An ecological analysis of crime and antisocial behaviour in English Output Areas, 2011/12 Regression modelling of spatially hierarchical count data.

Slides:



Advertisements
Similar presentations
Place and Economic Activity: Key issues from the area effects debate Nick Buck ISER, University of Essex.
Advertisements

Multilevel modelling short course
Use of health surveys in resource allocation Matt Sutton Senior Research Fellow University of Glasgow Health Survey's User Group.
Chapter 3 Properties of Random Variables
Sources and effects of bias in investigating links between adverse health outcomes and environmental hazards Frank Dunstan University of Wales College.
7. Models for Count Data, Inflation Models. Models for Count Data.
Lecture 11 (Chapter 9).
Weighting Methodology for the Private Landlords Survey Robert Bucknall, ONS.
Is there neighborhood effect on individual health in Korea?
A model-based approach for estimating international emigration for local authorities Brian Foley, Office for National Statistics BSPS day meeting London.
A model for spatially varying crime rates in English districts: the effects of social capital, fragmentation, deprivation and urbanicity Peter Congdon,
Small Area Estimates of Fuel Poverty in Scotland Phil Clarke (ONS), Ganka Mueller (Scottish Government)
GIS and Spatial Statistics: Methods and Applications in Public Health
The impact of job loss on family dissolution Silvia Mendolia, Denise Doiron School of Economics, University of New South Wales Introduction Objectives.
Northern Ireland Neighbourhood Information Service - NINIS Fiona Johnston Neighbourhood Statistics NISRA.
Class 17: Tuesday, Nov. 9 Another example of interpreting multiple regression coefficients Steps in multiple regression analysis and example analysis Omitted.
Adding Census Geographical Detail into the British Crime Survey for Modelling Crime Charatdao Kongmuang Naresuan University, Thailand Graham Clarke and.
Ka-fu Wong © 2007 ECON1003: Analysis of Economic Data Lesson2-1 Lesson 2: Descriptive Statistics.
Regression Hal Varian 10 April What is regression? History Curve fitting v statistics Correlation and causation Statistical models Gauss-Markov.
Applied Geostatistics
Clustered or Multilevel Data
Multivariate Regression Model y =    x1 +  x2 +  x3 +… +  The OLS estimates b 0,b 1,b 2, b 3.. …. are sample statistics used to estimate 
Stat 112: Lecture 9 Notes Homework 3: Due next Thursday
Regression Model Building Setting: Possibly a large set of predictor variables (including interactions). Goal: Fit a parsimonious model that explains variation.
Generalized Linear Models
Analysis of Clustered and Longitudinal Data
Introduction to Multilevel Modeling Using SPSS
Regression and Correlation Methods Judy Zhong Ph.D.
A Primer on the Exponential Family of Distributions David Clark & Charles Thayer American Re-Insurance GLM Call Paper
Chapter 11 Simple Regression
Multilevel models for predicting personal victimisation in England and Wales Andromachi Tseloni Analysis of crime data ESRC Research Methods Festival 2010.
Integrated Policy Modelling: supporting strategy planning from local to regional Brian MacAulay West Midlands Regional Observatory.
Spatial Statistics Applied to point data.
1 Spatial Variation and Pricing in the UK Residential Mortgage Market 15 th June 2012 Allison Orr, Gwilym Pryce (University of Glasgow)
Sarah Botterman Marc Hooghe Department of Political Sciences, Katholieke Universiteit Leuven The Impact of Community Indicators on Voluntary Associations.
Introduction Multilevel Analysis
ALISON BOWLING THE GENERAL LINEAR MODEL. ALTERNATIVE EXPRESSION OF THE MODEL.
Inference from ecological models: air pollution and stroke using data from Sheffield, England. Ravi Maheswaran, Guangquan Li, Jane Law, Robert Haining,
1 Things That May Affect Estimates from the American Community Survey.
Urbanisation and spatial inequalities in health in Brazil and India
Living arrangements, health and well-being: A European Perspective UPTAP Meeting 21 st March 2007 Harriet Young and Emily Grundy London School of Hygiene.
Multilevel Data in Outcomes Research Types of multilevel data common in outcomes research Random versus fixed effects Statistical Model Choices “Shrinkage.
Living near to burglars: estimating the small area level risk of burglary in Cambridgeshire Robert Haining Department of Geography University of Cambridge.
Analysis Overheads1 Analyzing Heterogeneous Distributions: Multiple Regression Analysis Analog to the ANOVA is restricted to a single categorical between.
Fall Statistical Models For Crash Data Modeling Process Determine Modeling Objectives Definition (Intersections, Pedestrians, etc.) Data availability.
Living arrangements, health and well-being: A European Perspective UPTAP-ONS Meeting Southampton University 19 th December 2007 Harriet Young and Emily.
Estimating and Testing Hypotheses about Means James G. Anderson, Ph.D. Purdue University.
IE 300, Fall 2012 Richard Sowers IESE. 8/30/2012 Goals: Rules of Probability Counting Equally likely Some examples.
Glenn Meyers ISO Innovative Analytics 2007 CAS Annual Meeting Estimating Loss Cost at the Address Level.
Interviewer Effects on Paradata Predictors of Nonresponse Rachael Walsh, US Census Bureau James Dahlhamer, NCHS European Survey Research Association, 2015.
Mismatches and matches in address information from the Census and the BSO: A longitudinal perspective Ian Shuttleworth and Brian Foley, Queen’s.
Analysis of the characteristics of internet respondents to the 2011 Census to inform 2021 Census questionnaire design Orlaith Fraser & Cal Ghee.
Dealing with location in the valuation of office rents in London Multilevel and semi-parametric modelling Aniel Anand, 1 st July 2015.
NEW AND OLD MEASURES OF THE FEAR OF CRIME A MULTILEVEL ASSESSMENT OF MEASURES OF INTENSITY AND FREQUENCY Ian Brunton-Smith: University of Surrey.
INTRODUCTION Despite recent advances in spatial analysis in transport, such as the accounting for spatial correlation in accident analysis, important research.
Instructor: R. Makoto 1richard makoto UZ Econ313 Lecture notes.
Multilevel modelling: general ideas and uses
Chapter 4 Basic Estimation Techniques
CHAPTER 12 MODELING COUNT DATA: THE POISSON AND NEGATIVE BINOMIAL REGRESSION MODELS Damodar Gujarati Econometrics by Example, second edition.
Robust Estimation Techniques for Trip Generation in Tennessee
Generalized Linear Models
Eastern Michigan University
Generalized Linear Models
Introduction to logistic regression a.k.a. Varbrul
Basic Estimation Techniques
Chapter 2: Steps of Econometric Analysis
Financial Econometrics Fin. 505
Chapter 2: Steps of Econometric Analysis
Introductory Statistics
Presentation transcript:

