e parameters of the distribution, return maximum likelihood estimates of the parameters. Parameters ---------- dist : `scipy.stats.rv_continuous` or `scipy.stats.rv_discrete` The object representing the distribution to be fit to the data. data : 1D array_like The data to which the distribution is to be fit. If the data contain any of ``np.nan``, ``np.inf``, or -``np.inf``, the fit method will raise a ``ValueError``. bounds : dict or sequence of tuples, optional If a dictionary, each key is the name of a parameter of the distribution, and the corresponding value is a tuple containing the lower and upper bound on that parameter. If the distribution is defined only for a finite range of values of that parameter, no entry for that parameter is required; e.g., some distributions have parameters which must be on the interval [0, 1]. Bounds for parameters location (``loc``) and scale (``scale``) are optional; by default, they are fixed to 0 and 1, respectively. If a sequence, element *i* is a tuple containing the lower and upper bound on the *i*\ th parameter of the distribution. In this case, bounds for *all* distribution shape parameters must be provided. Optionally, bounds for location and scale may follow the distribution shape parameters. If a shape is to be held fixed (e.g. if it is known), the lower and upper bounds may be equal. If a user-provided lower or upper bound is beyond a bound of the domain for which the distribution is defined, the bound of the distribution's domain will replace the user-provided value. Similarly, parameters which must be integral will be constrained to integral values within the user-provided bounds. guess : dict or array_like, optional If a dictionary, each key is the name of a parameter of the distribution, and the corresponding value is a guess for the value of the parameter. If a sequence, element *i* is a guess for the *i*\ th parameter of the distribution. In this case, guesses for *all* distribution shape parameters must be provided. If `guess` is not provided, guesses for the decision variables will not be passed to the optimizer. If `guess` is provided, guesses for any missing parameters will be set at the mean of the lower and upper bounds. Guesses for parameters which must be integral will be rounded to integral values, and guesses that lie outside the intersection of the user-provided bounds and the domain of the distribution will be clipped. method : {'mle', 'mse'} With ``method="mle"`` (default), the fit is computed by minimizing the negative log-likelihood function. A large, finite penalty (rather than infinite negative log-likelihood) is applied for observations beyond the support of the distribution. With ``method="mse"``, the fit is computed by minimizing the negative log-product spacing function. The same penalty is applied for observations beyond the support. We follow the approach of [1]_, which is generalized for samples with repeated observations. optimizer : callable, optional `optimizer` is a callable that accepts the following positional argument. fun : callable The objective function to be optimized. `fun` accepts one argument ``x``, candidate shape parameters of the distribution, and returns the objective function value given ``x``, `dist`, and the provided `data`. The job of `optimizer` is to find values of the decision variables that minimizes `fun`. `optimizer` must also accept the following keyword argument. bounds : sequence of tuples The bounds on values of the decision variables; each element will be a tuple containing the lower and upper bound on a decision variable. If `guess` is provided, `optimizer` must also accept the following keyword argument. x0 : array_like The guesses for each decision variable. If the distribution has any shape parameters that must be integral or if the distribution is discrete and the location parameter is not fixed, `optimizer` must also accept the following keyword argument. integrality : array_like of bools For each decision variable, True if the decision variable must be constrained to integer values and False if the decision variable is continuous. `optimizer` must return an object, such as an instance of `scipy.optimize.OptimizeResult`, which holds the optimal values of the decision variables in an attribute ``x``. If attributes ``fun``, ``status``, or ``message`` are provided, they will be included in the result object returned by `fit`. Returns ------- result : `~scipy.stats._result_classes.FitResult` An object with the following fields. params : namedtuple A namedtuple containing the maximum likelihood estimates of the shape parameters, location, and (if applicable) scale of the distribution. success : bool or None Whether the optimizer considered the optimization to terminate successfully or not. message : str or None Any status message provided by the optimizer. The object has the following method: nllf(params=None, data=None) By default, the negative log-likelihood function at the fitted `params` for the given `data`. Accepts a tuple containing alternative shapes, location, and scale of the distribution and an array of alternative data. plot(ax=None) Superposes the PDF/PMF of the fitted distribution over a normalized histogram of the data. See Also -------- rv_continuous, rv_discrete Notes ----- Optimization is more likely to converge to the maximum likelihood estimate when the user provides tight bounds containing the maximum likelihood estimate. For example, when fitting a binomial distribution to data, the number of experiments underlying each sample may be known, in which case the corresponding shape parameter ``n`` can be fixed. References ---------- .. [1] Shao, Yongzhao, and Marjorie G. Hahn. "Maximum product of spacings method: a unified formulation with illustration of strong consistency." Illinois Journal of Mathematics 43.3 (1999): 489-499. Examples -------- Suppose we wish to fit a distribution to the following data. >>> import numpy as np >>> from scipy import stats >>> rng = np.random.default_rng() >>> dist = stats.nbinom >>> shapes = (5, 0.5) >>> data = dist.rvs(*shapes, size=1000, random_state=rng) Suppose we do not know how the data were generated, but we suspect that it follows a negative binomial distribution with parameters *n* and *p*\. (See `scipy.stats.nbinom`.) We believe that the parameter *n* was fewer than 30, and we know that the parameter *p* must lie on the interval [0, 1]. We record this information in a variable `bounds` and pass this information to `fit`. >>> bounds = [(0, 30), (0, 1)] >>> res = stats.fit(dist, data, bounds) `fit` searches within the user-specified `bounds` for the values that best match the data (in the sense of maximum likelihood estimation). In this case, it found shape values similar to those from which the data were actually generated. >>> res.params FitParams(n=5.0, p=0.5028157644634368, loc=0.0) # may vary We can visualize the results by superposing the probability mass function of the distribution (with the shapes fit to the data) over a normalized histogram of the data. >>> import matplotlib.pyplot as plt # matplotlib must be installed to plot >>> res.plot() >>> plt.show() Note that the estimate for *n* was exactly integral; this is because the domain of the `nbinom` PMF includes only integral *n*, and the `nbinom` object "knows" that. `nbinom` also knows that the shape *p* must be a value between 0 and 1. In such a case - when the domain of the distribution with respect to a parameter is finite - we are not required to specify bounds for the parameter. >>> bounds = {'n': (0, 30)} # omit parameter p using a `dict` >>> res2 = stats.fit(dist, data, bounds) >>> res2.params FitParams(n=5.0, p=0.5016492009232932, loc=0.0) # may vary If we wish to force the distribution to be fit with *n* fixed at 6, we can set both the lower and upper bounds on *n* to 6. Note, however, that the value of the objective function being optimized is typically worse (higher) in this case. >>> bounds = {'n': (6, 6)} # fix parameter `n` >>> res3 = stats.fit(dist, data, bounds) >>> res3.params FitParams(n=6.0, p=0.5486556076755706, loc=0.0) # may vary >>> res3.nllf() > res.nllf() True # may vary Note that the numerical results of the previous examples are typical, but they may vary because the default optimizer used by `fit`, `scipy.optimize.differential_evolution`, is stochastic. However, we can customize the settings used by the optimizer to ensure reproducibility - or even use a different optimizer entirely - using the `optimizer` parameter. >>> from scipy.optimize import differential_evolution >>> rng = np.random.default_rng(767585560716548) >>> def optimizer(fun, bounds, *, integrality): ... return differential_evolution(fun, bounds, strategy='best2bin', ... rng=rng, integrality=integrality) >>> bounds = [(0, 30), (0, 1)] >>> res4 = stats.fit(dist, data, bounds, optimizer=optimizer) >>> res4.params FitParams(n=5.0, p=0.5015183149259951, loc=0.0) r#