Tools for Visualization of Interdependent Data Quality Issues

Data quality issues such as missing values and outliers are often interdependent, which makes preprocessing both time-consuming and leads to suboptimal performance in knowledge discovery tasks. This package supports preprocessing decision making by visualizing interdependent data quality issues through means of feature construction. The user can define his own application domain specific constructed features that express the quality of a data point such as number of missing values in the point or use nine default features. The outcome can be explored with plot methods and the feature constructed data acquired with get methods.


News

Reference manual

It appears you don't have a PDF plugin for this browser. You can click here to download the reference manual.

install.packages("preproviz")

0.2.0 by Markus Vattulainen, a year ago


https://github.com/mvattulainen/preproviz


Report a bug at https://github.com/mvattulainen/preproviz/issues


Browse source code at https://github.com/cran/preproviz


Authors: Markus Vattulainen [aut, cre]


Documentation:   PDF Manual  


GPL-2 license


Imports caret, DMwR, randomForest, ClustOfVar, reshape2, ggplot2, ggdendro, gridExtra, methods, utils, stats

Suggests testthat, rmarkdown, knitr, preprocomb


Suggested by preprocomb, preprosim.


See at CRAN