scipy.stats.mstats.linregress¶
- scipy.stats.mstats.linregress(*args)[source]¶
Calculate a regression line
This computes a least-squares regression for two sets of measurements.
Parameters: x, y : array_like
two sets of measurements. Both arrays should have the same length. If only x is given (and y=None), then it must be a two-dimensional array where one dimension has length 2. The two sets of measurements are then found by splitting the array along the length-2 dimension.
Returns: slope : float
slope of the regression line
intercept : float
intercept of the regression line
r-value : float
correlation coefficient
p-value : float
two-sided p-value for a hypothesis test whose null hypothesis is that the slope is zero.
stderr : float
Standard error of the estimate
Notes
Missing values are considered pair-wise: if a value is missing in x, the corresponding value in y is masked.
Examples
>>> from scipy import stats >>> import numpy as np >>> x = np.random.random(10) >>> y = np.random.random(10) >>> slope, intercept, r_value, p_value, std_err = stats.linregress(x,y)
# To get coefficient of determination (r_squared)
>>> print "r-squared:", r_value**2 r-squared: 0.15286643777