Skip to main content

LSH-k-Representatives: Mixed categorial and numerical (ordinal and nonordinal) data clustering algorithm algorithm

Project description

Clustering algorithm for Mixed data of categorial and numerical (ordinal and nonordinal) data using LSH.

Notebook samples:

1. LSH-k-Representatives : Clustering of categorical attributes only:

https://github.com/nmtoan91/lshkrepresentatives/blob/main/notebook_sample_clustering_categorical_data.ipynb

2. LSH-k-Prototypes : Clustering of mixed data (categorical and numerical attributes):

https://github.com/nmtoan91/lshkrepresentatives/blob/main/notebook_sample_clustering_mixed_data_type.ipynb

3. LSH-k-Representatives-Full : Clustering of HUGE categorical attributes only:

https://github.com/nmtoan91/lshkrepresentatives/blob/main/notebook_sample_LSHkRepresentatives_Full.ipynb

4. Normalizing unstructed normal dataset:

https://github.com/nmtoan91/lshkrepresentatives/blob/main/notebook_dataset_normalization.ipynb



Note 1: Different from k-Modes algorithm, LSH-k-Representatives define the "representatives" that keep the frequencies of all categorical values of the clusters. There are threee algorithms Note 2: The dataset is auto normalized if it detect string, or disjointed data, or nan

Installation:

Using pip:

pip install lshkrepresentatives numpy scikit-learn pandas networkx termcolor

Import the packages:

import numpy as np
from LSHkRepresentatives.LSHkRepresentatives import LSHkRepresentatives

Generate a simple categorical dataset:

X = np.array([['red',0,np.nan],['green',1,1],['blue',0,0],[1,5111,1],[2,2,2],[2,6513,'rectangle'],[2,3,6565]])

Using LSHk-Representatives (categorical clustering):

#Init instance of LSHkRepresentatives 
kreps = LSHkRepresentatives(n_clusters=2,n_init=5) 
#Do clustering for dataset X
labels = kreps.fit(X)
#Print the label for dataset X
print('Labels:',labels)
#Predict label for the random instance x
x = np.array(['red',5111,0])
label = kreps.predict(x)
print(f'Cluster of object {x} is: {label}')

Outcome:

SKIP LOADING distMatrix because: False bd=None
Generating disMatrix for DILCA
Saving DILCA to: saved_dist_matrices/json/DILCA_None.json
Generating LSH hash table:   hbits: 2(4)  k 1  d 3  n= 7
LSH time: 0.006518099999993865 Score:  6.333333333333334  Time: 0.0003226400000130525
Labels: [1 1 1 1 0 0 0]
Cluster of object [1 2 0] is: 1

Call built-in evaluattion metrics:

y = np.array([0,0,0,0,1,1,1])
kreps.CalcScore(y)

Outcome:

Purity: 1.00 NMI: 1.00 ARI: 1.00 Sil:  0.59 Acc: 1.00 Recall: 1.00 Precision: 1.00

Using LSHk-Prototypes (Mixed categorical and numerical attributes clustering):

For example: We have a dataset of 5 attributes (3 categorical and 2 numerical).

from LSHkRepresentatives.LSHkPrototypes import LSHkPrototypes
kprototypes = LSHkPrototypes(n_clusters=2,n_init=5) 
X = np.array([['red',0,np.nan,1,1],
              ['green',1,1,0,0],
              ['blue',0,0,3,4],
              [1,5111,1,1.1,1.2],
              [2,2,2,29.0,38.9],
              [2,6513,'rectangle',40,41.1],
              ['red',0,np.nan,30.4,30.1]])

attributeMasks = [0,0,0,1,1]
# attributeMasks = [0,0,0,1,1] means attributes are
# [categorial,categorial,categorial,numerical,numerical]
a = kprototypes.fit(X,attributeMasks,numerical_weight=2, categorical_weight=1)
print(a)

References:

T. N. Mau and V.-N. Huynh, ``An LSH-based k-Representatives Clustering Method for Large Categorical Data." Neurocomputing, Volume 463, 2021, Pages 29-44, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2021.08.050.

Bibtex:

@article{mau2021lsh,
  title={An LSH-based k-representatives clustering method for large categorical data},
  author={Mau, Toan Nguyen and Huynh, Van-Nam},
  journal={Neurocomputing},
  volume={463},
  pages={29--44},
  year={2021},
  publisher={Elsevier}
}

pypi/github repository

https://pypi.org/project/lshkrepresentatives/
https://github.com/nmtoan91/lshkrepresentatives

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

lshkrepresentatives-1.2.2.tar.gz (19.3 kB view hashes)

Uploaded Source

Built Distribution

lshkrepresentatives-1.2.2-py3-none-any.whl (27.9 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page