Metadata-Version: 2.1
Name: pyclustertend
Version: 1.4.9
Summary: A package to assess cluster tendency
Home-page: https://github.com/lachhebo/pyclustertend
Author: Ismaël Lachheb
Author-email: ismael.lachheb@protonmail.com
License: UNKNOWN
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Description-Content-Type: text/markdown

# pyclustertend 
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pyclustertend is a python package specialized in cluster tendency. Cluster tendency consist to assess if clustering algorithms are relevant for a dataset.

Three methods for assessing cluster tendency are currently implemented and one additional method based on metrics obtained with a KMeans estimator :

- [x] Hopkins Statistics
- [x] VAT
- [x] iVAT

- [x] Metric based method (silhouette, calinksi, davies bouldin)

## Installation :

```shell
    pip install pyclustertend
```

## Usage :

### Example Hopkins :

```python
    >>>from sklearn import datasets
    >>>from pyclustertend import hopkins
    >>>from sklearn.preprocessing import scale
    >>>X = scale(datasets.load_iris().data)
    >>>hopkins(X,150)
    0.18950453452838564
```

### Example VAT :

```python
    >>>from sklearn import datasets
    >>>from pyclustertend import vat
    >>>from sklearn.preprocessing import scale
    >>>X = scale(datasets.load_iris().data)
    >>>vat(X)
```

<img height="350" src="https://raw.githubusercontent.com/lachhebo/pyclustertend/screenshots/vat.png" />

### Example iVat :


```python
    >>>from sklearn import datasets
    >>>from pyclustertend import ivat
    >>>from sklearn.preprocessing import scale
    >>>X = scale(datasets.load_iris().data)
    >>>ivat(X)
```

<img height="350" src="https://raw.githubusercontent.com/lachhebo/pyclustertend/screenshots/ivat.png" />


# Notes

It's preferable to scale the data before using hopkins or vat algorithm as they use distance between observations. Moreover, vat and ivat algorithms
do not really fit to massive databases. For the user, a first solution is to sample the data before using those algorithms. As for the maintainer of this implementation, it could be useful to represent the dissimalirity matrix in a smarter way to decrease the time complexity.


