Esempio n. 1
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def correlation_p_pearsonr2(data0, data1):
    r = stats.pearsonr(data0, data1)
    if math.isnan(r):
        return float('NaN')
    if r == 1.:
        return 0.
    n = len(data0)
    assert n == len(data1)
    # Compute observed t statistic.
    t = r * math.sqrt((n - 2) / (1 - r**2))
    # Compute p-value for two-sided t-test.
    return 2 * stats.t_cdf(-abs(t), n - 2)
Esempio n. 2
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def correlation_p_pearsonr2(data0, data1):
    r = stats.pearsonr(data0, data1)
    if math.isnan(r):
        return float('NaN')
    if r == 1.:
        return 0.
    n = len(data0)
    assert n == len(data1)
    # Compute observed t statistic.
    t = r * math.sqrt((n - 2)/(1 - r**2))
    # Compute p-value for two-sided t-test.
    return 2 * stats.t_cdf(-abs(t), n - 2)
Esempio n. 3
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def correlation_pearsonr2(data0, data1):
    r = stats.pearsonr(data0, data1)
    return r**2
Esempio n. 4
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def correlation_pearsonr2(data0, data1):
    r = stats.pearsonr(data0, data1)
    return r**2
Esempio n. 5
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def test_pearsonr():
    assert math.isnan(stats.pearsonr([], []))
    assert stats.pearsonr([1,2,3], [2,4,6]) == +1.0
    assert stats.pearsonr([1,2,3], [-2,-4,-6]) == -1.0
    assert stats.pearsonr([1,2,3], [6,4,2]) == -1.0
    assert stats.pearsonr([1,2,3], [+1,-1,+1]) == 0.0
Esempio n. 6
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def correlation_pearsonr2(data0, data1):
    return stats.pearsonr(data0, data1)**2