Analysis and evaluation of the top-k most influential location selection query
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Authors
Chen, Jian
Huang, Jin
Wen, Zeyi
He, Zhen
Taylor, Kerry
Zhang, Rui
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Springer
Abstract
In this paper, we propose a newtype of queries to retrieve the top-kmost influential
locations from a candidate set C given sets of customers M and existing facilities F. The
influence models the popularity of a facility. Such queries have wide applications in decision
support systems. A naive solution sequentially scans (SS) all data sets, which is expensive,
and hence, we investigate two branch-and-bound algorithms for the query, namely Estimate
Expanding Pruning (EEP) and Bounding Influence Pruning (BIP). Both algorithms followthe
best first traverse. On determining the traversal order, while EEP leverages distance metrics
between nodes, BIP relies on half plane pruning which avoids the repetitive estimations in
EEP. As our experiments shown, BIP is much faster than SS which outperforms EEP, while
theworst-case complexity of EEP and BIP isworse than that of SS. To improve the efficiency,
we further propose aNearest Facility Circle Join (NFCJ) algorithm. NFCJ builds an influence
R-tree on the influence relationship between customers and existing facilities and joins the
candidate R-tree with the influence R-tree to obtain the results. We compare all algorithms and conclude that NFCJ is the best solution, which outperforms SS, EEP, and BIP by orders
of magnitude.
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Knowledge and Information Systems
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Restricted until
2037-12-31