The analysis of clustering and correlation between points on a linear network, such as traffic accident locations on a street network, depends crucially on how we measure the distance between points. Standard practice is to measure distance by the length of the shortest path. However, this may be inappropriate and even fallacious in some applications. Alternative distance metrics include Euclidean, least-cost, and resistance distances. This paper develops a general framework for the second-order analysis of point patterns on a linear network, using a broad class of distance metrics on the network. We examine the model assumptions that are implicit in choosing a particular distance metric; define appropriate analogues of the K-function and pair correlation function; develop estimators of these characteristics; and study their statistical performance. The methods are tested on several datasets, including a demonstration that different conclusions can be reached using different choices of metric. (C) 2017 Elsevier B.V. All rights reserved.
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Wayne State Univ, Dept Math, Detroit, MI 48202 USA
Vietnam Acad Sci & Technol, Inst Math, Hanoi 10307, VietnamWayne State Univ, Dept Math, Detroit, MI 48202 USA
Hang, Nguyen T. V.
Mordukhovich, Boris S.
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Wayne State Univ, Dept Math, Detroit, MI 48202 USA
RUDN Univ, Moscow 117198, RussiaWayne State Univ, Dept Math, Detroit, MI 48202 USA
Mordukhovich, Boris S.
Sarabi, M. Ebrahim
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Miami Univ, Dept Math, Oxford, OH 45056 USAWayne State Univ, Dept Math, Detroit, MI 48202 USA