ScholarGate
Assistent
Regression modelSpatial econometrics

Spatial Regression of Crime

Spatial regression models explain crime rates across areal units — neighborhoods, census tracts, counties — while explicitly accounting for the fact that nearby places tend to have similar crime levels. Ordinary regression assumes each unit's residual is independent, an assumption crime data routinely violate, biasing standard errors and sometimes the coefficients themselves. Spatial econometric models, formalized in Luc Anselin's 1988 framework, introduce a spatial weights matrix and add a spatial lag of the outcome or a spatially correlated error so that the dependence between neighboring areas is modeled rather than ignored.

Åbn i MethodMindSnartAnvend, sammenlign, få vejledning
Værktøjer og ressourcer
Hent slides
Lær og udforsk
VideoSnart

Læs hele metoden

Kun for medlemmer

Log ind med en gratis konto for at læse dette afsnit.

Log ind

Metodekort

Nabolaget af beslægtede metoder — vælg en knude for at udforske.

Kilder

  1. Anselin, L. (1988). Spatial Econometrics: Methods and Models. Kluwer Academic Publishers. ISBN: 9789024737352
  2. Anselin, L., Cohen, J., Cook, D., Gorr, W., & Tita, G. (2000). Spatial analyses of crime. Criminal Justice 2000, 4, 213–262. link

Sådan citerer du denne side

ScholarGate. (2026, June 22). Spatial Regression Models for Crime Rates. ScholarGate. https://scholargate.app/da/criminology/spatial-regression-crime

Hvilken metode?

Stil denne metode ved siden af dens nærmeste slægtninge, og læs dem side om side — biblioteket lægger bøgerne på bordet; valget er dit.

Sammenlign side om side

Refereret af

ScholarGateSpatial Regression of Crime (Spatial Regression Models for Crime Rates). Hentet 2026-06-24 fra https://scholargate.app/da/criminology/spatial-regression-crime · Datasæt: https://doi.org/10.5281/zenodo.20539026