Skip to content
/ Apriori Public

Python Implementation of Apriori Algorithm for finding Frequent sets and Association Rules

License

Notifications You must be signed in to change notification settings

asaini/Apriori

Folders and files

NameName
Last commit message
Last commit date

Latest commit

e1f436c Ā· Sep 10, 2022

History

52 Commits
Mar 16, 2021
Jul 6, 2016
Sep 10, 2022
Jul 6, 2016
Dec 5, 2011
Sep 10, 2022
Nov 13, 2020
Aug 7, 2013
Jan 23, 2022
Jan 23, 2022
Jul 6, 2016
Jul 6, 2016

Repository files navigation

Python Implementation of Apriori Algorithm

Set up

Open in Streamlit Build Status

Edit without local environment setup

Open in Gitpod


Acknowledgements

The code attempts to implement the following paper:

Agrawal, Rakesh, and Ramakrishnan Srikant. "Fast algorithms for mining association rules." Proc. 20th int. conf. very large data bases, VLDB. Vol. 1215. 1994.


Interactive Streamlit App

To view a live interactive app, and play with the input values, please click here. This app was built using Streamlit šŸ˜Ž, the source code for the app can be found here

Running the Streamlit app locally

To run the interactive Streamlit app with dataset

$ pip3 install -r requirements.txt
$ streamlit run streamlit_app.py

CLI Usage

To run the program with dataset provided and default values for minSupport = 0.15 and minConfidence = 0.6

python apriori.py -f INTEGRATED-DATASET.csv

To run program with dataset

python apriori.py -f INTEGRATED-DATASET.csv -s 0.17 -c 0.68

Best results are obtained for the following values of support and confidence:

Support : Between 0.1 and 0.2

Confidence : Between 0.5 and 0.7


Datasets

INTEGRATED-DATASET.csv

The dataset is a copy of the ā€œOnline directory of certified businesses with a detailed profileā€ file from the Small Business Services (SBS) dataset in the NYC Open Data Sets <http://nycopendata.socrata.com/>_

tesco.csv

Toy dataset of items from shopping cart


License

MIT-License

About

Python Implementation of Apriori Algorithm for finding Frequent sets and Association Rules

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages