mpl.pyplot.hist()¶
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mpl.pyplot.hist(x, bins=10, range=None, normed=False, weights=None, cumulative=False, bottom=None, histtype=u'bar', align=u'mid', orientation=u'vertical', rwidth=None, log=False, color=None, label=None, stacked=False, hold=None, data=None, **kwargs)[source]¶ Plot a histogram.
Compute and draw the histogram of x. The return value is a tuple (n, bins, patches) or ([n0, n1, ...], bins, [patches0, patches1,...]) if the input contains multiple data.
Multiple data can be provided via x as a list of datasets of potentially different length ([x0, x1, ...]), or as a 2-D ndarray in which each column is a dataset. Note that the ndarray form is transposed relative to the list form.
Masked arrays are not supported at present.
Parameters: x : (n,) array or sequence of (n,) arrays
Input values, this takes either a single array or a sequency of arrays which are not required to be of the same length
bins : integer or array_like, optional
If an integer is given, bins + 1 bin edges are returned, consistently with
numpy.histogram()for numpy version >= 1.3.Unequally spaced bins are supported if bins is a sequence.
default is 10
range : tuple or None, optional
The lower and upper range of the bins. Lower and upper outliers are ignored. If not provided, range is (x.min(), x.max()). Range has no effect if bins is a sequence.
If bins is a sequence or range is specified, autoscaling is based on the specified bin range instead of the range of x.
Default is
Nonenormed : boolean, optional
If True, the first element of the return tuple will be the counts normalized to form a probability density, i.e.,
n/(len(x)`dbin), i.e., the integral of the histogram will sum to 1. If stacked is also True, the sum of the histograms is normalized to 1.Default is
Falseweights : (n, ) array_like or None, optional
An array of weights, of the same shape as x. Each value in x only contributes its associated weight towards the bin count (instead of 1). If normed is True, the weights are normalized, so that the integral of the density over the range remains 1.
Default is
Nonecumulative : boolean, optional
If True, then a histogram is computed where each bin gives the counts in that bin plus all bins for smaller values. The last bin gives the total number of datapoints. If normed is also True then the histogram is normalized such that the last bin equals 1. If cumulative evaluates to less than 0 (e.g., -1), the direction of accumulation is reversed. In this case, if normed is also True, then the histogram is normalized such that the first bin equals 1.
Default is
Falsebottom : array_like, scalar, or None
Location of the bottom baseline of each bin. If a scalar, the base line for each bin is shifted by the same amount. If an array, each bin is shifted independently and the length of bottom must match the number of bins. If None, defaults to 0.
Default is
Nonehisttype : {‘bar’, ‘barstacked’, ‘step’, ‘stepfilled’}, optional
The type of histogram to draw.
- ‘bar’ is a traditional bar-type histogram. If multiple data are given the bars are aranged side by side.
- ‘barstacked’ is a bar-type histogram where multiple data are stacked on top of each other.
- ‘step’ generates a lineplot that is by default unfilled.
- ‘stepfilled’ generates a lineplot that is by default filled.
Default is ‘bar’
align : {‘left’, ‘mid’, ‘right’}, optional
Controls how the histogram is plotted.
- ‘left’: bars are centered on the left bin edges.
- ‘mid’: bars are centered between the bin edges.
- ‘right’: bars are centered on the right bin edges.
Default is ‘mid’
orientation : {‘horizontal’, ‘vertical’}, optional
If ‘horizontal’, ~matplotlib.pyplot.barh will be used for bar-type histograms and the bottom kwarg will be the left edges.
rwidth : scalar or None, optional
The relative width of the bars as a fraction of the bin width. If None, automatically compute the width.
Ignored if histtype is ‘step’ or ‘stepfilled’.
Default is
Nonelog : boolean, optional
If True, the histogram axis will be set to a log scale. If log is True and x is a 1D array, empty bins will be filtered out and only the non-empty (n, bins, patches) will be returned.
Default is
Falsecolor : color or array_like of colors or None, optional
Color spec or sequence of color specs, one per dataset. Default (None) uses the standard line color sequence.
Default is
Nonelabel : string or None, optional
String, or sequence of strings to match multiple datasets. Bar charts yield multiple patches per dataset, but only the first gets the label, so that the legend command will work as expected.
default is
Nonestacked : boolean, optional
If True, multiple data are stacked on top of each other If False multiple data are aranged side by side if histtype is ‘bar’ or on top of each other if histtype is ‘step’
Default is
FalseReturns: n : array or list of arrays
The values of the histogram bins. See normed and weights for a description of the possible semantics. If input x is an array, then this is an array of length nbins. If input is a sequence arrays
[data1, data2,..], then this is a list of arrays with the values of the histograms for each of the arrays in the same order.bins : array
The edges of the bins. Length nbins + 1 (nbins left edges and right edge of last bin). Always a single array even when multiple data sets are passed in.
patches : list or list of lists
Silent list of individual patches used to create the histogram or list of such list if multiple input datasets.
Other Parameters: kwargs : ~matplotlib.patches.Patch properties
See also
hist2d- 2D histograms
Notes
In addition to the above described arguments, this function can take a data keyword argument. If such a data argument is given, the following arguments are replaced by data[<arg>]:
- All arguments with the following names: ‘x’, ‘weights’.
Additional kwargs: hold = [True|False] overrides default hold state
Examples