Graph average degree test for normality¶
Description¶
Performs the Graph average degree goodness-of-fit test for the hypothesis of normality. The null hypothesis is that the sample comes from a normal distribution.
Hypothesis of Normality
The hypothesis of normality refers to the null hypothesis that the data comes from a normal distribution. In the implementation, the statistic is computed from the sample passed to execute_statistic.
Test Statistic The statistic is based on the average degree in a proximity graph built from the sample.
Usage¶
from pysatl_criterion.statistics.goodness_of_fit import (
GraphAverageDegreeNormalityGofStatistic,
)
test_statistic = GraphAverageDegreeNormalityGofStatistic()
statistic_result = test_statistic.execute_statistic([-1.21, -0.83, -0.52, -0.31, -0.08, 0.14, 0.29, 0.47, 0.68, 0.91, 1.16, 1.43])
print(statistic_result)
Arguments¶
mean - reference normal mean. Default value is 0.
var - reference normal variance. Default value is 1.
rvs - array-like sample data passed to execute_statistic.
Details¶
The implementation evaluates the Graph average degree statistic for the supplied observations. Large or small values should be interpreted according to the statistic alternative used by the class implementation.
References¶
The statistic follows the implementation in pysatl_criterion.statistics.goodness_of_fit.normal.
Author(s)¶
Alexey Mironov
Examples¶
from pysatl_criterion.statistics.goodness_of_fit import (
GraphAverageDegreeNormalityGofStatistic,
)
test_statistic = GraphAverageDegreeNormalityGofStatistic()
statistic_result = test_statistic.execute_statistic([-1.21, -0.83, -0.52, -0.31, -0.08, 0.14, 0.29, 0.47, 0.68, 0.91, 1.16, 1.43])
print(statistic_result)