Budget Constrained Interactive Search for Multiple Targets
Interactive graph search leverages human intelligence to categorize target labels in a hierarchy, which are useful for image classification, product categorization, and database search. However, many existing studies of interactive graph search aim at identifying a single target optimally, and suffe...
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Zusammenfassung: | Interactive graph search leverages human intelligence to categorize target
labels in a hierarchy, which are useful for image classification, product
categorization, and database search. However, many existing studies of
interactive graph search aim at identifying a single target optimally, and
suffer from the limitations of asking too many questions and not being able to
handle multiple targets. To address these two limitations, in this paper, we
study a new problem of budget constrained interactive graph search for multiple
targets called kBM-IGS-problem. Specifically, given a set of multiple targets T
in a hierarchy, and two parameters k and b, the goal is to identify a k-sized
set of selections S such that the closeness between selections S and targets T
is as small as possible, by asking at most a budget of b questions. We
theoretically analyze the updating rules and design a penalty function to
capture the closeness between selections and targets. To tackle the
kBM-IGS-problem, we develop a novel framework to ask questions using the best
vertex with the largest expected gain, which makes a balanced trade-off between
target probability and benefit gain. Based on the kBM-IGS framework, we first
propose an efficient algorithm STBIS to handle the SingleTarget problem, which
is a special case of kBM-IGS. Then, we propose a dynamic programming based
method kBM-DP to tackle the MultipleTargets problem. To further improve
efficiency, we propose two heuristic but efficient algorithms kBM-Topk and
kBM-DP+. kBM-Topk develops a variant gain function and selects the top-k
vertices independently. kBM-DP+ uses an upper bound of gains and prunes
disqualified vertices to save computations. Experiments on large real-world
datasets with ground-truth targets verify both the effectiveness and efficiency
of our proposed algorithms. |
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DOI: | 10.48550/arxiv.2012.01945 |