statsmodels.stats.power.FTestAnovaPower.solve_power¶
- FTestAnovaPower.solve_power(effect_size=None, nobs=None, alpha=None, power=None, k_groups=2)[source]¶
 solve for any one parameter of the power of a F-test
- for the one sample F-test the keywords are:
 effect_size, nobs, alpha, power
Exactly one needs to be
None, all others need numeric values.- Parameters:¶
 - effect_size
float standardized effect size, mean divided by the standard deviation. effect size has to be positive.
- nobs
intorfloat sample size, number of observations.
- alpha
floatininterval(0,1) significance level, e.g. 0.05, is the probability of a type I error, that is wrong rejections if the Null Hypothesis is true.
- power
floatininterval(0,1) power of the test, e.g. 0.8, is one minus the probability of a type II error. Power is the probability that the test correctly rejects the Null Hypothesis if the Alternative Hypothesis is true.
- effect_size
 - Returns:¶
 - value
float The value of the parameter that was set to None in the call. The value solves the power equation given the remaining parameters.
- value
 
Notes
The function uses scipy.optimize for finding the value that satisfies the power equation. It first uses
brentqwith a prior search for bounds. If this fails to find a root,fsolveis used. Iffsolvealso fails, then, foralpha,powerandeffect_size,brentqwith fixed bounds is used. However, there can still be cases where this fails.