Predicting the Frequent Item Sets for Supermarket Data

Author:

Mr. D. Srinivasa Rao 1,B. Sai Mahitha 1,G. Apoorva 1,G. Yamuna 1,M. Pallavi 1

Affiliation:

1. Prasad V. Potluri Siddhartha Institute of Technology, Vijayawada, Andhra Pradesh, India

Abstract

This Python notebook uses the Apriori algorithm to analyze datasets from various supermarkets, retail organizations, and minimarkets, resulting in a more accurate analysis of customer behaviour and better product prediction and forecasting. The dataset that is used in this model typically involves customer purchases in supermarkets or any other organization. The datasets contain item details as well as the number of transactions purchased by customers. This model can be used by retailers and supermarkets of all sizes in both urban and rural areas. This algorithm implementation enables accurate forecasting and allows products to be sold efficiently and profitably in stores. Supermarkets, for example, can use the resulting data to forecast future sales volume using a variety of machine-learning techniques. It displays the most frequently purchased items or associated items by the user. This prediction is primarily focused on figuring out the rules of the association. It identifies the set of items or attributes that occur together or frequently in the dataset using association rules. If this apriori model meets a minimum threshold value for support and confidence, it produces a set of items known as a frequent itemset. This Python notebook implements a prediction model based on the apriori algorithm, which improves the efficiency of level-wise generation of frequent item sets by utilizing an important property known as the Apriori property, which aids in reducing the search space.

Publisher

Naksh Solutions

Subject

General Medicine

Reference11 articles.

1. Vidhya. G, Marimuthu. M, Vinothkumar. R. B, Vidyabharathi. D, Theetchenya. S, Basker.N, Mohanraj.G-“An enhancement of Apriori Algorithm for Shopping Cart Analysis of Customers” in International Journal of Advanced Science and Technology Vol. 29, No. 08, (2020), pp. 2124- 2131.

2. Loraine Charlet Annie M.C.1, Ashok Kumar D2-“Market Basket Analysis for a Supermarket based on Frequent Itemset Mining” in IJCSI International Journal of Computer Science Issues, Vol. 9, Issue 5, No 3, September 2012.

3. Putri Agung Permatasari1, Linawati2, Lie Jasa3-“Analysis of Shopping Cart in Retail Companies Using Apriori Algorithm Method and Model Profset” in International Journal of Engineering and Emerging Technology, Vol.5, No.2, July — December 2022.

4. Agarwal, Pragya1, Madan Lal Yadav2,Nupur Anand3-"Study on Apriori Algorithm and its Application in Grocery Store." in International Journal of Computer Applications 74.14.2017.

5. Minal I, N. Suryavanshi, “Association Rule Mining Using Improved Apriori Algorithm” in International Journal Of Computer Applications, Volume 112,Issue 4, February 2015.

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