Curtin University Homepage
  • Library
  • Help
    • Admin

    espace - Curtin’s institutional repository

    JavaScript is disabled for your browser. Some features of this site may not work without it.
    View Item 
    • espace Home
    • espace
    • Curtin Research Publications
    • View Item
    • espace Home
    • espace
    • Curtin Research Publications
    • View Item

    Robust interaction detector: A case of road life expectancy analysis

    Access Status
    In process
    Authors
    Zhang, Zehua
    Song, Yongze
    Karunaratne, L.
    Wu, Peng
    Date
    2024
    Type
    Journal Article
    
    Metadata
    Show full item record
    Citation
    Zhang, Z. and Song, Y. and Karunaratne, L. and Wu, P. 2024. Robust interaction detector: A case of road life expectancy analysis. Spatial Statistics. 59.
    Source Title
    Spatial Statistics
    DOI
    10.1016/j.spasta.2024.100814
    ISSN
    2211-6753
    Faculty
    Faculty of Humanities
    Faculty of Humanities
    Faculty of Humanities
    School
    School of Design and the Built Environment
    School of Design and the Built Environment
    School of Design and the Built Environment
    URI
    http://hdl.handle.net/20.500.11937/98270
    Collection
    • Curtin Research Publications
    Abstract

    Spatial stratified heterogeneity, revealing the disparity mechanisms across spatial strata, can be effectively quantified using the geographical detector (GD). GD requires reasonable spatial discretization strategies to investigate the spatial association between the target variable and numerical independent variables. In previous studies, the Robust Geographical Detector (RGD) optimized spatial strata for examining the power of determinants (PD) of individual variables, which demonstrate more robust spatial discretization than other models. However, the GD's interaction detector that explores PD of the interaction of two variables still needs to be enhanced by the robust spatial discretization. This study develops a Robust Interaction Detector (RID), an improved interaction detector, using change detection algorithms for the robust spatial stratified heterogeneity analysis with multiple explanatory variables. RID is applied in a road life expectancy analysis in Western Australia. Results show that RID presents higher PD values than previous GD models, ensuring the growth of PD value with more spatial strata. The RID model indicates that the interactions between various transport variables and elevation are strongly associated with road life expectancy from the perspective of spatial patterns. The developed RID model provides significant potential for enhanced geospatial factor analysis across diverse fields.

    Related items

    Showing items related by title, author, creator and subject.

    • An optimal parameters-based geographical detector model enhances geographic characteristics of explanatory variables for spatial heterogeneity analysis: cases with different types of spatial data
      Song, Yongze ; Wang, J.; Ge, Y.; Xu, C. (2020)
      © 2020 Informa UK Limited, trading as Taylor & Francis Group. Spatial heterogeneity represents a general characteristic of the inequitable distributions of spatial issues. The spatial stratified heterogeneity analysis ...
    • Robust geographical detector
      Zhang, Zehua; Song, Yongze ; Wu, Peng (2022)
      Geographical detector (GD) is a method to measure spatial associations using a power of determinant (PD) value that compares the variance of data within spatial zones and in the whole study area. Recent studies have ...
    • Segment-based spatial analysis for assessing road infrastructure performance using monitoring observations and remote sensing data
      Song, Y.; Wright, G.; Wu, Peng; Thatcher, D.; McHugh, T.; Li, Q.; Li, S.; Wang, X. (2018)
      Road infrastructure is important to the well-being and economic health of all nations. The performance of road pavement infrastructure is sophisticated and affected by numerous factors and varies greatly across different ...
    Advanced search

    Browse

    Communities & CollectionsIssue DateAuthorTitleSubjectDocument TypeThis CollectionIssue DateAuthorTitleSubjectDocument Type

    My Account

    Admin

    Statistics

    Most Popular ItemsStatistics by CountryMost Popular Authors

    Follow Curtin

    • 
    • 
    • 
    • 
    • 

    CRICOS Provider Code: 00301JABN: 99 143 842 569TEQSA: PRV12158

    Copyright | Disclaimer | Privacy statement | Accessibility

    Curtin would like to pay respect to the Aboriginal and Torres Strait Islander members of our community by acknowledging the traditional owners of the land on which the Perth campus is located, the Whadjuk people of the Nyungar Nation; and on our Kalgoorlie campus, the Wongutha people of the North-Eastern Goldfields.