1 Improvements to A-Priori Park-Chen-Yu Algorithm Multistage Algorithm Approximate Algorithms Compacting Results.

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Presentation transcript:

1 Improvements to A-Priori Park-Chen-Yu Algorithm Multistage Algorithm Approximate Algorithms Compacting Results

2 PCY Algorithm uHash-based improvement to A-Priori. uDuring Pass 1 of A-priori, most memory is idle. uUse that memory to keep counts of buckets into which the pairs of items are hashed. wJust the count, not the pairs themselves. uGives extra condition that candidate pairs must satisfy on Pass 2.

3 Picture of PCY Hash table Item counts Bitmap Pass 1Pass 2 Frequent items Counts of candidate pairs

4 PCY Algorithm – Before Pass 1 Organize Main Memory uSpace to count each item. wOne (typically) 4-byte integer per item. uUse the rest of the space for as many integers, representing buckets, as we can.

5 PCY Algorithm – Pass 1 FOR (each basket) { FOR (each item) add 1 to item’s count; FOR (each pair of items) { hash the pair to a bucket; add 1 to the count for that bucket } }

6 Observations About Buckets 1.If a bucket contains a frequent pair, then the bucket is surely frequent. wWe cannot use the hash table to eliminate any member of this bucket. 2.Even without any frequent pair, a bucket can be frequent. wAgain, nothing in the bucket can be eliminated. 3.But in the best case, the count for a bucket is less than the support s. wNow, all pairs that hash to this bucket can be eliminated as candidates, even if the pair consists of two frequent items.

7 PCY Algorithm – Between Passes uReplace the buckets by a bit-vector: w1 means the bucket count exceeds the support s (a frequent bucket ); w0 means it did not. u4-byte integers are replaced by bits, so the bit- vector requires 1/32 of memory. uAlso, decide which items are frequent and list them for the second pass.

8 PCY Algorithm – Pass 2 uCount all pairs {i, j } that meet the conditions: 1.Both i and j are frequent items. 2.The pair {i, j }, hashes to a bucket number whose bit in the bit vector is 1. uNotice both these conditions are necessary for the pair to have a chance of being frequent.

9 Memory Details uHash table requires buckets of 2-4 bytes. wNumber of buckets thus almost 1/4-1/2 of the number of bytes of main memory. uOn second pass, a table of (item, item, count) triples is essential. wThus, hash table must eliminate 2/3 of the candidate pairs to beat a-priori with triangular matrix for counts.

10 Multistage Algorithm uIt might happen that even after hashing there are still too many surviving pairs and the main memory isn't sufficient to hold their counts. uKey idea: After Pass 1 of PCY, rehash only those pairs that qualify for Pass 2 of PCY. wUsing a different hash function! uOn middle pass, fewer pairs contribute to buckets, so fewer false positives –frequent buckets with no frequent pair.

11 Multistage Picture First hash table Second hash table Item counts Bitmap 1 Bitmap 2 Freq. items Counts of candidate pairs Pass 1 Pass 2Pass 3

12 Multistage – Pass 3 uCount only those pairs {i, j } that satisfy: 1.Both i and j are frequent items. 2.Using the first hash function, the pair hashes to a bucket whose bit in the first bit-vector is 1. 3.Using the second hash function, the pair hashes to a bucket whose bit in the second bit-vector is 1.

13 Multihash uKey idea: use several independent hash tables on the first pass. uRisk: halving the number of buckets doubles the average count. We have to be sure most buckets will still not reach count s. uIf so, we can get a benefit like multistage, but in only 2 passes.

14 Multihash Picture First hash table Second hash table Item counts Bitmap 1 Bitmap 2 Freq. items Counts of candidate pairs Pass 1 Pass 2

15 Extensions uEither multistage or multihash can use more than two hash functions. uIn multistage, there is a point of diminishing returns, since the bit-vectors eventually consume all of main memory. uFor multihash, the bit-vectors occupy exactly what one PCY bitmap does, but too many hash functions makes all counts > s.

16 All (Or Most) Frequent Itemsets In < 2 Passes uSimple algorithm. uSON (Savasere, Omiecinski, and Navathe). uToivonen.

17 Simple Algorithm uTake a random sample of the market baskets. uRun a-priori (for sets of all sizes, not just pairs) in main memory, so you don’t pay for disk I/O each time you increase the size of itemsets. wBe sure you leave enough space for counts. uUse as support threshold a suitable, scaled-back number. wE.g., if your sample is 1/100 of the baskets, use s /100 as your support threshold instead of s. Copy of sample baskets Space for counts

18 Simple Algorithm – Option uOptionally, verify that your guesses are truly frequent in the entire data set by a second pass. uBut you don’t catch sets frequent in the whole but not in the sample. wSmaller threshold, e.g., s /125, helps catch more truly frequent itemsets. But requires more space.

19 SON Algorithm – (1) uRepeatedly read small subsets of the baskets into main memory and perform the first pass of the simple algorithm on each subset. uAn itemset becomes a candidate if it is found to be frequent in any one or more subsets of the baskets. uOn a second pass, count all the candidate itemsets and determine which are frequent in the entire set. uKey “monotonicity” idea: an itemset cannot be frequent in the entire set of baskets unless it is frequent in at least one subset.

20 SON Algorithm – Distributed Version uThis idea lends itself to distributed data mining. uIf baskets are distributed among many nodes, compute frequent itemsets at each node, then distribute the candidates from each node. uFinally, accumulate the counts of all candidates.

21 Toivonen’s Algorithm – (1) uStart as in the simple algorithm, but lower the threshold slightly for the sample. uExample: if the sample is 1% of the baskets, use s /125 as the support threshold rather than s /100. uGoal is to avoid missing any itemset that is frequent in the full set of baskets.

22 Toivonen’s Algorithm – (2) uAdd to the itemsets that are frequent in the sample the negative border of these itemsets. uAn itemset is in the negative border if it is not deemed frequent in the sample, but all its immediate subsets are. uExample. ABCD is in the negative border if and only if it is not frequent, but all of ABC, BCD, ACD, and ABD are.

23 Toivonen’s Algorithm – (3) uIn a second pass, count all candidate frequent itemsets from the first pass, and also count their negative border. uIf no itemset from the negative border turns out to be frequent, then the candidates found to be frequent in the whole data are exactly the frequent itemsets.

24 Toivonen’s Algorithm – (4) uWhat if we find that something in the negative border is actually frequent? uWe must start over again! uTry to choose the support threshold so the probability of failure is low, while the number of itemsets checked on the second pass fits in main-memory.

25 Theorem: uIf there is an itemset that is frequent in the whole, but not frequent in the sample, uthen there is a member of the negative border for the sample that is frequent in the whole.

26 Proof: uSuppose not; i.e., there is an itemset S frequent in the whole but w Not frequent in the sample, and w Not present in the sample’s negative border. uLet T be a smallest subset of S that is not frequent in the sample. uT is frequent in the whole (S is frequent, monotonicity). uT is in the negative border (else not “smallest”).