mehdi kargar aijun an york university, toronto, canada keyword search in graphs: finding r-cliques
TRANSCRIPT
Mehdi KargarAijun An
York University, Toronto, Canada
Keyword Search in Graphs:Finding r-cliques
Overview
• Keyword Search in Graphs/Relational Databases• r-clique Definition• Challenges in Finding r-clique• Approximation Algorithm for Finding r-cliques• Enumerating Top-k r-cliques in Polynomial Delay
• Empirical Results• Conclusion
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Keyword Search in Graphs/Relational Databases
• Keyword search is a well known mechanism for retrieving relevant information from a set of documents.• Google is a familiar example !
• What about structured data?• Such as XML documents or Relational Databases?
• Current enterprise search engines in structured data requires:• Knowledge of schema• Knowledge of a query language• Knowledge of the role of the keywords
• Do users have all of the above Knowledge ? • The answer is NO !
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Keyword Search in Graphs/Relational Databases
• Users need a simple system that receives some keywords as input and returns a set of nodes that together cover all or part of the input keywords as output.
• Relational databases can be modeled using graphs:• Tuples are nodes of the graph. • Foreign key relationships are edges that connect two nodes
(tuples) to each other.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Example: Search in Relational Databases
ID Name Country
22 Toronto CA
16 New York US
ID Name Head Q.
135 UN 16
175 EU 81
Country Org.
CA 135
US 135
Code Name
CA Canada
US United States
CitiesCities OrganizationsOrganizations
CountriesCountries MembershipsMemberships
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
New York is Located in United States
ID Name Country
22 Toronto CA
16 New York US
ID Name Head Q.
135 UN 16
175 EU 81
Country Org.
CA 135
US 135
Code Name
CA Canada
US United States
CitiesCities OrganizationsOrganizations
CountriesCountries MembershipsMemberships
Keywords : “New York” “United States”
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
New York hosts UN and Canada is a member
ID Name Country
22 Toronto CA
16 New York US
ID Name Head Q.
135 UN 16
175 EU 81
Country Org.
CA 135
US 135
Code Name
CA Canada
US United States
CitiesCities OrganizationsOrganizations
CountriesCountries MembershipsMemberships
Keywords : “New York” “Canada”
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Previous Approaches
• Most of the works find minimal connected trees that contain all or part of the input keywords.• The tree is called Steiner Tree.
• Recently, methods that produce sub-graphs are proposed. They might provide more informative answers• One of the recent approaches is called multi-center community
(ICDE 2009).
• So, what is the problem with previous approaches?
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Problems with Previous Approaches
1. There might be some content nodes that are far away from each other.
• It means that weak relationships among content nodes might exist.• There is no guarantee on the closeness of the nodes.• Since all keywords are equally important, all of them should be close
to each other. They are also equally important in the ranking function.
2. While searching for the answers, current methods explore both content and non-content nodes.
• This might lead to poor performance.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
r-cliques• To solve the problem of previous approaches, we propose to
find r-cliques.• An r-clique is a set of content nodes that together contain all
of the input keywords and in which the shortest distance between each pair of nodes is no longer than r.
• Weight of r-clique: Suppose that the nodes of an r-clique are denoted as {v1, v2, … , vn}. The weight of the r-clique is defined as:
• dist(vi,vj) is the shortest distance between vi and vj .
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Benefits of Finding r-cliques• Finding r-cliques as the answers for keyword search in
graphs does not have the problems of previous approaches.
• All of the content nodes are reasonably close to each other.• The weight function evaluates all of the content nodes
equally.• The algorithm (to be discussed later) for finding r-cliques
concentrate on the content nodes rather than all of the nodes in the graph. So, it is faster and more efficient.
• For presenting the relationships, the final answer has less irrelevant nodes than a multi-center community.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
An Example
Input Keyword: James John Jack
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r-clique weight: 12tree weight: 8community weight: 8
r-clique weight: 14tree weight: 7community weight: 7
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Challenges in Finding r-cliques• Problem 1: Given a distance threshold r, a graph G and a
set of input keywords, find an r-clique in G whose weight is minimum.
• Theorem: Problem 1 is NP-hard.• Proved in the paper by reduction from 3-satisfiability (3-SAT).
• Solution : Approximation algorithm with guaranteed ratio.
• Total number of answers is exponential regarding the number of input keywords.• It is not efficient to generate all answers and then sort them.
• Solution : Enumerating answers in polynomial delay.
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What We Need …• Producing r-cliques in a ranking order
• r-cliques with lower weights should be presented before ones with higher weights.
• Producing top-k r-cliques efficiently with a bound on approximation ratio • Each r-clique must be generated efficiently in polynomial time.• There must be a bound on the quality of a generated r-clique
• The weight of a generated r-clique should be within some factor of the current optimal solution
• Generating all the r-cliques if needed• No r-clique should be missed
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Heuristic and Approximate Order
It is close to the optimal answer with a provable guarantee
It is expected to be close to the optimal answer.
But, we have no guarantee
Heuristic Order
Approximate Order
Desired Choice
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Enumerating in Approximate Order• The Lawler’s technique is used for finding the top-k
answers.• In each iteration, the next r-clique is generated by finding
the top answer under constraints.• Two problems should be solved
1- What are the constraints?
2- How top answer can be found efficiently under the constraints?
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Overview of the SystemInput
Keywords+
Value of k
Find best Answer with
no Constraint
Insert the best r-clique with the search space in priority queue
Fetch the best r-clique from
priority queue and print it
Divide the related search space of the top answer
into sub-spaces
Find best r-clique in each sub-space
with associated constrains
Insert each answer with the related
search space into priority queue
Top-k already printedOR
Empty priority queue
?YESTerminate
NO
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Constraints and Search Space• Let’s do it using an example !
• Suppose that the input keywords are {k1, k2, k3, k4}.
• Ci = {set of nodes that contains keyword ki }.
• The search space that contains the best r-clique can be represented as {C1 ᵡ C2 ᵡ C3 ᵡ C4}.
• Assume that the best r-clique is (v1, v2, v3, v4), where vi is a node containing keyword ki .
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The whole search space
Finding Best Approximate r-clique• Step 1: for all content nodes n in the search space, for all
keywords ki, find the closest node in the search space which contains ki.
• Step 2: for all content nodes n, for all keywords ki, calculate the sum of distances from n to the holder of ki.
• Step 3: Find the content node with the minimum sum of distances among other content nodes.
• Step 4: Return the set of content nodes with the minimum sum of distances.
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Properties of the Approximation Algorithm• Only content nodes are searched for finding the best
answer in the search space.
• The approximation ratio of the algorithm is equal to 2.• The weight of the answer is at most twice of the weight of the
optimal answer.
• Proof can be found in the paper.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Presenting r-cliques to the User• To show the relationship between the nodes in an r-clique,
a Steiner tree is found and presented to the user.
Distributed Parallel Algorithm For Nonlinear Optimization
Without Derivatives
A Binding Number Computation of Graph
Xuping Zhang
w
w
Keywords : (in DBLP dataset)“Parallel” “Algorithm” “Optimization” “Graph”
Distributed Parallel Algorithm For Nonlinear Optimization
Without Derivatives
A Binding Number Computation of Graph
Congying Han
w w
A New Non-interior Continuation Method for Second-Order Cone Programming
Guoping He
Xuping Zhang
w w w w
w
r-clique
communityIrrelevant
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Experimental Results• The r-clique is compared with the multi-center community
method (it is called com-k).
• Our approximation algorithm is called poly-delay-k.
• Two datasets are used: DBLP and IMDb.
• The set of input keywords and parameters are the same as the community paper.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Running Time
DBLP Dataset
IMDb Dataset24/28
VLDB’11 Keyword Search in Graphs: Finding r-cliques
Quality of the Answers DBLP Dataset
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Search Accuracy from a User Study
DBLP Dataset 26/28
VLDB’11 Keyword Search in Graphs: Finding r-cliques
• Top-k precision: the percentage of the answers in the top-k answers that are relevant to the query.
• The users are asked to evaluate the answers using two methods.• In the first approach the scores (0-1) are assigned to the nodes.
Then, the average is used as the precision.• In the second approach, the whole answer is evaluated and a score
is assigned to it.
• The results of both of the methods are similar.
Conclusion• A novel and efficient approach for keyword search in
graphs has been proposed.• All of the content nodes are reasonably close to each
other.• An approximation algorithm with bounded guarantee has
been proposed.• Only content nodes are explored during the search
process.• A Steiner tree which has as small as possible number of
middle nodes has been generated to reveal relations among content nodes.
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VLDB’11 Keyword Search in Graphs: Finding r-cliques
Thank you!
Any Questions?
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VLDB’11 Keyword Search in Graphs: Finding r-cliques