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Rank Aggregation.

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Presentation on theme: "Rank Aggregation."— Presentation transcript:

1 Rank Aggregation

2 Rank Aggregation: Settings
Multiple items Web-pages, cars, apartments,…. Multiple scores for each item By different reviewers, users, according to different features… Some aggregation function on the scores Sum, Average, Max… Goal: compute the top-k items

3 Rank Aggregation Example
Model PriceRank Honda 9 Volvo 3 Subaru Model ComfortRank Honda 7 Volvo 10 Subaru 5 Model BeautyRank Honda 3 Volvo 8 Subaru 4 Model TotalRank(min) Honda 3 Volvo Subaru 4 Model TotalRank(avg) Honda 6.333 Volvo 7 Subaru 6

4 Naïve Algorithm Compute the aggregated rank for all items
Find the best one, then the second best one… the k best one Good for small-scale problems Still not feasible for web scales…

5 Can we do any better? An assumption to help us: each individual list comes sorted Reasonable for search engines, user rankings… Another assumption: monotonicity of the aggregation function Now can we do any better?

6 Fagin's algorithm (FA) Do sorted access on all lists in parallel
For every item do random access to the other lists to fetch all of its values Stop when at least k items were seen (in the sorted access) in all lists Sort the list Why is this enough?

7 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5

8 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5

9 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5

10 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4

11 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4

12 Example (top-3) Beauty Comfort Average Item Score A 9 B C 3 D 1 Item
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4 How do we know not to look further?

13 Complexity Probabilistic analysis on the order of items can be used to show better bounds (with good probability) Can we do even better?

14 Cost model This is a very simple settings so we can define a finer cost model than worst case complexity In a web context it is important to do so Since the scale is huge We associate some cost Cs with every sorted access , and some cost Cr with every random access Denote the cost for algorithm A on input instance I by cost(A,I)

15 Instance-optimality An algorithm A is instance-optimal if for every input instance I, cost(A,I) = O(cost(A',I)) for every algorithm A' A very strong notion But we can realize it here!

16 Threshold Algorithm (TA)
Idea: sometimes we can stop before seeing k objects in every list Use a threshold on how good can a score of an unseen object be. Based on aggregating the minimal score seen so far in all lists

17 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5

18 Example T=9.5 Beauty Comfort Average Item Score A 9 B C 3 D 1 Item
10 C 5 A 4 D 3 Item Score A 6.5 T=9.5

19 Example T=9.5 Beauty Comfort Average Item Score A 9 B C 3 D 1 Item
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 T=9.5

20 Example T=7 Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4 T=7

21 Example T=4 Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4 T=4 One step less!

22 Theorem Assume that the aggregation function t is monotone. Let D be the class of all databases. Let A be the class of all algorithms that correctly find the top k answers for t for every database and that do not make wild guesses. Then TA is instance optimal over A and D

23 Proof Assume that algorithm A halts at depth d (that is, if di is the number of objects seen under sorted access to list i; then d =max di). Assume that A sees a distinct objects (some possibly multiple times). In particular, a>= d: Since A makes no wild guesses, and sees a distinct objects, it must make at least a sorted accesses

24 Claim: TA halts on D by depth a +k
Note that for each choice of d’ TA sees at least d0 objects by depth d’ By depth d’ it has made m*d’ sorted accesses, and each object is accessed at most m times under sorted access. If there are at most k objects that A does not see, then TA halts by depth a + k (after having seen every object), and we are done.

25 Now assume that there are at least k + 1 objects that A does not see.
Let Y be the output set of A Since Y is of size k; there is some object V that A does not see and that is not in Y Let t be the threshold value when algorithm A halts I.e. the aggregation of the lowest scores observed

26 Call object R big if it has grade better than t, otherwise small
Claim: Every R in Y is big Proof: Add another item with “lowest” di values in di, it is not seen by A thus not outputted; by correctness of A the claim follows Now TA will see all elements in Y after depth d and will halt d <= a and so we are done.

27 Restricted Sorted Access
Some rankings are not available as sorted E.g. distances from a map site Then we can revise TA to do sorted access only on the list where it is possible And still instance-optimal! (Against algorithms that work under the same restrictions, of course)

28 No Random Access Maintain bottom and upper bounds for every item (worst and best grades) Best is the aggregation of what we have seen and the worst we have seen in every list, Worst is the aggregation with what we have seen and zeros Keep in the list those with top-K "worst" grades Break ties by "best" grades Halt if we have k items in the list, and the best grade for every item out of the list is less than the k'th in the list

29 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 4.5<S<9.5

30 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 4.5<S<9.5 B 5<S<9.5

31 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 4.5<S<9.5 B 9.5

32 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 4.5<S<9.5 B 9.5 C 2.5<S<7

33 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 4.5<S<9.5 B 9.5 C 4 Item Score A 6.5 B 9.5 C 4

34 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4 Item Score A 6.5 B 9.5 C 4

35 Example Beauty Comfort Average Item Score A 9 B C 3 D 1 Item Score B
10 C 5 A 4 D 3 Item Score A 6.5 B 9.5 C 4 Item Score A 6.5 B 9.5 C 4 Score(D)<3


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