimensional |
| case, the table is often described as an "R x C table". |
| correction : bool, optional |
| If True, *and* the degrees of freedom is 1, apply Yates' correction |
| for continuity. The effect of the correction is to adjust each |
| observed value by 0.5 towards the corresponding expected value. |
| lambda_ : float or str, optional |
| By default, the statistic computed in this test is Pearson's |
| chi-squared statistic [2]_. `lambda_` allows a statistic from the |
| Cressie-Read power divergence family [3]_ to be used instead. See |
| `scipy.stats.power_divergence` for details. |
| method : ResamplingMethod, optional |
| Defines the method used to compute the p-value. Compatible only with |
| `correction=False`, default `lambda_`, and two-way tables. |
| If `method` is an instance of `PermutationMethod`/`MonteCarloMethod`, |
| the p-value is computed using |
| `scipy.stats.permutation_test`/`scipy.stats.monte_carlo_test` with the |
| provided configuration options and other appropriate settings. |
| Otherwise, the p-value is computed as documented in the notes. |
| Note that if `method` is an instance of `MonteCarloMethod`, the ``rvs`` |
| attribute must be left unspecified; Monte Carlo samples are always drawn |
| using the ``rvs`` method of `scipy.stats.random_table`. |
| |
| .. versionadded:: 1.15.0 |
| |
| |
| Returns |
| ------- |
| res : Chi2ContingencyResult |
| An object containing attributes: |
| |
| statistic : float |
| The test statistic. |
| pvalue : float |
| The p-value of the test. |
| dof : int |
| The degrees of freedom. NaN if `method` is not ``None``. |
| expected_freq : ndarray, same shape as `observed` |
| The expected frequencies, based on the marginal sums of the table. |
| |
| See Also |
| -------- |
| scipy.stats.contingency.expected_freq |
| scipy.stats.fisher_exact |
| scipy.stats.chisquare |
| scipy.stats.power_divergence |
| scipy.stats.barnard_exact |
| scipy.stats.boschloo_exact |
| :ref:`hypothesis_chi2_contingency` : Extended example |
| |
| Notes |
| ----- |
| An often quoted guideline for the validity of this calculation is that |
| the test should be used only if the observed and expected frequencies |
| in each cell are at least 5. |
| |
| This is a test for the independence of different categories of a |
| population. The test is only meaningful when the dimension of |
| `observed` is two or more. Applying the test to a one-dimensional |
| table will always result in `expected` equal to `observed` and a |
| chi-square statistic equal to 0. |
| |
| This function does not handle masked arrays, because the calculation |
| does not make sense with missing values. |
| |
| Like `scipy.stats.chisquare`, this function computes a chi-square |
| statistic; the convenience this function provides is to figure out the |
| expected frequencies and degrees of freedom from the given contingency |
| table. If these were already known, and if the Yates' correction was not |
| required, one could use `scipy.stats.chisquare`. That is, if one calls:: |
| |
| res = chi2_contingency(obs, correction=False) |
| |
| then the following is true:: |
| |
| (res.statistic, res.pvalue) == stats.chisquare(obs.ravel(), |
| f_exp=ex.ravel(), |
| ddof=obs.size - 1 - dof) |
| |
| The `lambda_` argument was added in version 0.13.0 of scipy. |
| |
| References |
| ---------- |
| .. [1] "Contingency table", |
| https://en.wikipedia.org/wiki/Contingency_table |
| .. [2] "Pearson's chi-squared test", |
| https://en.wikipedia.org/wiki/Pearson%27s_chi-squared_test |
| .. [3] Cressie, N. and Read, T. R. C., "Multinomial Goodness-of-Fit |
| Tests", J. Royal Stat. Soc. Series B, Vol. 46, No. 3 (1984), |
| pp. 440-464. |
| |
| Examples |
| -------- |
| A two-way example (2 x 3): |
| |
| >>> import numpy as np |
| >>> from scipy.stats import chi2_contingency |
| >>> obs = np.array([[10, 10, 20], [20, 20, 20]]) |
| >>> res = chi2_contingency(obs) |
| >>> res.statistic |
| 2.7777777777777777 |
| >>> res.pvalue |
| 0.24935220877729619 |
| >>> res.dof |
| 2 |
| >>> res.expected_freq |
| array([[ 12., 12., 16.], |
| [ 18., 18., 24.]]) |
| |
| Perform the test using the log-likelihood ratio (i.e. the "G-test") |
