Mining Association Rules in Large Databases Association rules • Given a set of transactions D, find rules that will predict the occurrence of an item (or a set of items) based on the occurrences of other items in the transaction Market-Basket transactions TID Items 1 Bread, Milk 2 3 4 5 Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke Examples of association rules {Diaper} → {Beer}, {Milk, Bread} → {Diaper,Coke}, {Beer, Bread} → {Milk}, An even simpler concept: frequent itemsets • Given a set of transactions D, find combination of items that occur frequently Market-Basket transactions TID Items 1 2 3 4 5 Bread, Milk Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke Examples of frequent itemsets {Diaper, Beer}, {Milk, Bread} {Beer, Bread, Milk}, Lecture outline • Task 1: Methods for finding all frequent itemsets efficiently • Task 2: Methods for finding association rules efficiently Definition: Frequent Itemset • Itemset – A set of one or more items • E.g.: {Milk, Bread, Diaper} – k‐itemset • An itemset that contains k items • Support count (σ) – Frequency of occurrence of an itemset (number of transactions it appears) – E.g. σ({Milk, Bread,Diaper}) = 2 • Support – Fraction of the transactions in which an itemset appears – E.g. s({Milk, Bread, Diaper}) = 2/5 • Frequent Itemset – An itemset whose support is greater than or equal to a minsup threshold TID Items 1 Bread, Milk 2 3 4 5 Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke Why do we want to find frequent itemsets? • Find all combinations of items that occur together • They might be interesting (e.g., in placement of items in a store ☺) • Frequent itemsets are only positive combinations (we do not report combinations that do not occur frequently together) • Frequent itemsets aims at providing a summary for the data Finding frequent sets • Task: Given a transaction database D and a minsup threshold find all frequent itemsets and the frequency of each set in this collection • Stated differently: Count the number of times combinations of attributes occur in the data. If the count of a combination is above minsup report it. • Recall: The input is a transaction database D where every transaction consists of a subset of items from some universe I How many itemsets are there? null A B C D E AB AC AD AE BC BD BE CD CE DE ABC ABD ABE ACD ACE ADE BCD BCE BDE CDE ABCD ABCE ABDE ABCDE ACDE BCDE Given d items, there are 2d possible itemsets When is the task sensible and feasible? • If minsup = 0, then all subsets of I will be frequent and thus the size of the collection will be very large • This summary is very large (maybe larger than the original input) and thus not interesting • The task of finding all frequent sets is interesting typically only for relatively large values of minsup A simple algorithm for finding all frequent itemsets ?? null A B C D E AB AC AD AE BC BD BE CD CE DE ABC ABD ABE ACD ACE ADE BCD BCE BDE CDE ABCD ABCE ABDE ABCDE ACDE BCDE Brute‐force algorithm for finding all frequent itemsets? • Generate all possible itemsets (lattice of itemsets) – Start with 1‐itemsets, 2‐itemsets,...,d‐itemsets • Compute the frequency of each itemset from the data – Count in how many transactions each itemset occurs • If the support of an itemset is above minsup report it as a frequent itemset Brute‐force approach for finding all frequent itemsets • Complexity? – Match every candidate against each transaction – For M candidates and N transactions, the complexity is~ O(NMw) => Expensive since M = 2d !!! Speeding‐up the brute‐force algorithm • Reduce the number of candidates (M) – Complete search: M=2d – Use pruning techniques to reduce M • Reduce the number of transactions (N) – Reduce size of N as the size of itemset increases – Use vertical‐partitioning of the data to apply the mining algorithms • Reduce the number of comparisons (NM) – Use efficient data structures to store the candidates or transactions – No need to match every candidate against every transaction Reduce the number of candidates • Apriori principle (Main observation): – If an itemset is frequent, then all of its subsets must also be frequent • Apriori principle holds due to the following property of the support measure: ∀X , Y : ( X ⊆ Y ) ⇒ s( X ) ≥ s(Y ) – The support of an itemset never exceeds the support of its subsets – This is known as the anti‐monotone property of support Example TID Items 1 Bread, Milk 2 3 4 5 Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke s(Bread) > s(Bread, Beer) s(Milk) > s(Bread, Milk) s(Diaper, Beer) > s(Diaper, Beer, Coke) Illustrating the Apriori principle Found to be Infrequent Pruned supersets Illustrating the Apriori principle Item Bread Coke Milk Beer Diaper Eggs Count 4 2 4 3 4 1 Items (1-itemsets) minsup = 3/5 If every subset is considered, 6C + 6C + 6C = 41 1 2 3 With support-based pruning, 6 + 6 + 1 = 13 Itemset {Bread,Milk} {Bread,Beer} {Bread,Diaper} {Milk,Beer} {Milk,Diaper} {Beer,Diaper} Count 3 2 3 2 3 3 Pairs (2-itemsets) (No need to generate candidates involving Coke or Eggs) Triplets (3-itemsets) Ite m s e t { B r e a d ,M ilk ,D ia p e r } C ount 3 Exploiting the Apriori principle 1. 2. 3. 4. Find frequent 1‐items and put them to Lk (k=1) Use Lk to generate a collection of candidate itemsets Ck+1 with size (k+1) Scan the database to find which itemsets in Ck+1 are frequent and put them into Lk+1 If Lk+1 is not empty k=k+1 Goto step 2 R. Agrawal, R. Srikant: "Fast Algorithms for Mining Association Rules", Proc. of the 20th Int'l Conference on Very Large Databases, 1994. The Apriori algorithm Ck: Candidate itemsets of size k Lk : frequent itemsets of size k L1 = {frequent 1‐itemsets}; for (k = 2; Lk !=∅; k++) Ck+1 = GenerateCandidates(Lk) for each transaction t in database do increment count of candidates in Ck+1 that are contained in t endfor Lk+1 = candidates in Ck+1 with support ≥min_sup endfor return ∪k Lk; GenerateCandidates • Assume the items in Lk are listed in an order (e.g., alphabetical) • Step 1: self‐joining Lk (IN SQL) insert into Ck+1 select p.item1, p.item2, …, p.itemk, q.itemk from Lk p, Lk q where p.item1=q.item1, …, p.itemk‐1=q.itemk‐1, p.itemk < q.itemk Example of Candidates Generation • L3={abc, abd, acd, ace, bcd} • Self‐joining: L3*L3 {a,c,d} – abcd from abc and abd {a,c,e} {a,c,d,e} – acde from acd and ace acd ace ade cde GenerateCandidates • Assume the items in Lk are listed in an order (e.g., alphabetical) • Step 1: self‐joining Lk (IN SQL) insert into Ck+1 select p.item1, p.item2, …, p.itemk, q.itemk from Lk p, Lk q where p.item1=q.item1, …, p.itemk‐1=q.itemk‐1, p.itemk < q.itemk • Step 2: pruning forall itemsets c in Ck+1 do forall k‐subsets s of c do if (s is not in Lk) then delete c from Ck+1 Example of Candidates Generation • L3={abc, abd, acd, ace, bcd} • Self‐joining: L3*L3 {a,c,d} – abcd from abc and abd {a,c,d,e} X – acde from acd and ace • Pruning: – acde is removed because ade is not in L3 • C4={abcd} {a,c,e} acd √ ace √ ade cde X The Apriori algorithm Ck: Candidate itemsets of size k Lk : frequent itemsets of size k L1 = {frequent items}; for (k = 1; Lk !=∅; k++) Ck+1 = GenerateCandidates(Lk) for each transaction t in database do increment count of candidates in Ck+1 that are contained in t endfor Lk+1 = candidates in Ck+1 with support ≥min_sup endfor return ∪k Lk; How to Count Supports of Candidates? • Naive algorithm? – Method: – Candidate itemsets are stored in a hash‐tree – Leaf node of hash‐tree contains a list of itemsets and counts – Interior node contains a hash table – Subset function: finds all the candidates contained in a transaction Example of the hash‐tree for C3 Hash function: mod 3 H H 1,4,.. 2,5,.. 3,6,.. Hash on 3rd item H 145 H 124 457 125 458 234 567 345 159 Hash on 1st item H 356 689 Hash on 2nd item 367 368 Example of the hash‐tree for C3 Hash function: mod 3 12345 H 1,4,.. 2,5,.. 3,6,.. 2345 look for 2XX H 12345 look for 1XX H Hash on 3rd item 145 H 124 457 125 458 234 567 345 159 345 look for 3XX Hash on 1st item H 356 689 Hash on 2nd item 367 368 Example of the hash‐tree for C3 Hash function: mod 3 12345 H 1,4,.. 2,5,.. 3,6,.. 2345 look for 2XX H 12345 look for 1XX H 12345 look for 12X 12345 look for 13X (null) 12345 look for 14X 145 H 124 457 125 458 234 567 ∅ 345 345 look for 3XX Hash on 1st item H 356 689 Hash on 2nd item 367 368 159 The subset function finds all the candidates contained in a transaction: • At the root level it hashes on all items in the transaction • At level i it hashes on all items in the transaction that come after item the i‐th item Discussion of the Apriori algorithm • Much faster than the Brute‐force algorithm – It avoids checking all elements in the lattice • The running time is in the worst case O(2d) – Pruning really prunes in practice • It makes multiple passes over the dataset – One pass for every level k • Multiple passes over the dataset is inefficient when we have thousands of candidates and millions of transactions Making a single pass over the data: the AprioriTid algorithm • The database is not used for counting support after the 1st pass! • Instead information in data structure Ck’ is used for counting support in every step – Ck’ = {<TID, {Xk}> | Xk is a potentially frequent k‐itemset in transaction with id=TID} – C1’: corresponds to the original database (every item i is replaced by itemset {i}) – The member Ck’ corresponding to transaction t is <t.TID, {c є Ck| c is contained in t}> The AprioriTID algorithm • • • L1 = {frequent 1‐itemsets} C1’ = database D for (k=2, Lk‐1’≠ empty; k++) Ck = GenerateCandidates(Lk‐1) Ck’ = {} for all entries t є Ck‐1’ Ct= {cє Ck|t[c‐c[k]]=1 and t[c‐c[k‐1]]=1} for all cє Ct {c.count++} if (Ct≠ {}) append Ct to Ck’ endif endfor Lk= {cє Ck|c.count >= minsup} endfor • return UL k k AprioriTid Example (minsup=2) Database D TID Items 100 1 3 4 200 2 3 5 300 1 2 3 5 400 2 5 C2 C3 itemset {1 2} {1 3} {1 5} {2 3} {2 5} {3 5} itemset {2 3 5} L1 C1’ TID 100 Sets of itemsets {{1},{3},{4}} 200 {{2},{3},{5}} 300 {{1},{2},{3},{5}} 400 {{2},{5}} itemset sup. {1} 2 {2} 3 {3} 3 {5} 3 C2’ TID 100 Sets of itemsets {{1 3}} 200 {{2 3},{2 5},{3 5}} 300 400 {{1 2},{1 3},{1 5}, 3},{2 5},{3 5}} {{2 5}} TID 200 Sets of itemsets {{2 3 5}} 300 {{2 3 5}} L2 itemset {1 3} {2 3} {2 5} {3 5} {2 C3’ sup 2 2 3 2 itemset sup L3 {2 3 5} 2 Discussion on the AprioriTID algorithm • • • L1 = {frequent 1‐itemsets} • One single pass over the C1’ = database D data for (k=2, Lk‐1’≠ empty; k++) Ck = GenerateCandidates(Lk‐1) Ck’ = {} • Ck’ is generated from Ck‐1’ for all entries t є Ck‐1’ Ct= {cє Ck|t[c‐c[k]]=1 and t[c‐c[k‐1]]=1} for all cє Ct {c.count++} • For small values of k, Ck’ if (Ct≠ {}) append Ct to Ck’ could be larger than the endif endfor Lk= {cє Ck|c.count >= minsup} • endfor return Uk Lk database! • For large values of k, Ck’ can be very small Apriori vs. AprioriTID • Apriori makes multiple passes over the data while AprioriTID makes a single pass over the data • AprioriTID needs to store additional data structures that may require more space than Apriori • Both algorithms need to check all candidates’ frequencies in every step Implementations • Lots of them around • See, for example, the web page of Bart Goethals: http://www.adrem.ua.ac.be/~goethals/software/ • Typical input format: each row lists the items (using item id's) that appear in every row Lecture outline • Task 1: Methods for finding all frequent itemsets efficiently • Task 2: Methods for finding association rules efficiently Definition: Association Rule Let D be database of transactions – e.g.: Transaction ID Items 2000 A, B, C 1000 A, C 4000 A, D 5000 B, E, F • Let I be the set of items that appear in the database, e.g., I={A,B,C,D,E,F} • A rule is defined by X Y, where X⊂I, Y⊂I, and X∩Y=∅ – e.g.: {B,C} {A} is a rule Definition: Association Rule Association Rule An implication expression of the form X → Y, where X and Y are non-overlapping itemsets Example: {Milk, Diaper} → {Beer} Rule Evaluation