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.
Pročitajte celu metodu
Prijavite se besplatnim nalogom da biste pročitali ovaj odeljak.
Mapa metoda
Okruženje srodnih metoda — izaberite čvor da biste istraživali.
Izvori
- Anselin, L. (1988). Spatial Econometrics: Methods and Models. Kluwer Academic Publishers. ISBN: 9789024737352
- Anselin, L., Cohen, J., Cook, D., Gorr, W., & Tita, G. (2000). Spatial analyses of crime. Criminal Justice 2000, 4, 213–262. link ↗
Kako citirati ovu stranicu
ScholarGate. (2026, June 22). Spatial Regression Models for Crime Rates. ScholarGate. https://scholargate.app/sr/criminology/spatial-regression-crime
Koja metoda?
Postavite ovu metodu pored njoj najbližih srodnika i čitajte ih uporedo — biblioteka polaže knjige na sto; izbor je na vama.
- Concentrated Disadvantage IndexCriminology↔ uporedi
- Geographically Weighted Regression (GWR)Prostorna analiza↔ uporedi
- Social Disorganization AnalysisCriminology↔ uporedi
- Model prostornog kašnjenja (SAR / Spatial Autoregressive)Prostorna analiza↔ uporedi
Citirana u
Uočili ste grešku na ovoj stranici? Prijavite je ili predložite ispravku →