x potentially transformed with additional information provided in the attributes.
Arguments
x
Input symbol.
lb
Lower quantile when winsorizing. -Inf yields no winsorizing in the lower tail.
ub
Lower quantile when winsorizing. Inf yields no winsorizing in the upper tail.
scale
Inverse value to time x by. Usually the standard deviation is used. 0.4 / scale is used as the multiplier as suggested in Friedman & Popescu (2008) and gives each linear term the same a-priori influence as a typical rule.
Details
The motivation to use wrappers is to ease getting the different terms as shown in the examples and to simplify the formula passed to cv.glmnet in gpe. lTerm potentially rescales and/or winsorizes x depending on the input. eTerm potentially rescale x depending on the input.
References
Friedman, J. H., & Popescu, B. E. (2008). Predictive learning via rule ensembles. The Annals of Applied Statistics, 2(3), 916-954.