SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks

Spatial statistics is an important field of data science with many applications in very different areas of study such as epidemiology, criminology, seismology, astronomy and econometrics, among others. In particular, spatial statistics has frequently been used to analyze traffic accidents dataset...

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Main Author: Álvaro Briz-Redón
Format: Article
Language:English
Published: Pensoft Publishers 2019-02-01
Series:Research Ideas and Outcomes
Subjects:
Online Access:https://riojournal.com/article/33521/
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spelling doaj-112093e517a1475b9ebbd56aa47737412020-11-25T01:30:44ZengPensoft PublishersResearch Ideas and Outcomes2367-71632019-02-01511710.3897/rio.5.e3352133521SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networksÁlvaro Briz-Redón0Departament d’Estadística i Investigació Operativa, Universitat de València Spatial statistics is an important field of data science with many applications in very different areas of study such as epidemiology, criminology, seismology, astronomy and econometrics, among others. In particular, spatial statistics has frequently been used to analyze traffic accidents datasets with explanatory and preventive objectives. Traditionally, these studies have employed spatial statistics techniques at some level of areal aggregation, usually related to administrative units. However, last decade has brought an increasing number of works on the spatial incidence and distribution of traffic accidents at the road level by means of the spatial structure known as a linear network. This change seems positive because it could provide deeper and more accurate investigations than previous studies that were based on areal spatial units. The interest in working at the road level renders some technical difficulties due to the high complexity of these structures, specially in terms of manipulation and rectification. The R Shiny app SpNetPrep, which is available online and via an R package named the same way, has the goal of providing certain functionalities that could be useful for a user which is interested in performing an spatial analysis over a road network structure. https://riojournal.com/article/33521/R packagespatial statisticslinear networks
collection DOAJ
language English
format Article
sources DOAJ
author Álvaro Briz-Redón
spellingShingle Álvaro Briz-Redón
SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
Research Ideas and Outcomes
R package
spatial statistics
linear networks
author_facet Álvaro Briz-Redón
author_sort Álvaro Briz-Redón
title SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
title_short SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
title_full SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
title_fullStr SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
title_full_unstemmed SpNetPrep: An R package using Shiny to facilitate spatial statistics on road networks
title_sort spnetprep: an r package using shiny to facilitate spatial statistics on road networks
publisher Pensoft Publishers
series Research Ideas and Outcomes
issn 2367-7163
publishDate 2019-02-01
description Spatial statistics is an important field of data science with many applications in very different areas of study such as epidemiology, criminology, seismology, astronomy and econometrics, among others. In particular, spatial statistics has frequently been used to analyze traffic accidents datasets with explanatory and preventive objectives. Traditionally, these studies have employed spatial statistics techniques at some level of areal aggregation, usually related to administrative units. However, last decade has brought an increasing number of works on the spatial incidence and distribution of traffic accidents at the road level by means of the spatial structure known as a linear network. This change seems positive because it could provide deeper and more accurate investigations than previous studies that were based on areal spatial units. The interest in working at the road level renders some technical difficulties due to the high complexity of these structures, specially in terms of manipulation and rectification. The R Shiny app SpNetPrep, which is available online and via an R package named the same way, has the goal of providing certain functionalities that could be useful for a user which is interested in performing an spatial analysis over a road network structure.
topic R package
spatial statistics
linear networks
url https://riojournal.com/article/33521/
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