On scalability of active learning for formulating query concepts

CVDB '04: Proceedings of the 1st international workshop on Computer vision meets databases(2004)

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摘要
Query-by-example and query-by-keyword both suffer from the problem of "aliasing," meaning that example-images and keywords potentially have variable interpretations or multiple semantics. For discerning which semantic is appropriate for a given query, we have established that combining active learning with kernel methods is a very effective approach. In this work, we first examine active-learning strategies, and then focus on addressing the challenges of two scalability issues: scalability in dataset size and in concept complexity. We present remedies, explain limitations, and discuss future directions that research might take.
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关键词
effective approach,concept complexity,active learning,multiple semantics,scalability issue,query concept,kernel method,future direction,variable interpretation,present remedy,dataset size,support vector machines,support vector machine,query by example,image retrieval
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