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Computer Science and Engineering. Efficiently Monitoring Top-k Pairs over Sliding Windows. Presented By: Zhitao Shen 1 Joint work with Muhammad Aamir Cheema 1 , Xuemin Lin 21 , Wenjie Zhang 1 , Haixun Wang 3. 1 The University of New South Wales, Australia - PowerPoint PPT Presentation

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Computer Science and Engineering

Efficiently Monitoring Top-k Pairs over Sliding Windows

Presented By: Zhitao Shen1

Joint work with Muhammad Aamir Cheema1, Xuemin Lin21, Wenjie Zhang1, Haixun

Wang3

1The University of New South Wales, Australia

2 East China Normal University3 Microsoft Research Asia

2

IntroductionTop-k Pairs Query:• Given a scoring function score() that computes the score of a pair of

objects, return k pairs of objects with the smallest scores.

Examples:• k closest pairs queries• k furthest pairs queries

Top-k Pairs against sliding windows• Given a data stream, return top-k pairs among the most recent N objects.

Applications• Wireless sensor network, stock market, traffic monitoring and transaction

monitoring

3

MotivationNo existing work for general pairs queries over sliding windows

Support arbitrary scoring functions.

Example:Fraud detection over transaction streams

– Query the transaction pairs that have small time difference but the locations are far away.

Select a.id, b.id from trans a, trans bwhere a.id <> b.id and a.account = b.accountorder by |a.time - b.time| - dist(a.loc, b.loc)limit kwindow [24 hours]

203-13845 10:15:20 New York $1000

203-13845 10:18:10 L.A. $1000

4

Problem Definitions (Preliminaries)Sliding Windows

– A sliding window contains most recent N objects of the data stream.

– The number of pairs is N(N – 1) / 2

Sliding window of size 5

neweroldero1o2o3o4o5o6o7

. . . . .o0

Lower bound runtime cost : O(N) for each new objectLower bound storage cost : O(N)

Age of an object: 5 4 3 2 1 0

The age of a pair depends on the

older object.

5

ContributionsUnified framework • First to study top-k pairs queries over sliding windows.• Support arbitrarily complex scoring functions• Support efficient queries for any window size n ≤ N and any k ≤ K

Lower bound Expected cost for our algorithms

Storage requirement O(N) O(N) + O(K log(N/K)) for eachscoring function

Skyband maintenance cost for each object

O(N) O(N (log (log N) + log K))

Answering top-k pairs O(k) O(log(log n) + log K + k)

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Preliminaries

p1

p2

p4

p7

Age

Sco

re

Map all the pairs to an age–score spaceTop-2 pairs

K-skyband[Papadias et al., TODS05] keeps the minimum set for the candidate results.

p2 dominates p5 because p2.score < p5.score and p2 expires no later than p5.

Task1 : how we efficiently maintain the K-skyband Task2 : how we use the K-skyband to efficiently obtain top-k pairs against any sliding window n ≤ N

p1(o0, o1) (p1.age, p1.score) (1, 3)

o1o2o3o4 o0

p3

p5

p6

p8

p9

p10

1 2 3 4

Naive: O(N |SKB|) for checking all N-1 pairs

Expected size of skyband is O(K log(N/K))

Our: O(N log|SKB|)

7

p1

p2

p3

p4

2-skyband Age

Sco

re

p5

Efficient Skyband MaintenanceCan we find a boundary between the

skyband points and non-skyband points?

K-staircase

How can we efficiently compute the K-staircase and K-skyband?

s1

Update the K-staircase and K-skyband in O(|SKB| log K)),

Check if a pair is dominated by K-skyband in O(log |SKB|) time for each new pair by doing binary search.

p5

K-staircase

s1

s2

s2 p1

p6

p7

8

Window size = NAny window size = n < N

Efficient Query Answering

p3

p1

p5

p7

p8

2-skyband Age

Sco

re

p6

p4

p2

Can we do better for any sliding window size n < N?

Use Priority Search Tree to index the skyband points

Self-balancing treeEfficient 3-sides range query

6p1

3p5

1p7 4p6

2p8

9p2

8p3

5p4

Priority Search Tree

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Efficient Query Answering

p3

p1

p5

p7

p8

2-skyband Age

Sco

re

p6

p4

p2

Our contribution: Retrieve top-k pairs in the 1-sided range.

An algorithm similar to post-order traversal costs O(log|SKB| + k)

Any window size = n < N

6p1

3p5

1p7 4p6

2p8

9p2

8p3

5p4

Priority Search Tree

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What else in the paper?Efficient continuous queries on the skyband.• Continuously monitoring the top-k results for any fixed k (k ≤ K) and

n (n ≤ N).• Amortized O(k/n (log |SKB| + k)) time per update.

Optimization on monotonic scoring functions.• Handling the k-closest pairs, k-furthest pairs queries.• Applying Threshold Algorithm on sorted lists • Improving the number of considered pairs for each new object from

N to (d+1) N d/(d+1) K 1/(d+1)

11

Experimental SettingsReal dataset.

– Sensor data in the Intel research lab– 2.3 million records.

Synthetic data.– Uniform, correlated and anti-correlated distributions.– 2 million objects– Closest and furthest pairs in Manhattan distance

|.humidityo-.humidityo| |.tempo-.tempo| |.timeo-.timeo|

)o ,score(oyxyx

yxyx

12

Experiments (Overall Cost on real data)SCase: our algorithm using K-staircase to maintain the skyband.Naïve: maintains kN pairs and sort them on their scores.LB: shows lower bound cost

Varying K Varying N (in thousands)

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Experiments (Query Answering)Linear: scan the skyband points to find the top-k pairs.Snapshot: our snapshot query algorithm.Continuous: our continuous query algorithm.LB: an algorithm to obtain top-k results in O(k) time.

Varying K Varying |Q| (in thousands)

14

Conclusion:• First to study a broad class of top-k pairs queries over

sliding windows.

• We present efficient algorithms and show that the performance of our algorithm is reasonably close to the lower bound cost.

• We provide extensive experiment results on both real and synthetic data sets to show the efficiency and scalability of the proposed algorithms.

15

Question and Answer

Thank You!Any Questions?

16

Related WorkTop-k Query Processing• Fagin’s Algorithm (FA), threshold Algorithm (TA), no-random access

(NRA)

Top-k Pairs Queries Processing• k-closest pairs queries• k-furthest pairs queries• Top-k pairs queries [Cheema et al., ICDE’11]

Data Stream Processing• Top-k query processing over data stream [Mouratidis et al.,

SIGMOD’06]• k-nearest neighbour queries [Böhm et al., ICDE’07]

17

Experiments (Skyband Maintenance algorithm)Basic: maintening algorithm without K-staircase

SCase: our algorithm using K-staircase to maintain the skyband.TA: Optimized algorithm for monotonic scoring functions.LB: show lower bound cost

# of attributesVarying K

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