Skip to main content

Python implementation of Gowers distance, pairwise between records in two data sets

Project description

Build Status PyPI version Downloads

Introduction

Gower's distance calculation in Python. Gower Distance is a distance measure that can be used to calculate distance between two entity whose attribute has a mixed of categorical and numerical values. Gower (1971) A general coefficient of similarity and some of its properties. Biometrics 27 857–874.

More details and examples can be found on my personal website here:(https://www.thinkdatascience.com/post/2019-12-16-introducing-python-package-gower/)

Core functions are wrote by Marcelo Beckmann.

Examples

Installation

pip install gower

Generate some data

import numpy as np
import pandas as pd
import gower

Xd=pd.DataFrame({'age':[21,21,19, 30,21,21,19,30,None],
'gender':['M','M','N','M','F','F','F','F',None],
'civil_status':['MARRIED','SINGLE','SINGLE','SINGLE','MARRIED','SINGLE','WIDOW','DIVORCED',None],
'salary':[3000.0,1200.0 ,32000.0,1800.0 ,2900.0 ,1100.0 ,10000.0,1500.0,None],
'has_children':[1,0,1,1,1,0,0,1,None],
'available_credit':[2200,100,22000,1100,2000,100,6000,2200,None]})
Yd = Xd.iloc[1:3,:]
X = np.asarray(Xd)
Y = np.asarray(Yd)

Find the distance matrix

gower.gower_matrix(X)
array([[0.        , 0.3590238 , 0.6707398 , 0.31787416, 0.16872811,
        0.52622986, 0.59697855, 0.47778758,        nan],
       [0.3590238 , 0.        , 0.6964303 , 0.3138769 , 0.523629  ,
        0.16720603, 0.45600235, 0.6539635 ,        nan],
       [0.6707398 , 0.6964303 , 0.        , 0.6552807 , 0.6728013 ,
        0.6969697 , 0.740428  , 0.8151941 ,        nan],
       [0.31787416, 0.3138769 , 0.6552807 , 0.        , 0.4824794 ,
        0.48108295, 0.74818605, 0.34332284,        nan],
       [0.16872811, 0.523629  , 0.6728013 , 0.4824794 , 0.        ,
        0.35750175, 0.43237334, 0.3121036 ,        nan],
       [0.52622986, 0.16720603, 0.6969697 , 0.48108295, 0.35750175,
        0.        , 0.2898751 , 0.4878362 ,        nan],
       [0.59697855, 0.45600235, 0.740428  , 0.74818605, 0.43237334,
        0.2898751 , 0.        , 0.57476616,        nan],
       [0.47778758, 0.6539635 , 0.8151941 , 0.34332284, 0.3121036 ,
        0.4878362 , 0.57476616, 0.        ,        nan],
       [       nan,        nan,        nan,        nan,        nan,
               nan,        nan,        nan,        nan]], dtype=float32)

Find Top n results

gower.gower_topn(Xd.iloc[0:2,:], Xd.iloc[:,], n = 5)
{'index': array([4, 3, 1, 7, 5]),
 'values': array([0.16872811, 0.31787416, 0.3590238 , 0.47778758, 0.52622986],
       dtype=float32)}

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

gower-0.1.2.tar.gz (5.6 kB view hashes)

Uploaded Source

Built Distribution

gower-0.1.2-py3-none-any.whl (5.2 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