Metrics Support (s) Fraction of transactions that contain both X and Y Confidence (c) Measures how often items in Y appear in transactions that contain X TID Items 1 Bread, Milk 2 3 4 5 Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke Example: {Milk , Diaper} → Beer s= c= σ ( Milk , Diaper, Beer ) |T| = 2 = 0 .4 5 σ (Milk, Diaper, Beer) 2 = = 0.67 3 σ (Milk, Diaper) Rule Measures: Support and Confidence Customer buys both Customer buys diaper Find all the rules X Y with minimum confidence and support – support, s, probability that a transaction contains {X ∪ Y} – confidence, c, conditional probability that a transaction having X also contains Y Customer buys beer TID Items 100 A,B,C 200 A,C 300 A,D 400 B,E,F Let minimum support 50%, and minimum confidence 50%, we have A C C (50%, 66.6%) A (50%, 100%) Example TID date items_bought 100 200 300 400 10/10/99 15/10/99 19/10/99 20/10/99 {F,A,D,B} {D,A,C,E,B} {C,A,B,E} {B,A,D} What is the support and confidence of the rule: {B,D} {A} Support: percentage of tuples that contain {A,B,D} = 75% Confidence: number of tuples that contain {A, B, D} = 100% number of tuples that contain {B, D} Association‐rule mining task • Given a set of transactions D, the goal of association rule mining is to find all rules having – support ≥ minsup threshold – confidence ≥ minconf threshold Brute‐force algorithm for association‐rule mining • List all possible association rules • Compute the support and confidence for each rule • Prune rules that fail the minsup and minconf thresholds • ⇒ Computationally prohibitive! Computational Complexity • Given d unique items in I: – Total number of itemsets = 2d – Total number of possible association rules: ⎡⎛ d ⎞ ⎛ d − k ⎞⎤ R = ∑ ⎢⎜ ⎟ × ∑ ⎜ ⎟⎥ ⎣⎝ k ⎠ ⎝ j ⎠⎦ = 3 − 2 +1 d −1 d −k k =1 j =1 d d +1 If d=6, R = 602 rules Mining Association Rules TID Items 1 Bread, Milk 2 3 4 5 Bread, Diaper, Beer, Eggs Milk, Diaper, Beer, Coke Bread, Milk, Diaper, Beer Bread, Milk, Diaper, Coke Example of Rules: {Milk,Diaper} → {Beer} (s=0.4, c=0.67) {Milk,Beer} → {Diaper} (s=0.4, c=1.0) {Diaper,Beer} → {Milk} (s=0.4, c=0.67) {Beer} → {Milk,Diaper} (s=0.4, c=0.67) {Diaper} → {Milk,Beer} (s=0.4, c=0.5) {Milk} → {Diaper,Beer} (s=0.4, c=0.5) Observations: • All the above rules are binary partitions of the same itemset: {Milk, Diaper, Beer} • Rules originating from the same itemset have identical support but can have different confidence • Thus, we may decouple the support and confidence requirements Mining Association Rules • Two‐step approach: – Frequent Itemset Generation – Generate all itemsets whose support ≥ minsup – Rule Generation – Generate high confidence rules from each frequent itemset, where each rule is a binary partition of a frequent itemset Rule Generation – Naive algorithm • Given a frequent itemset X, find all non‐empty subsets y⊂ X such that y→ X – y satisfies the minimum confidence requirement – If {A,B,C,D} is a frequent itemset, candidate rules: ABC →D, A →BCD, AB →CD, BD →AC, ABD →C, B →ACD, AC → BD, CD →AB, ACD →B, C →ABD, AD → BC, BCD →A, D →ABC BC →AD, • If |X| = k, then there are 2k – 2 candidate association rules (ignoring L → ∅ and ∅ → L) Efficient rule generation • How to efficiently generate rules from frequent itemsets? – In general, confidence does not have an anti‐monotone property c(ABC →D) can be larger or smaller than c(AB →D) – But confidence of rules generated from the same itemset has an anti‐monotone property – Example: X = {A,B,C,D}: c(ABC → D) ≥ c(AB → CD) ≥ c(A → BCD) – Why? Confidence is anti‐monotone w.r.t. number of items on the RHS of the rule Rule Generation for Apriori Algorithm Lattice of rules Low Confidence Rule Pruned Rules Apriori algorithm for rule generation • Candidate rule is generated by merging two rules that share the same prefix in the rule consequent CD AB BD AC • join(CD AB,BD—>AC) would produce the candidate rule D ABC D ABC • Prune rule D ABC if there exists a subset (e.g., AD BC) that does not have high confidence