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  1. University of Computer Studies, Yangon
  2. Conferences

Analysis of Association Rule Mining for Business Transaction Data

http://hdl.handle.net/20.500.12678/0000003966
http://hdl.handle.net/20.500.12678/0000003966
5c059fc8-136c-4ccb-b278-165c65419324
a71e4bb1-3de4-4f0d-8544-a42f67675766
Publication type
Article
Upload type
Publication
Title
Title Analysis of Association Rule Mining for Business Transaction Data
Language en
Publication date 2009-12-30
Authors
Cho, Thinn Thinn
Lynn, Khin Thidar
Description
Association rule mining represents a data mining technique and its goal is to find interesting association or correlation relationships among a large set of data items. With massive amount of data continuously being collected and stored in databases, many companies are becoming interested in mining association rules from their databases to increase their profits from large amount of transaction data. In this paper, Apriori Algorithm analyses sales data for extracting frequent itemsets. Sales data are used from Stationery Store. It is clarify how we can find association rules from large amount of transaction data. According to the interestingness measures, such as support, confidence and correlation, this system can also support for decision making process for a market expert. This system with implemented by C# and MSAccess Database 2003 on .NET platform.
Keywords
Association rule mining, Apriori Algorithm, transaction data, frequent itemsets
Identifier http://onlineresource.ucsy.edu.mm/handle/123456789/1681
Journal articles
Fourth Local Conference on Parallel and Soft Computing
Conference papers
Books/reports/chapters
Thesis/dissertations
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