The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.

R-package ptable

R-CMD-check Codecov test coverage GitHub last commit GitHub code size in bytes CRAN status

Overview

The goal of the ptable package is to produce perturbation tables that can be used for applying noise to statistical tables with the cell-key method (CKM).

Information

This package is developed within the SGA Open source tools for perturbative confidentiality methods. The package contains the core-features to produce and check perturbation tables (i.e. ptables) for frequency count and magnitude tables. The ptables can be used for applying noise to statistical tables with any cell-key method approach - among others either the cellKey()-package or TauArgus.

Feedback (via issues) with regards to bugs or features requests are very welcome as well as pull-requests.

Important Note

Installation

Stable version from CRAN

A stable version of the package can directly be installed from CRAN

install.packages("ptable")

Versions under development from github

Directly (online)

Newer versions of the package can be directly installed from github using the devtools package which must be installed on your system

if (!require("devtools")) install.packages("devtools")
library(devtools)

# update all packages
update.packages(ask = FALSE)

# finally install the ptable package directly from github
devtools::install_github(
  "sdcTools/ptable",
  dependencies = c("Depends", "Imports"),
  force = TRUE,
  build_opts = "--build-vignettes"
)

If you experience a timeout due to a proxy server while downloading, one can work around this issue by specifying the proxy-server using the hhtr package:

httr::set_config(use_proxy(url = "xxx.xxx.xxx.xxx", port = yy))
Source file (offline)

Alternatively you can download an archive (tar.gz) of the newest release here and install it manually using

install.packages('C:/Users/.../Downloads/v1.x.x.tar.gz', repos = NULL, type = 'source')

Usage

Load the package

To load the package ptable you have to call

library(ptable)

Help & Documentation

## help file
?ptable::ptable_pkg

A detailed documentation is given in the vignette:

pt_vignette()

Graphical User Interface (GUI)

For first time users and visual learners there is a GUI. The unfinished dashboard can be started using the following command:

ptable()

The download buttons (for downloading the ptable and the graphics) only works within a browser.

Updates

The changelog is given here.

Major Change

Starting from versions > 0.3.2 and > 0.4.1, functions create_ptable(), create_cnt_ptable() and create_num_ptable() allow to create perturbation objects for count- and/or numeric variables in one step. The required inputs to these functions are the maximum noise D=... and the noise variance V=....

In versions <= 0.3.2, this process was separated into two parts:

  1. defining parameters using pt_create_pParams()
  2. creating the final perturbation outputs using pt_create_pTable()

These steps still work in newer versions of the package differently (if necessary):

  1. If the argument create in create_ptable(), create_cnt_ptable() or create_num_ptable() is set to FALSE, then these functions return an object of class [ptable_params-class].
  2. This object can be used as input in create_ptable() only to create the final perturbation output.

To-Dos

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.