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Association Rule Mining

Association Rule Mining. Instructor Qiang Yang Slides from Jiawei Han and Jian Pei And from Introduction to Data Mining By Tan, Steinbach, Kumar. What Is Frequent Pattern Mining?. Frequent patterns : pattern (set of items, sequence, etc.) that occurs frequently in a database [AIS93]

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Association Rule Mining

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  1. Association Rule Mining Instructor Qiang Yang Slides from Jiawei Han and Jian Pei And from Introduction to Data Mining By Tan, Steinbach, Kumar

  2. What Is Frequent Pattern Mining? • Frequent patterns: pattern (set of items, sequence, etc.) that occurs frequently in a database [AIS93] • Frequent pattern mining: finding regularities in data • What products were often purchased together? • What are the subsequent purchases after buying a PC? Frequent-pattern mining methods

  3. Why Is Frequent Pattern Mining an Essential Task in Data Mining? • Foundation for many essential data mining tasks • Association, correlation, causality • Sequential patterns, temporal or cyclic association, partial periodicity, spatial and multimedia association • Associative classification, cluster analysis, iceberg cube, fascicles (semantic data compression) • Broad applications • Basket data analysis, cross-marketing, catalog design, sale campaign analysis • Web log (click stream) analysis, DNA sequence analysis, etc. Frequent-pattern mining methods

  4. Customer buys both Customer buys diaper Customer buys beer Basic Concepts: Frequent Patterns and Association Rules • Itemset X={x1, …, xk} • Find all the rules XYwith min confidence and support • support, s, probability that a transaction contains XY • confidence, c,conditional probability that a transaction having X also contains Y. • Let min_support = 50%, min_conf = 50%: • A  C (50%, 66.7%) • C  A (50%, 100%) Frequent-pattern mining methods

  5. Concept: Frequent Itemsets • Minimum support=2 • {sunny, hot, no} • {sunny, hot, high, no} • {rainy, normal} • Min Support =3 • ? • How strong is {sunny, no}? • Count = • Percentage = Frequent-pattern mining methods

  6. Concept: Itemset  Rules • {sunny, hot, no} = {Outlook=Sunny, Temp=hot, Play=no} • Generate a rule: • Outlook=sunny and Temp=hot  Play=no • How strong is this rule? • Support of the rule • = support of the itemset {sunny, hot, no} = 2 = Pr({sunny, hot, no}) • Either expressed in count form or percentage form • Confidence = Pr(Play=no | {Outlook=sunny, Temp=hot}) • In general LHS RHS, Confidence = Pr(RHS|LHS) • Confidence • =Pr(RHS|LHS) • =count(LHS and RHS) / count(LHS) • What is the confidence of Outlook=sunnyPlay=no? Frequent-pattern mining methods

  7. Frequent Patterns • Patterns = Item Sets • {i1, i2, … in}, where each item is a pair: (Attribute=value) • Frequent Patterns • Itemsets whose support >= minimum support • Support • count(itemset)/count(database) Frequent-pattern mining methods

  8. Frequent Itemset Generation Given d items, there are 2d possible candidate itemsets Frequent-pattern mining methods

  9. Max-patterns • Max-pattern: frequent patterns without proper frequent super pattern • BCDE, ACD are max-patterns • BCD is not a max-pattern Min_sup=2 Frequent-pattern mining methods

  10. Maximal Frequent Itemset An itemset is maximal frequent if none of its immediate supersets is frequent Maximal Itemsets Infrequent Itemsets Border Frequent-pattern mining methods

  11. Frequent Max Patterns • Succinct Expression of frequent patterns • Let {a, b, c} be frequent • Then, {a, b}, {b, c}, {a, c} must also be frequent • Then {a}, {b}, {c}, must also be frequent • By writing down {a, b, c} once, we save lots of computation • Max Pattern • If {a, b, c} is a frequent max pattern, then {a, b, c, x} is NOT a frequent pattern, for any other item x. Frequent-pattern mining methods

  12. Find Frequent Max Patterns • Minimum support=2 • {sunny, hot, no} ?? Frequent-pattern mining methods

  13. Closed Patterns An itemset is closed if none of its immediate supersets has the same support as the itemset • {a, b}, {a, b, d}, {a, b, c} are closed patterns • But, {a, b} is not a max pattern • See where changes happen • Reduce # of patterns and rules • N. Pasquier et al. In ICDT’99 Frequent-pattern mining methods

  14. Maximal vs Closed Itemsets Transaction Ids indexes beside an item set is the transaction #s. Not supported by any transactions Frequent-pattern mining methods

  15. Maximal vs Closed Frequent Itemsets Closed but not maximal Minimum support = 2 Closed and maximal # Closed = 9 # Maximal = 4 Frequent-pattern mining methods

  16. Note on Closed Patterns • Closed patterns have no need to specify the minimum support • Given dataset, we can find a set of closed patterns from it, so that for any minimum support values, we can immediately find the set of patterns (a subset of the closed patterns). • Closed frequent patterns • Both closed and above the min support Frequent-pattern mining methods

  17. Maximal vs Closed Itemsets Frequent-pattern mining methods

  18. Mining Association Rules—an Example For rule AC: support = support({A}{C}) = 50% confidence = support({A}{C})/support({A}) = 66.6% Min. support 50% Min. confidence 50% Frequent-pattern mining methods

  19. Method 1:Apriori: A Candidate Generation-and-test Approach • Any subset of a frequent itemset must be frequent • if {beer, diaper, nuts} is frequent, so is {beer, diaper} • Every transaction having {beer, diaper, nuts} also contains {beer, diaper} • Apriori pruning principle: If there is any itemset which is infrequent, its superset should not be generated/tested! • Method: • generate length (k+1) candidate itemsets from length k frequent itemsets, and • test the candidates against DB • The performance studies show its efficiency and scalability • Agrawal & Srikant 1994, Mannila, et al. 1994 Frequent-pattern mining methods

  20. The Apriori Algorithm — An Example Database TDB L1 C1 1st scan C2 C2 L2 2nd scan L3 C3 3rd scan Frequent-pattern mining methods

  21. Speeding up Association rules Dynamic Hashing and Pruning technique Thanks to Cheng Hong & Hu Haibo

  22. DHP: Reduce the Number of Candidates • A k-itemset whose corresponding hashing bucket count is below the threshold cannot be frequent • Candidates: a, b, c, d, e • Hash entries: {ab, ad, ae} {bd, be, de} … • Frequent 1-itemset: a, b, d, e • ab is not a candidate 2-itemset if the sum of count of {ab, ad, ae} is below support threshold • J. Park, M. Chen, and P. Yu. An effective hash-based algorithm for mining association rules. In SIGMOD’95 Frequent-pattern mining methods

  23. Still challenging, the niche for DHP • DHP ( Park ’95 ): Dynamic Hashing and Pruning • Candidate large 2-itemsets are huge. • DHP: trim them using hashing • Transaction database is huge that one scan per iteration is costly • DHP: prune both number of transactions and number of items in each transaction after each iteration Frequent-pattern mining methods

  24. Hash Table Construction • Consider two items sets, all itesms are numbered as i1, i2, …in. For any any pair (x, y), has according to • Hash function bucket #= h({x y}) = ((order of x)*10+(order of y)) % 7 • Example: • Items = A, B, C, D, E, Order = 1, 2, 3 4, 5, • H({C, E})= (3*10 + 5)% 7 = 0 • Thus, {C, E} belong to bucket 0. Frequent-pattern mining methods

  25. How to trim candidate itemsets • In k-iteration, hash all candidate k+1 itemsets in a hash table, and count all the itemsets in each bucket. • In k+1 iteration, examine each of the candidate itemset to see if its correspondent bucket value is above the support ( necessary condition ) Frequent-pattern mining methods

  26. Example Figure1. An example transaction database Frequent-pattern mining methods

  27. Generation of C1 & L1(1st iteration) C1 L1 Frequent-pattern mining methods

  28. Hash Table Construction • Find all 2-itemset of each transaction Frequent-pattern mining methods

  29. Hash Table Construction (2) • Hash function h({x y}) = ((order of x)*10+(order of y)) % 7 • Hash table {C E} {A E} {B C} {B E} {A B} {A C} {C E} {B C} {B E} {C D} {A D} {B E} {A C} bucket 0 1 2 3 4 5 6 Frequent-pattern mining methods

  30. C2 Generation (2nd iteration) Frequent-pattern mining methods

  31. Apriori Don’t prune database. Prune Ck by support counting on the original database. DHP More efficient support counting can be achieved on pruned database. Effective Database Pruning Frequent-pattern mining methods

  32. Performance Comparison Frequent-pattern mining methods

  33. Performance Comparison (2) Frequent-pattern mining methods

  34. FP-growth Algorithm • Use a compressed representation of the database using an FP-tree • Once an FP-tree has been constructed, it uses a recursive divide-and-conquer approach to mine the frequent itemsets Frequent-pattern mining methods

  35. FP-tree construction null After reading TID=1: A:1 B:1 After reading TID=2: null B:1 A:1 B:1 C:1 D:1 Frequent-pattern mining methods

  36. FP-Tree Construction Transaction Database null B:3 A:7 B:5 C:3 C:1 D:1 Header table D:1 C:3 E:1 D:1 E:1 D:1 E:1 D:1 Pointers are used to assist frequent itemset generation Frequent-pattern mining methods

  37. FP-growth null Conditional Pattern base for D: (PB | D) = {(A:1,B:1,C:1), (A:1,B:1), (A:1,C:1), (A:1), (B:1,C:1)} Recursively apply FP-growth on PB, and then append to D Thus, frequent Itemsets found from PB|D (with min support = 2): AD, BD, CD, ABD, ACD, BCD A:7 B:1 B:5 C:1 C:1 D:1 D:1 C:3 D:1 D:1 D:1 Frequent-pattern mining methods

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