Market basket analysis or sales promotion with associations

The goal of the Associations mining function is to find items that are consistently associated with each other in a meaningful way. For example, you can analyze purchase transactions to discover combinations of goods that are often purchased together. The Associations mining function answers the question: If certain items are present in a transaction, what other item or items are likely to be present in the same transaction?

With Association rules or Sequence rules, you can also predict the potential revenue if you want to promote an article to customers who have already bought a particular article. For example, you might want to know the potential revenue if you offer hiking shoes to customers who have bought hiking gear.

The relationships discovered by the Associations mining function are expressed as association rules. In a typical commercial application, the mining function finds associations and also assigns probabilities. For example, it can find that, if customers buy paint, there is a 20% chance that they will also buy a paintbrush. It also finds multiple associations, for example, if a customer buys paint and paintbrushes, there is a 40% chance they will also buy paint thinner.

You can use Intelligent Miner® Visualizer to analyze the association rules in mining models created, for example, by Intelligent Miner. When analyzing association rules, you must read the rules and decide if they are:

Association rules discovery is used in market basket analysis, item placement planning, and promotional sales planning, among many other applications.



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