krms 0.0.2
# krms
A simple python library for implementing the K-RMS Clustering algorithm on
unlabelled data using unsupervised learning.
The code is Python 2 and 3 compatible.
# Installation
Fast install:
pip install krms
For a manual install get this package:
$wget https://github.com/garain/krms/archive/master.zip
$unzip master.zip
$rm master.zip
$cd krms-master
Install the package:
python setup.py install
# Example
from krms import krms_clustering
#For results related to Iris dataset no need to pass any argument.
krms_clustering.run()
#For getting results from custom dataset pass path of csv file as argument in function 'run'.
krms_clustering.run("data.csv")
N.B.: The csv file should have the labels in first column with header name ‘type’ followed by rest of feature columns.
# References
@article{GARAIN2020113,
title = "K-RMS Algorithm",
journal = "Procedia Computer Science",
volume = "167",
pages = "113 - 120",
year = "2020",
note = "International Conference on Computational Intelligence and Data Science",
issn = "1877-0509",
doi = "https://doi.org/10.1016/j.procs.2020.03.188",
url = "http://www.sciencedirect.com/science/article/pii/S1877050920306530",
author = "Avishek Garain and Dipankar Das",
keywords = "clustering, distortion-error, rms-value, multi-component analysis, unsupervised-learning"
}
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