Methods to enrich list-like R objects with extra components
When I develop a piece of statistical methodology it is not uncommon that it depends on functionality or quantities that a list-like core R object object_x
of a certain class could have but doesn’t. An example is objects of class link-glm
which only provide up to the the first derivatives of the link function. It is also not uncommon that the functionality or quantities that I need are hard-coded in another package in the R ecosystem. Prominent examples include implementations of gradients of the log-likelihood and information matrices for specific model classes.
In such cases, I either contact the developers and ask them to provide a generic which I can then use, or copy some of the code and adopt it to what I’m doing. Both options can be rather time-consuming, and particularly the latter is rarely bug-free.
I believe that
users and developers should have direct access to useful functionality and quantities in the R ecosystem, epsecially if these include implementations of complex statistical quantities
quantities and functionality that are specific to a list-like object_x
should be components of object_x
The above motivated me to develop the enrichwith R package that allows object_x
to be enriched with components corresponding to the option enrichment_option
through the following simple call
The call is inspired by Donald Knuth’s literare programing paradigm.
The main objective of enrichwith is to allow users and developers to directly use the enrichment options that other developers have provided, through a clean interface, minimising the need to adopt source code of others.
The purpose of enrichwith is to provide:
useful enrichment options for core R objects, including objects of class lm
, glm
, link-glm
and family
(see, for example, ?enrich.glm
)
methods for producing customisable source code templates for the structured implementation of methods to compute new components (see ?enrichwith
and ?create_enrichwith_skeleton
)
generic methods for the easy enrichment of the object with those components (see, for example, ?enrich
and ?get_enrichment_options
)
The vignettes illustrate the enrichwith functionality through comprehensive, step-by-step case studies. These also include illustrations from recent research of mine on methods for statistical learning and inference.
Get the development version from github with
link-glm
objectsObjects of class link-glm
have as components functions to compute the link function (linkfun
), the inverse link function (linkinv
), and the 1st derivative of the inverse link function (mu.eta
).
enrichwith comes with a built-in template with the methods for the enrichment of link-glm
objects with the 2nd and 3rd derivatives of the inverse link function.
The get_enrichment_options
method can be used to check what enrichment options are available for objects of class link-glm
.
library("enrichwith")
standard_link <- make.link("probit")
class(standard_link)
# [1] "link-glm"
get_enrichment_options(standard_link)
# -------
# Option: d2mu.deta
# Description: 2nd derivative of the inverse link function
# component compute_function
# 1 d2mu.deta compute_d2mu.deta
# -------
# Option: d3mu.deta
# Description: 3rd derivative of the inverse link function
# component compute_function
# 1 d3mu.deta compute_d3mu.deta
# -------
# Option: inverse link derivatives
# Description: 2nd and 3rd derivative of the inverse link function
# component compute_function
# 1 d2mu.deta compute_d2mu.deta
# 2 d3mu.deta compute_d3mu.deta
# -------
# Option: all
# Description: all available options
# component compute_function
# 1 d2mu.deta compute_d2mu.deta
# 2 d3mu.deta compute_d3mu.deta
According to the result of get_enrichment_options
, the object standard_link
can be enriched with the 2nd and 3rd derivative of the inverse link function through the option “inverse link derivatives”.
enriched_link <- enrich(standard_link, with = "inverse link derivatives")
class(enriched_link)
# [1] "enriched_link-glm" "link-glm"
cat(format(enriched_link$d2mu.deta), sep = "\n")
# function (eta)
# {
# -eta * pmax(dnorm(eta), .Machine$double.eps)
# }
cat(format(enriched_link$d3mu.deta), sep = "\n")
# function (eta)
# {
# (eta^2 - 1) * pmax(dnorm(eta), .Machine$double.eps)
# }
enriched_link
is now an “enriched” link-glm
object, which, as per the enrichment options above, has the extra components d2mu.deta
and d3mu.deta
, for the calculation of 2nd and 3rd derivatives of the inverse link function with respect to eta
, respectively.
family
objects