--- date: "`r Sys.Date()`" title: "Correlation Analysis with manymodelr" output: html_document vignette: > %\VignetteIndexEntry{ "Variable Correlations with manymolder"} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r setup, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ``` - `get_var_corr` As can probably(hopefully) be guessed from the name, this provides a convenient way to get variable correlations. It enables one to get correlation between one variable and all other variables in the data set. **Previously, one would set `get_all` to `TRUE` if they wanted to get correlations between all variables. This argument has been dropped in favor of simply supplying an optional `other_vars` vector if one does not want to get all correlations.** ```{r} library(manymodelr) # getall correlations # default pearson head( corrs <- get_var_corr(mtcars,comparison_var="mpg") ) ``` **Previously, one would also set `drop_columns` to `TRUE` if they wanted to drop factor columns.** Now, a user simply provides a character vector specifying which column types(classes) should be dropped. It defaults to `c("character","factor")`. ```{r} data("yields", package="manymodelr") # purely demonstrative get_var_corr(yields,"height",other_vars="weight", drop_columns=c("factor","character"),method="spearman", exact=FALSE) ``` Similarly, `get_var_corr_` (note the underscore at the end) provides a convenient way to get combination-wise correlations. ```{r} head(get_var_corr_(yields),6) ``` To use only a subset of the data, we can use provide a list of columns to `subset_cols`. By default, the first value(vector) in the list is mapped to `comparison_var` and the other to `other_Var`. The list is therefore of length 2. ```{r} head(get_var_corr_(mtcars,subset_cols=list(c("mpg","vs"),c("disp","wt")), method="spearman",exact=FALSE)) ``` - `plot_corr` Obtaining correlations would mostly likely benefit from some form of visualization. `plot_corr` aims to achieve just that. There are currently two plot styles, `squares` and `circles`. `circles` has a `shape` argument that can allow for more flexibility. It should be noted that the correlation matrix supplied to this function is an object produced by `get_var_corr_`. To modify the plot a bit, we can choose to switch the x and y values as shown below. ```{r} plot_corr(mtcars,show_which = "corr", round_which = "correlation",decimals = 2,x="other_var", y="comparison_var",plot_style = "squares" ,width = 1.1,custom_cols = c("green","blue","red"),colour_by = "correlation") ``` To show significance of the results instead of the correlations themselves, we can set `show_which` to "signif" as shown below. By default, significance is set to 0.05. You can override this by supplying a different `signif_cutoff`. ```{r} # color by p value # change custom colors by supplying custom_cols # significance is default set.seed(233) plot_corr(mtcars, x="other_var", y="comparison_var",plot_style = "circles",show_which = "signif", colour_by = "p.value", sample(colours(),3)) ``` To explore more options, please take a look at the documentation.