Publication | Closed Access
Diversified ranking on large graphs
62
Citations
40
References
2011
Year
Unknown Venue
Ranking AlgorithmEngineeringLarge GraphsLearning To RankNetwork AnalysisText MiningInformation RetrievalData ScienceData MiningCombinatorial OptimizationKnowledge DiscoverySocial RankingComputer ScienceQuery OptimizationRanking ListNetwork ScienceGraph TheoryTop-k Ranking ListBusinessGraph AnalysisSimilarity SearchGoodness Measure
Diversified ranking on graphs is a fundamental mining task and has a variety of high-impact applications. There are two important open questions here. The first challenge is the measure - how to quantify the goodness of a given top-k ranking list that captures both the relevance and the diversity? The second challenge lies in the algorithmic aspect - how to find an optimal, or near-optimal, top-k ranking list that maximizes the measure we defined in a scalable way? In this paper, we address these challenges from an optimization point of view. Firstly, we propose a goodness measure for a given top-k ranking list. The proposed goodness measure intuitively captures both (a) the relevance between each individual node in the ranking list and the query; and (b) the diversity among different nodes in the ranking list. Moreover, we propose a scalable algorithm (linear wrt the size of the graph) that generates a provably near-optimal solution. The experimental evaluations on real graphs demonstrate its effectiveness and efficiency.
| Year | Citations | |
|---|---|---|
Page 1
Page 1