| instead of Pearson's chi-squared statistic. |
| |
| >>> res = chi2_contingency(obs, lambda_="log-likelihood") |
| >>> res.statistic |
| 2.7688587616781319 |
| >>> res.pvalue |
| 0.25046668010954165 |
| |
| A four-way example (2 x 2 x 2 x 2): |
| |
| >>> obs = np.array( |
| ... [[[[12, 17], |
| ... [11, 16]], |
| ... [[11, 12], |
| ... [15, 16]]], |
| ... [[[23, 15], |
| ... [30, 22]], |
| ... [[14, 17], |
| ... [15, 16]]]]) |
| >>> res = chi2_contingency(obs) |
| >>> res.statistic |
| 8.7584514426741897 |
| >>> res.pvalue |
| 0.64417725029295503 |
| |
| When the sum of the elements in a two-way table is small, the p-value |
| produced by the default asymptotic approximation may be inaccurate. |
| Consider passing a `PermutationMethod` or `MonteCarloMethod` as the |
| `method` parameter with `correction=False`. |
| |
| >>> from scipy.stats import PermutationMethod |
| >>> obs = np.asarray([[12, 3], |
| ... [17, 16]]) |
| >>> res = chi2_contingency(obs, correction=False) |
| >>> ref = chi2_contingency(obs, correction=False, method=PermutationMethod()) |
| >>> res.pvalue, ref.pvalue |
| (0.0614122539870913, 0.1074) # may vary |
| |
| For a more detailed example, see :ref:`hypothesis_chi2_contingency`. |
| |
| """ |
| observed = np.asarray(observed) |
| if np.any(observed < 0): |
| raise ValueError("All values in `observed` must be nonnegative.") |
| if observed.size == 0: |
| raise ValueError("No data; `observed` has size 0.") |
|
|
| expected = expected_freq(observed) |
| if np.any(expected == 0): |
| |
| |
| zeropos = list(zip(*np.nonzero(expected == 0)))[0] |
| raise ValueError("The internally computed table of expected " |
| f"frequencies has a zero element at {zeropos}.") |
|
|
| if method is not None: |
| return _chi2_resampling_methods(observed, expected, correction, lambda_, method) |
|
|
| |
| dof = expected.size - sum(expected.shape) + expected.ndim - 1 |
|
|
| if dof == 0: |
| |
| |
| |
| chi2 = 0.0 |
| p = 1.0 |
| else: |
| if dof == 1 and correction: |
| |
| |
| diff = expected - observed |
| direction = np.sign(diff) |
| magnitude = np.minimum(0.5, np.abs(diff)) |
| observed = observed + magnitude * direction |
|
|
| chi2, p = power_divergence(observed, expected, |
| ddof=observed.size - 1 - dof, axis=None, |
| lambda_=lambda_) |
|
|
| return Chi2ContingencyResult(chi2, p, dof, expected) |
|
|
|
|
| def _chi2_resampling_methods(observed, expected, correction, lambda_, method): |
|
|
| if observed.ndim != 2: |
| message = 'Use of `method` is only compatible with two-way tables.' |
| raise ValueError(message) |
|
|
| if correction: |
| message = f'`{correction=}` is not compatible with `{method=}.`' |
| raise ValueError(message) |
|
|
| if lambda_ is not None: |
| message = f'`{lambda_=}` is not compatible with `{method=}.`' |
| raise ValueError(message) |
|
|
| if isinstance(method, stats.PermutationMethod): |
| res = _chi2_permutation_method(observed, expected, method) |
| elif isinstance(method, stats.MonteCarloMethod): |
| res = _chi2_monte_carlo_method(observed, expected, method) |
| else: |
| message = (f'`{method=}` not recognized; if provided, `method` must be an ' |
| 'instance of `PermutationMethod` or `MonteCarloMethod`.') |
| raise ValueError(message) |
|
|
| return Chi2ContingencyResult(res.statistic, res.pvalue, np.nan, expected) |
|
|
|
|
| def _chi2_permutation_method(observed, expected, method): |
| x, y = _untabulate(observed) |
| |
| |
| def statistic(x): |
| |
| table = crosstab(x, y)[1] |
| return np.sum((table - expected)**2/expected) |
|
|
| return stats.permutation_test((x,), statistic, permutation_type='pairings', |
| alternative='greater', **method._asdict()) |
|
|
|
|
| def _chi2_monte_carlo_method(observed, expected, method): |
| method = method._asdict() |
|
|
| if method.pop('rvs', None) is not None: |
| message = ('If the `method` argument of `chi2_contingency` is an ' |
| 'instance of `MonteCarloMethod`, its `rvs` attribute ' |
| 'must be unspecified. Use the `MonteCarloMethod` `rng` argument ' |
| 'to control the random state.') |
| raise ValueError(message) |
| rng = np.random.default_rng(method.pop('rng', None)) |
|
|
| |
| |
