This work was accepted for paper presentation at the 2022 IEEE Region 10 Conference (TENCON 2022), held virtually and in-person in Hong Kong:
- The final version of our paper (as published in the conference proceedings of TENCON 2022) can be accessed via this link.
- Our dataset of datasets is publicly released for future researchers.
- Kindly refer to
0. Directory.ipynb
for a guide on navigating through this repository.
If you find our work useful, please consider citing:
@INPROCEEDINGS{9978037,
author={Gonzales, Mark Edward M. and Uy, Lorene C. and Sy, Jacob Adrianne L. and Cordel, Macario O.},
booktitle={TENCON 2022 - 2022 IEEE Region 10 Conference (TENCON)},
title={Distance Metric Recommendation for k-Means Clustering: A Meta-Learning Approach},
year={2022},
pages={1-6},
doi={10.1109/TENCON55691.2022.9978037}}
This repository is also archived on Zenodo.
ABSTRACT: The choice of distance metric impacts the clustering quality of centroid-based algorithms, such as
INDEX TERMS: meta-learning, meta-features,
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Mark Edward M. Gonzales
[email protected] -
Lorene C. Uy
[email protected] -
Jacob Adrianne L. Sy
[email protected] -
Dr. Macario O. Cordel, II
[email protected]
This is the major course output in a machine learning class for master's students under Dr. Macario O. Cordel, II of the Department of Computer Technology, De La Salle University. The task is to create a ten-week investigatory project that applies machine learning to a particular research area or offers a substantial theoretical or algorithmic contribution to existing machine learning techniques.