An ecological analysis of crime and antisocial behaviour in English Output Areas, 2011/12 Regression modelling of spatially hierarchical count data

Overview 1.Background 2.Data 3.Count data models 4.Extension to multilevel models 5.Extension to spatial models 6.Results and conclusions

Purpose of research Ecological factors affecting crime incidence: Demographic Physical Environment Opportunity Cost Social Economic

Purpose of research Unit of analysis: Output areas Modern techniques: - Count data models - Hierarchical data models - Spatial models Contextualise raw statistics often quoted Coverage: full population Interrogate ‘newly’ available data Illustrate the use of open data

Context Increasing divergence between police recorded crime and the Crime Survey of England and Wales →Crime statistics de-designation – January 2014 →House of Commons PASC report – April 2014 →HMIC report – November 2014 August 2011 riots

Crime Data Source: data.police.uk Period: 2011/12 Given And the coefficient of variation is given by An appropriate sample size is therefore determined based on Cochran’s formula

Covariate data 2011 Census variables e.g. young adult population, sex ratios, race, divorce rates, household structure, qualifications, method of travel to work, employment, population density ONS Neighbourhood Statistics variables e.g. benefit claimants, small area income estimates DCLG variables indices of deprivation and land use Summary classifications Output Area Classifications and Rural Urban Classifications

Count data models – Poisson regression Poisson probability density function (PDF): Model form: Rate parameterisation: Variance = mean = μ Goodness of fit tests:

Violation of equidispersion Causes of apparent overdispersion: -Omitted explanatory variables -Outliers -Omitted interaction terms -Omitted variable transformations -Mis-specified link function Tests of equidispersion: -Pearson/Deviance dispersion statistics ≠ 1 -Boundary likelihood ratio test: -Score test: H 0 :α=0; H 1 :α≠0

Count data models – Negative binomial model (NB2) Origin from binomial PDF Wide range of formulations e.g. NB-C, NB1, NB2, NB-P, geometric negative binomial etc Traditional formulation is the NB2 model Derivation of NB2 model as a GLM: -Poisson PDF with heterogeneity “gamma” -Derive the NB-C model -Convert to log-linked form Variance: μ + μ 2 /v  μ + αμ 2

Hierarchical count data models property crime rates per 1000 fixed assets by police force area total crime rate per usual resident by police force for Output Area populations in the sample

Multilevel NB2 model The level 1 variance is

Controlling for unobserved spatial dependencies Moran’s I is the linear association between a value and the weighted average of its neighbours

Final model Pearson dispersion statistic < 1.148

Results Variance: Between police force variability is significant:

Results Parameter Estimate Standard Error Exponentiated Parameter Estimate Fixed Part (truncated) fixed intercept perc_age16_29_meancentred sex_ratio_perc_meancentred divorced_percent_meancentred perc_leaders_meancentred spatial lag Random Part random intercept ancillary parameter

Conclusions and policy implications There are significant differences in crime rates across police force areas Urbanisation has the strongest influence on the relative risk of crime in output areas The relative affluence rather than absolute affluence of an area has an impact on crime Racial composition and immigrant populations have no significant impact on crimes in England

Questions? Contact details Chuka Ilochi Abbey 2, Floor 5 BIS 1 Victoria Street London SW1H 0ET Tel: