# NOT RUN {
# Correlation coefficients of all numerical variables
correlate(heartfailure)
# Select the variable to compute
correlate(heartfailure, creatinine, sodium)
correlate(heartfailure, -creatinine, -sodium)
correlate(heartfailure, "creatinine", "sodium")
correlate(heartfailure, 1)
# Non-parametric correlation coefficient by kendall method
correlate(heartfailure, creatinine, method = "kendall")
# Using dplyr::grouped_dt
library(dplyr)
gdata <- group_by(heartfailure, smoking, death_event)
correlate(gdata, "creatinine")
correlate(gdata)
# Using pipes ---------------------------------
# Correlation coefficients of all numerical variables
heartfailure %>%
correlate()
# Positive values select variables
heartfailure %>%
correlate(creatinine, sodium)
# Negative values to drop variables
heartfailure %>%
correlate(-creatinine, -sodium)
# Positions values select variables
heartfailure %>%
correlate(1)
# Positions values select variables
heartfailure %>%
correlate(-1, -3, -5, -7)
# Non-parametric correlation coefficient by spearman method
heartfailure %>%
correlate(creatinine, sodium, method = "spearman")
# ---------------------------------------------
# Correlation coefficient
# that eliminates redundant combination of variables
heartfailure %>%
correlate() %>%
filter(as.integer(var1) > as.integer(var2))
heartfailure %>%
correlate(creatinine, sodium) %>%
filter(as.integer(var1) > as.integer(var2))
# Using pipes & dplyr -------------------------
# Compute the correlation coefficient of Sales variable by 'smoking'
# and 'death_event' variables. And extract only those with absolute
# value of correlation coefficient is greater than 0.2
heartfailure %>%
group_by(smoking, death_event) %>%
correlate(creatinine) %>%
filter(abs(coef_corr) >= 0.2)
# extract only those with 'smoking' variable level is "Yes",
# and compute the correlation coefficient of 'Sales' variable
# by 'hblood_pressure' and 'death_event' variables.
# And the correlation coefficient is negative and smaller than 0.5
heartfailure %>%
filter(smoking == "Yes") %>%
group_by(hblood_pressure, death_event) %>%
correlate(creatinine) %>%
filter(coef_corr < 0) %>%
filter(abs(coef_corr) > 0.5)
# }
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