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pchc (version 1.2)

Correlation significance testing using Fisher's z-transformation: Correlation significance testing using Fisher's z-transformation

Description

Correlation significance testing using Fisher's z-transformation.

Usage

cortest(y, x, rho = 0, a = 0.05 )

Value

A vector with 5 numbers; the correlation, the p-value for the hypothesis test that each of them is equal to "rho", the test statistic and the $a/2%$ lower and upper confidence limits.

Arguments

y

A numerical vector.

x

A numerical vector.

rho

The value of the hypothesised correlation to be used in the hypothesis testing.

a

The significance level used for the confidence intervals.

Author

Michail Tsagris.

R implementation and documentation: Michail Tsagris mtsagris@uoc.gr.

Details

The function uses the built-in function "cor" which is very fast, then computes a confidence interval and produces a p-value for the hypothesis test.

References

Tsagris M. (2021). A new scalable Bayesian network learning algorithm with applications to economics. Computational Economics 57(1): 341-367.

See Also

pcor, correls, corpairs

Examples

Run this code
x <- rcauchy(60)
y <- rnorm(60)
cortest(y, x)

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