# Titan Robotics Team 2022: CorrelationTest submodule # Written by Arthur Lu # Notes: # this should be imported as a python module using 'from tra_analysis import CorrelationTest' # setup: __version__ = "1.0.1" __changelog__ = """changelog: 1.0.1: - fixed __all__ 1.0.0: - ported analysis.CorrelationTest() here - removed classness """ __author__ = ( "Arthur Lu ", ) __all__ = [ "anova_oneway", "pearson", "spearman", "point_biserial", "kendall", "kendall_weighted", "mgc", ] import scipy from scipy import stats def anova_oneway(*args): #expects arrays of samples results = scipy.stats.f_oneway(*args) return {"f-value": results[0], "p-value": results[1]} def pearson(x, y): results = scipy.stats.pearsonr(x, y) return {"r-value": results[0], "p-value": results[1]} def spearman(a, b = None, axis = 0, nan_policy = 'propagate'): results = scipy.stats.spearmanr(a, b = b, axis = axis, nan_policy = nan_policy) return {"r-value": results[0], "p-value": results[1]} def point_biserial(x, y): results = scipy.stats.pointbiserialr(x, y) return {"r-value": results[0], "p-value": results[1]} def kendall(x, y, initial_lexsort = None, nan_policy = 'propagate', method = 'auto'): results = scipy.stats.kendalltau(x, y, initial_lexsort = initial_lexsort, nan_policy = nan_policy, method = method) return {"tau": results[0], "p-value": results[1]} def kendall_weighted(x, y, rank = True, weigher = None, additive = True): results = scipy.stats.weightedtau(x, y, rank = rank, weigher = weigher, additive = additive) return {"tau": results[0], "p-value": results[1]} def mgc(x, y, compute_distance = None, reps = 1000, workers = 1, is_twosamp = False, random_state = None): results = scipy.stats.multiscale_graphcorr(x, y, compute_distance = compute_distance, reps = reps, workers = workers, is_twosamp = is_twosamp, random_state = random_state) return {"k-value": results[0], "p-value": results[1], "data": results[2]} # unsure if MGC test returns a k value