Skip to content

Code and data for paper "Relevance-based Evaluation Metrics for Multi-class Imbalanced Domains" - PAKDD 2017

Notifications You must be signed in to change notification settings

paobranco/Relevance-basedMulticlassImbalanceMetrics

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

9 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Relevance-based Evaluation Metrics for Multi-class Imbalanced Domains - PAKDD 2017

This repository has all the code used in the experiments carried out in the paper "Relevance-based Evaluation Metrics for Multi-class Imbalanced Domains" [1].

This repository is organized as follows:

  • R_Code folder - contains all the code for reproducing the experiments presented in the paper and the additional experiments carried out with real world multiclass data sets;
  • Figures folder - contains all the figures obtained from the experimental evaluation on 16 real world data sets;
  • Data folder - contains the 16 multiclass data sets used in the additional experiments carried out with real world data sets;

Requirements

The experimental design was implemented in R language. Both code and data are in a format suitable for R environment.

In order to replicate these experiments you will need a working installation of R. Check [https://www.r-project.org/] if you need to download and install it.

In your R installation you also need to install the following additional R packages:

  • DMwR
  • e1071
  • rpart
  • igraph

All the above packages, can be installed from CRAN Repository directly as any "normal" R package. Essentially you need to issue the following command within R:

install.packages(c("DMwR", "e1071", "rpart", "igraph"))

To replicate the figure in this repository you will also need to install the package:

  • ggplot2

As with any R package, we only need to issue the following command:

install.packages("ggplot2")

Check the other README files in each folder to see more detailed instructions on how to run the experiments.


References

[1] Branco, P. and Torgo, L. and Ribeiro R.P. (2017) "Relevance-based Evaluation Metrics for Multi-class Imbalanced Domains" Advances in Knowledge Discovery and Data Mining - 21th Pacific-Asia Conference, PAKDD 2017, Jeju, South Korea. (to appear).

About

Code and data for paper "Relevance-based Evaluation Metrics for Multi-class Imbalanced Domains" - PAKDD 2017

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages