Parameters: |
-
sample : (N, D) array, or (D, N) array_like -
The data to be histogrammed. Note the unusual interpretation of sample when an array_like: - When an array, each row is a coordinate in a D-dimensional space - such as
histogramgramdd(np.array([p1, p2, p3])) . - When an array_like, each element is the list of values for single coordinate - such as
histogramgramdd((X, Y, Z)) . The first form should be preferred. -
bins : sequence or int, optional -
The bin specification: - A sequence of arrays describing the monotonically increasing bin edges along each dimension.
- The number of bins for each dimension (nx, ny, … =bins)
- The number of bins for all dimensions (nx=ny=…=bins).
-
range : sequence, optional -
A sequence of length D, each an optional (lower, upper) tuple giving the outer bin edges to be used if the edges are not given explicitly in bins . An entry of None in the sequence results in the minimum and maximum values being used for the corresponding dimension. The default, None, is equivalent to passing a tuple of D None values. -
density : bool, optional -
If False, the default, returns the number of samples in each bin. If True, returns the probability density function at the bin, bin_count / sample_count / bin_volume . -
normed : bool, optional -
An alias for the density argument that behaves identically. To avoid confusion with the broken normed argument to histogram , density should be preferred. -
weights : (N,) array_like, optional -
An array of values w_i weighing each sample (x_i, y_i, z_i, …) . Weights are normalized to 1 if normed is True. If normed is False, the values of the returned histogram are equal to the sum of the weights belonging to the samples falling into each bin. |