Skip to content

This code is part of my PhD research. The aim is built and validate local partitions for multi-label classification

License

Notifications You must be signed in to change notification settings

cissagatto/Local-Partitions

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

37 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Local Partitions

This code is part of my PhD research at PPG-CC/DC/UFSCar in colaboration with Katholieke Universiteit Leuven Campus Kulak Kortrijk Belgium. The aim is build and test local partitions for multilabel classification.

How to cite

@misc{Gatto2023, author = {Gatto, E. C.}, title = {Local Partitions for Multilabel Classification}, year = {2023}, publisher = {GitHub}, journal = {GitHub repository}, howpublished = {\url{https://github.com/cissagatto/Local-Partitions}}}

Source Code

This code source is composed of the project R to be used in RStudio IDE and also the following scripts R:

  1. libraries.R
  2. utils.R
  3. local-clus.R
  4. local-mulan.R
  5. local-python.R
  6. local-utiml.R
  7. run.R
  8. local.R
  9. config_files.R
  10. jobs.R

We used Random Forest as base classifier for all versions, except for CLUS

local-mulan is not implemented

Preparing your experiment

STEP 1

A file called datasets-original.csv must be in the root project folder. This file is used to read information about the datasets and they are used in the code. We have 90 multilabel datasets in this .csv file. If you want to use another dataset, please, add the following information about the dataset in the file:

Parameter Status Description
Id mandatory Integer number to identify the dataset
Name mandatory Dataset name (please follow the benchmark)
Domain optional Dataset domain
Instances mandatory Total number of dataset instances
Attributes mandatory Total number of dataset attributes
Labels mandatory Total number of labels in the label space
Inputs mandatory Total number of dataset input attributes
Cardinality optional **
Density optional **
Labelsets optional **
Single optional **
Max.freq optional **
Mean.IR optional **
Scumble optional **
TCS optional **
AttStart mandatory Column number where the attribute space begins * 1
AttEnd mandatory Column number where the attribute space ends
LabelStart mandatory Column number where the label space begins
LabelEnd mandatory Column number where the label space ends
Distinct optional ** 2
xn mandatory Value for Dimension X of the Kohonen map
yn mandatory Value for Dimension Y of the Kohonen map
gridn mandatory X times Y value. Kohonen's map must be square
max.neigbors mandatory The maximum number of neighbors is given by LABELS -1

1 - Because it is the first column the number is always 1.

2 - Click here to get explanation about each property.

STEP 2

To run this experiment you need the X-Fold Cross-Validation files and they must be compacted in tar.gz format. You can download these files, with 10-folds, ready for multiple multilabel dataset by clicking here. For a new dataset, in addition to including it in the datasets-original.csv file, you must also run this code here. In the repository in question you will find all the instructions needed to generate the files in the format required for this experiment. The tar.gz file can be placed on any folder on your computer or cluster. The absolute path of the file should be passed as a parameter in the configuration file that will be read by global.R script. The dataset will be loaded from there.

STEP 3

You need to have installed all the Java, R and Python libraries required to execute this code on your machine. This code does not provide any type of automatic package installation!

You can use the Conda Environment that I created to perform this experiment. Below are the links to download the files. Try to use the command below to extract the environment to your computer:

conda env create -file AmbienteTeste.yaml

See more information about Conda environments here

You can also run this code using the AppTainer container that I'm using to run this code in a SLURM cluster. Please, check this tutorial (in portuguese) to see how to do that.

STEP 4

To run this code you will need a configuration file saved in csv format and with the following information:

Config Value
Dataset_Path Absolute path to the folder where the dataset's tar.gz is stored
Temporary_Path Absolute path to the folder where temporary processing will be performed*
Implemenation Must be one of "clus", "mulan", "python" or "utiml"
Dataset_Name Dataset name according to dataset-original.csv file
Number_Dataset Dataset number according to dataset-original.csv file
Number_Folds Number of folds used in cross validation
Number_Cores Number of cores for parallel processing
  • Use folders like dev/shm, tmp or scratch here.

You can save configuration files wherever you want. The absolute path will be passed as a command line argument.

Software Requirements

This code was develop in RStudio Version 1.4.1106 © 2009-2021 RStudio, PBC "Tiger Daylily" (2389bc24, 2021-02-11) for Ubuntu Bionic Mozilla/5.0 (X11; Linux x86_64) AppleWebKit/537.36 (KHTML, like Gecko) QtWebEngine/5.12.8 Chrome/69.0.3497.128 Safari/537.36. The R Language version was: R version 4.1.0 (2021-05-18) -- "Camp Pontanezen" Copyright (C) 2021 The R Foundation for Statistical Computing Platform: x86_64-pc-linux-gnu (64-bit).

Hardware Requirements

This code may or may not be executed in parallel, however, it is highly recommended that you run it in parallel. The number of cores can be configured via the command line (number_cores). If number_cores = 1 the code will run sequentially. In our experiments, we used 10 cores. For reproducibility, we recommend that you also use ten cores. This code was tested with the birds dataset in the following machine:

System:

Host: bionote | Kernel: 5.8.0-53-generic | x86_64 bits: 64 | Desktop: Gnome 3.36.7 | Distro: Ubuntu 20.04.2 LTS (Focal Fossa)

CPU:

Topology: 6-Core | model: Intel Core i7-10750H | bits: 64 | type: MT MCP | L2 cache: 12.0 MiB | Speed: 800 MHz | min/max: 800/5000 MHz Core speeds (MHz): | 1: 800 | 2: 800 | 3: 800 | 4: 800 | 5: 800 | 6: 800 | 7: 800 | 8: 800 | 9: 800 | 10: 800 | 11: 800 | 12: 800 |

Then the experiment was executed in a cluster at UFSCar.

RUN

To run the code, open the terminal, enter the /Local-Partitions/R/ folder, and type

Rscript local.R [absolute_path_to_config_file]

Example:

Rscript local.R "~/Local-Partitions/config-files/python/lp-GpositiveGO.csv"

RESULTS

The results are stored in a folder called REPORTS (or output) in the project root.

DOWNLOAD RESULTS

| Clus | Mulan | Python | Utiml |

Acknowledgment

  • This study was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brasil (CAPES) - Finance Code 001.
  • This study was financed in part by the Conselho Nacional de Desenvolvimento Científico e Tecnológico - Brasil (CNPQ) - Process number 200371/2022-3.
  • The authors also thank the Brazilian research agencies FAPESP financial support.

Contact

elainececiliagatto@gmail.com

Links

| Site | Post-Graduate Program in Computer Science | Computer Department | Biomal | CNPQ | Ku Leuven | Embarcados | Read Prensa | Linkedin Company | Linkedin Profile | Instagram | Facebook | Twitter | Twitch | Youtube |

Thanks

About

This code is part of my PhD research. The aim is built and validate local partitions for multi-label classification

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published