Self-Organised Direction Aware Data Partitioning Algorithm

Source code of SODA Algorithm for data partitioning/clustering.

Ahora está siguiendo esta publicación

The package contains:
1. The recently introduced Self-Organised Direction Aware Data Partitioning Algorithm (SODA);
2. A demo for offline data partitioning;
3. A demo for conducting hybrid between the offline prime and the evolving extension.

SODA algorithm is for data partitioning.

Data partitioning is very close to clustering, but the end result will be the data clouds with irregular shapes instead of clusters with certain shapes.

Reference:
X. Gu, P. Angelov, D. Kangin, J. Principe, Self-organised direction aware data partitioning algorithm, Information Sciences, vol.423, pp. 80-95 , 2018.

If this code is helpful, please cite the above paper.

For any queries about the codes, please contact Prof. Plamen P. Angelov (p.angelov@lancaster.ac.uk) and Dr. Xiaowei Gu (x.gu3@lancaster.ac.uk)

Programmed by Xiaowei Gu

Citar como

X. Gu, P. Angelov, D. Kangin, J. Principe, Self-organised direction aware data partitioning algorithm, Information Sciences, vol.423, pp. 80-95 , 2018.

Categorías

Más información sobre Statistics and Machine Learning Toolbox en Help Center y MATLAB Answers.

Información general

Compatibilidad con la versión de MATLAB

  • Compatible con cualquier versión

Compatibilidad con las plataformas

  • Windows
  • macOS
  • Linux
Versión Publicado Notas de la versión Action
1.1.2.0

Updated Description.

1.1.1.0

Update the description

1.1.0.0

The output and input of the algorithm are reconstructed to an more convenient form for users.
The comments of the code are updated.
Update the description of the code

1.0.0.0