The xrnet R package is an extension of regularized regression (i.e. ridge regression) that enables the incorporation of external data that may be informative for the effects of predictors on an outcome of interest. Let (y) be an n-dimensional observed outcome vector, (X) be a set of p potential predictors observed on the n observations, and (Z) be a set of q external features available for the p predictors. Our model builds off the standard two-level hierarchical regression model,
but allows regularization of both the predictors and the external features, where beta is the vector of coefficients describing the association of each predictor with the outcome and alpha is the vector of coefficients describing the association of each external feature with the predictor coefficients, beta. As an example, assume that the outcome is continuous and that we want to apply a ridge penalty to the predictors and lasso penalty to the external features. We minimize the following objective function (ignoring intercept terms):
Note that our model allows for the predictor coefficients, beta, to shrink towards potentially informative values based on the matrix (Z). In the event the external data is not informative, we can shrink alpha towards zero, returning back to a standard regularized regression. To efficiently fit the model, we rewrite this convex optimization with the variable substitution (gamma = beta - Z * alpha). The problem is then solved as a standard regularized regression in which we allow the penalty value and type (ridge / lasso) to be variable-specific:
This package extends the coordinate descent algorithm of Friedman et al. 2010 (used in the R package glmnet) to allow for this variable-specific generalization and to fit the model described above. Currently, we allow for continuous and binary outcomes, but plan to extend to other outcomes (i.e. survival) in the next release.
# Master branch
devtools::install_github("USCbiostats/xrnet")
# Development branch
devtools::install_github("USCbiostats/xrnet", ref = "development")
As an example of how you might use xrnet, we have provided a small set of simulated external data variables (ext), predictors (x), and a continuous outcome variable (y). First, load the package and the example data:
To fit a linear hierarchical regularized regression model, use the main xrnet
function. At a minimum, you should specify the predictor matrix x
, outcome variable y
, and family
(outcome distribution). The external
option allows you to incorporate external data in the regularized regression model. If you do not include external data, a standard regularized regression model will be fit. By default, a lasso penalty is applied to both the predictors and the external data.
To modify the regularization terms and penalty path associated with the predictors or external data, you can use the define_penalty
function. This function allows you to configure the following regularization attributes:
quantile
used to specify quantile, not currently implemented)As an example, we may want to apply a ridge penalty to the x variables and a lasso penalty to the external data variables. In addition, we may want to have 30 penalty values computed for the regularization path associated with both x and external. We modify our model call to xrnet
follows.
penalty_main
is used to specify the regularization for the x variablespenalty_external
is used to specify the regularization for the external variablesxrnet_model <- xrnet(
x = x_linear,
y = y_linear,
external = ext_linear,
family = "gaussian",
penalty_main = define_penalty(0, num_penalty = 30),
penalty_external = define_penalty(1, num_penalty = 30)
)
Helper functions are also available to define the available penalty types (define_lasso
, define_ridge
, and define_enet
). The example below exemplifies fitting a standard ridge regression model with 100 penalty values by using the define_ridge
helper function. As mentioned previously, a standard regularized regression is fit if no external data is provided.
xrnet_model <- xrnet(
x = x_linear,
y = y_linear,
family = "gaussian",
penalty_main = define_ridge(100)
)
In general, we need a method to determine the penalty values that produce the optimal out-of-sample prediction. We provide a simple two-dimensional grid search that uses k-fold cross-validation to determine the optimal values for the penalties. The cross-validation function tune_xrnet
is used as follows.
cv_xrnet <- tune_xrnet(
x = x_linear,
y = y_linear,
external = ext_linear,
family = "gaussian",
penalty_main = define_ridge(),
penalty_external = define_lasso()
)
To visualize the results of the cross-validation we provide a contour plot of the mean cross-validation error across the grid of penalties with the plot
function.
Cross-validation error curves can also be generated with plot
by fixing the value of either the penalty on x
or the external penalty on external
. By default, either penalty defaults the optimal penalty on x
or external
.
The predict
function can be used to predict responses and to obtain the coefficient estimates at the optimal penalty combination (the default) or any other penalty combination that is within the penalty path(s). coef
is a another help function that can be used to return the coefficients for a combination of penalty values as well.
As an example of using bigmemory
with xrnet
, we have a provided a ASCII file, x_linear.txt
, that contains the data for x
. The bigmemory
function read.big.matrix()
can be used to create a big.matrix
version of this file. The ASCII file is located under inst/extdata
in this repository and is also included when you install the R package. To access the file in the R package, use system.file("extdata", "x_linear.txt", package = "xrnet")
as shown in the example below.
x_big <- bigmemory::read.big.matrix(system.file("extdata", "x_linear.txt", package = "xrnet"), type = "double")
We can now fit a ridge regression model with the big.matrix
version of the data and verify that we get the same estimates:
xrnet_model_big <- xrnet(
x = x_big,
y = y_linear,
family = "gaussian",
penalty_main = define_ridge(100)
)
all.equal(xrnet_model$beta0, xrnet_model_big$beta0)
#> [1] TRUE
all.equal(xrnet_model$betas, xrnet_model_big$betas)
#> [1] TRUE
all.equal(xrnet_model$alphas, xrnet_model_big$alphas)
#> [1] TRUE
To report a bug, ask a question, or propose a feature, create a new issue here. This project is released with the following Contributor Code of Conduct. If you would like to contribute, please abide by its terms.
Supported by National Cancer Institute Grant #1P01CA196596.