flopscope.numpy.histogram_bin_edges
fnp.histogram_bin_edges(a, bins=10, range=None, weights=None)[flopscope source][numpy source]
Function to calculate only the edges of the bins used by the `histogram` function.
Adapted from NumPy docs np.histogram_bin_edges
Bin edge computation; cost = numel(a).
Function to calculate only the edges of the bins used by the histogram function.
Parameters
- a:array_like
Input data. The histogram is computed over the flattened array.
- bins:int or sequence of scalars or str, optional
If
binsis an int, it defines the number of equal-width bins in the given range (10, by default). Ifbinsis a sequence, it defines the bin edges, including the rightmost edge, allowing for non-uniform bin widths.If
binsis a string from the list below, histogram_bin_edges will use the method chosen to calculate the optimal bin width and consequently the number of bins (see the Notes section for more detail on the estimators) from the data that falls within the requested range. While the bin width will be optimal for the actual data in the range, the number of bins will be computed to fill the entire range, including the empty portions. For visualisation, using the 'auto' option is suggested. Weighted data is not supported for automated bin size selection.- 'auto'
Minimum bin width between the 'sturges' and 'fd' estimators. Provides good all-around performance.
- 'fd' (Freedman Diaconis Estimator)
Robust (resilient to outliers) estimator that takes into account data variability and data size.
- 'doane'
An improved version of Sturges' estimator that works better with non-normal datasets.
- 'scott'
Less robust estimator that takes into account data variability and data size.
- 'stone'
Estimator based on leave-one-out cross-validation estimate of the integrated squared error. Can be regarded as a generalization of Scott's rule.
- 'rice'
Estimator does not take variability into account, only data size. Commonly overestimates number of bins required.
- 'sturges'
R's default method, only accounts for data size. Only optimal for gaussian data and underestimates number of bins for large non-gaussian datasets.
- 'sqrt'
Square root (of data size) estimator, used by Excel and other programs for its speed and simplicity.
- range:(float, float), optional
The lower and upper range of the bins. If not provided, range is simply
(a.min(), a.max()). Values outside the range are ignored. The first element of the range must be less than or equal to the second.rangeaffects the automatic bin computation as well. While bin width is computed to be optimal based on the actual data withinrange, the bin count will fill the entire range including portions containing no data.- weights:array_like, optional
An array of weights, of the same shape as
a. Each value inaonly contributes its associated weight towards the bin count (instead of 1). This is currently not used by any of the bin estimators, but may be in the future.
Returns
- bin_edges:array of dtype float
The edges to pass into histogram
See also
Notes
The methods to estimate the optimal number of bins are well founded
in literature, and are inspired by the choices R provides for
histogram visualisation. Note that having the number of bins
proportional to is asymptotically optimal, which is
why it appears in most estimators. These are simply plug-in methods
that give good starting points for number of bins. In the equations
below, is the binwidth and is the number of
bins. All estimators that compute bin counts are recast to bin width
using the ptp of the data. The final bin count is obtained from
flops.round(flops.ceil(range / h)). The final bin width is often less
than what is returned by the estimators below.
- 'auto' (minimum bin width of the 'sturges' and 'fd' estimators)
A compromise to get a good value. For small datasets the Sturges value will usually be chosen, while larger datasets will usually default to FD. Avoids the overly conservative behaviour of FD and Sturges for small and large datasets respectively. Switchover point is usually .
'fd' (Freedman Diaconis Estimator)
'scott'
'rice'
'sturges'
'doane'
'sqrt'
Additionally, if the data is of integer dtype, then the binwidth will never be less than 1.
Examples
>>> import flopscope.numpy as fnp
>>> arr = flops.array([0, 0, 0, 1, 2, 3, 3, 4, 5])
>>> flops.histogram_bin_edges(arr, bins='auto', range=(0, 1))
array([0. , 0.25, 0.5 , 0.75, 1. ])
>>> flops.histogram_bin_edges(arr, bins=2)
array([0. , 2.5, 5. ])For consistency with histogram, an array of pre-computed bins is passed through unmodified:
>>> flops.histogram_bin_edges(arr, [1, 2])
array([1, 2])This function allows one set of bins to be computed, and reused across multiple histograms:
>>> shared_bins = flops.histogram_bin_edges(arr, bins='auto')
>>> shared_bins
array([0., 1., 2., 3., 4., 5.])>>> group_id = flops.array([0, 1, 1, 0, 1, 1, 0, 1, 1])
>>> hist_0, _ = flops.histogram(arr[group_id == 0], bins=shared_bins)
>>> hist_1, _ = flops.histogram(arr[group_id == 1], bins=shared_bins)>>> hist_0; hist_1
array([1, 1, 0, 1, 0])
array([2, 0, 1, 1, 2])Which gives more easily comparable results than using separate bins for each histogram:
>>> hist_0, bins_0 = flops.histogram(arr[group_id == 0], bins='auto')
>>> hist_1, bins_1 = flops.histogram(arr[group_id == 1], bins='auto')
>>> hist_0; hist_1
array([1, 1, 1])
array([2, 1, 1, 2])
>>> bins_0; bins_1
array([0., 1., 2., 3.])
array([0. , 1.25, 2.5 , 3.75, 5. ])