| rowsums, colsums = stats.contingency.margins(observed) |
| X = stats.random_table(rowsums.ravel(), colsums.ravel(), seed=rng) |
| def rvs(size): |
| n_resamples = size[0] |
| return X.rvs(size=n_resamples).reshape(size) |
|
|
| expected = expected.ravel() |
| def statistic(table, axis): |
| return np.sum((table - expected)**2/expected, axis=axis) |
|
|
| return stats.monte_carlo_test(observed.ravel(), rvs, statistic, |
| alternative='greater', **method) |
|
|
|
|
| def association(observed, method="cramer", correction=False, lambda_=None): |
| """Calculates degree of association between two nominal variables. |
| |
| The function provides the option for computing one of three measures of |
| association between two nominal variables from the data given in a 2d |
| contingency table: Tschuprow's T, Pearson's Contingency Coefficient |
| and Cramer's V. |
| |
| Parameters |
| ---------- |
| observed : array-like |
| The array of observed values |
| method : {"cramer", "tschuprow", "pearson"} (default = "cramer") |
| The association test statistic. |
| correction : bool, optional |
| Inherited from `scipy.stats.contingency.chi2_contingency()` |
| lambda_ : float or str, optional |
| Inherited from `scipy.stats.contingency.chi2_contingency()` |
| |
| Returns |
| ------- |
| statistic : float |
| Value of the test statistic |
| |
| Notes |
| ----- |
| Cramer's V, Tschuprow's T and Pearson's Contingency Coefficient, all |
| measure the degree to which two nominal or ordinal variables are related, |
| or the level of their association. This differs from correlation, although |
| many often mistakenly consider them equivalent. Correlation measures in |
| what way two variables are related, whereas, association measures how |
| related the variables are. As such, association does not subsume |
| independent variables, and is rather a test of independence. A value of |
| 1.0 indicates perfect association, and 0.0 means the variables have no |
| association. |
| |
| Both the Cramer's V and Tschuprow's T are extensions of the phi |
| coefficient. Moreover, due to the close relationship between the |
| Cramer's V and Tschuprow's T the returned values can often be similar |
| or even equivalent. They are likely to diverge more as the array shape |
| diverges from a 2x2. |
| |
| References |
| ---------- |
| .. [1] "Tschuprow's T", |
| https://en.wikipedia.org/wiki/Tschuprow's_T |
| .. [2] Tschuprow, A. A. (1939) |
| Principles of the Mathematical Theory of Correlation; |
| translated by M. Kantorowitsch. W. Hodge & Co. |
| .. [3] "Cramer's V", https://en.wikipedia.org/wiki/Cramer's_V |
| .. [4] "Nominal Association: Phi and Cramer's V", |
| http://www.people.vcu.edu/~pdattalo/702SuppRead/MeasAssoc/NominalAssoc.html |
| .. [5] Gingrich, Paul, "Association Between Variables", |
| http://uregina.ca/~gingrich/ch11a.pdf |
| |
| Examples |
| -------- |
| An example with a 4x2 contingency table: |
| |
| >>> import numpy as np |
| >>> from scipy.stats.contingency import association |
| >>> obs4x2 = np.array([[100, 150], [203, 322], [420, 700], [320, 210]]) |
| |
| Pearson's contingency coefficient |
| |
| >>> association(obs4x2, method="pearson") |
| 0.18303298140595667 |
| |
| Cramer's V |
| |
| >>> association(obs4x2, method="cramer") |
| 0.18617813077483678 |
| |
| Tschuprow's T |
| |
| >>> association(obs4x2, method="tschuprow") |
| 0.14146478765062995 |
| """ |
| arr = np.asarray(observed) |
| if not np.issubdtype(arr.dtype, np.integer): |
| raise ValueError("`observed` must be an integer array.") |
|
|
| if len(arr.shape) != 2: |
| raise ValueError("method only accepts 2d arrays") |
|
|
| chi2_stat = chi2_contingency(arr, correction=correction, |
| lambda_=lambda_) |
|
|
| phi2 = chi2_stat.statistic / arr.sum() |
| n_rows, n_cols = arr.shape |
| if method == "cramer": |
| value = phi2 / min(n_cols - 1, n_rows - 1) |
| elif method == "tschuprow": |
| value = phi2 / math.sqrt((n_rows - 1) * (n_cols - 1)) |
| elif method == 'pearson': |
| value = phi2 / (1 + phi2) |
| else: |
| raise ValueError("Invalid argument value: 'method' argument must " |
| "be 'cramer', 'tschuprow', or 'pearson'") |
|
|
| return math.sqrt(value) |
|
|