Abstract

In the past years, e-commerce and online shopping grew fast. It became more helpful by letting people buy the desired product online. Also, to help their users to find the product of their desire easily and make the process simpler, the online shopping websites use some kinds of an algorithm to provide recommendation systems. Often, these systems use techniques like basket analyzing and association rules which is finding the relation between the products together or between users too, so apriori algorithm is one of the famous ones among the recommendation systems. Although it has some limitations while implementing which makes the algorithm less confident or even useless, Let us assume we have 100K records in the sold item list in a system in which about 10K refers to the customers buying only one or two items in their purchase. Therefore, this ten per cent will not affect finding the relation between the items, at the same time these records will make the system less efficient and take more time to analyze, in this paper, we try to show how we can improve the apriori algorithm efficiency and accuracy by some preprocessing on the dataset before applying apriori algorithm by eliminating the unnecessary records, this process helps to make the algorithm better because of reducing the number of transactions, hence finding strong relationships between items easier for the rest of the records.

Highlights

  • Data mining consists of the process of finding knowledge from a dataset by using some algorithms like preprocessing on data, pattern recognition, classification, association rule mining, and clustering etc., which could be using these algorithms to get information and find discovering some patterns which could be important for decision making

  • The Knowledge Discovery in Database is used as a synonym for data mining word, and sometimes it is described as the heart of KDD

  • Some recommender systems are earning renown to their qualifications within drowning the side effect of discovering an area to seeking users [4], request for advice about a specific subject are helped and increased natural social task by recommendation system [5], Within this paper, we try to show some way to create a small online item recommendation system retailer

Read more

Summary

Article History

E-commerce and online shopping have grown fast. It became more helpful. Recommendation system Apriori Algorithm E-commerce Data mining Association rules Improvement of Apriori Algorithm together or between users too, so the apriori algorithm is one of the famous ones among the recommendation systems It has some limitations while implementing, which makes the algorithm less confident or even useless, Let us assume we have 100K records in the sold item list in a system in which about 10K refers to the customers buying only one or two items in their purchase. This ten per cent will not affect finding the relation between the items, at the same time these records will make the system less efficient and take more time to analyze, in this paper, we try to show how we can improve the apriori algorithm efficiency and accuracy by some preprocessing on the dataset before applying apriori algorithm by eliminating the unnecessary records, this process helps to make the algorithm better because of reducing the number of transactions, finding strong relationships between items easier for the rest of the records

Introduction
Findings
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.