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On Kernel-Based Intensity Estimation of Spatial Point Patterns on Linear Networks

Acceso Cerrado
ID Minciencias: ART-0000002683-38
Ranking: ART-ART_A1

Abstract:

We propose an extension of Diggle's nonparametric edge-corrected kernel-based intensity estimator to the case of events coming from an inhomogenous point pattern on a linear network. We analyze its statistical properties, showing that it is an unbiased estimator of the first-order intensity; we also provide an expression for the variance, and comment on the appropriate bandwidth selection. Our estimator is compared with the current existing equal-split discontinuous kernel density estimator in terms of the mean integrated squared error (MISE). We then use our estimator on two real datasets. We first revisit street crimes in an area of Chicago, obtaining similar results to previously published ones based on a parametric intensity function. Then, we study network-based spatial events consisting of calls to the Police department reporting anti-social behavior in the city of Castellon (Spain).

Tópico:

Point processes and geometric inequalities

Citaciones:

Citations: 37
37

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Información de la Fuente:

SCImago Journal & Country Rank
FuenteJournal of Computational and Graphical Statistics
Cuartil año de publicaciónNo disponible
Volumen27
Issue2
Páginas302 - 311
pISSNNo disponible
ISSN1537-2715

Enlaces e Identificadores:

Scienti ID0000002683-38Minciencias IDART-0000002683-38Doi URLhttps://doi.org/10.1080/10618600.2017.1360782
Openalex URLhttps://openalex.org/W2743695096
Artículo de revista