- 1. Seminar Association Rules Mining-Apriori
- 2.
- Study on Application of Apriori Algorithm in Data Mining
- 2010 Second International Conference on Computer Modeling and
Simulation
- 3.
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- Finding frequent patterns, associations, correlations, or
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- Basket data analysis, cross-marketing, catalog design,
loss-leader analysis, clustering, classification, etc.
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- Rule form: Body ead [support, confidence].
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- buys(x, diapers) buys(x, beers) [0.5%, 60%]
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- major(x, CS) ^ takes(x, DB) grade(x, A) [1%, 75%]
- 4.
- Given: (1) database of transactions, (2) each transaction is a
list of items (purchased by a customer in a visit)
- Find: all rules that correlate the presence of one set of items
with that of another set of items
-
- E.g., 98% of people who purchase tires and auto accessories
also get automotive services done
-
- * Maintenance Agreement (What the store should do to boost
Maintenance Agreement sales)
-
- Home Electronics * (What other products should the store stocks
up?)
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- Attached mailing in direct marketing
-
- Detecting ping-ponging of patients , faulty collisions
- 5.
- Apriori algorithm is one of the most influential
- algorithms to mine the frequent item sets of Boolean
association rules.
- 6.
- 7.
- Mining Association Rules Using Fast Algorithm
- M.Anandhavalli & Sandip Jain
- 8.
- Efficiently Using Matrix in Mining Maximum Frequent
Itemset
- 2010 Third International Conference on Knowledge Discovery and
Data Mining
- 9.
- An Encounter with Strong Association Rules
- 10. Title
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- 11. Title
- 12. Application