Accounting for Dependence in a Flexible Multivariate Receptor Model
- 1 November 2002
- journal article
- Published by Taylor & Francis in Technometrics
- Vol. 44 (4) , 328-337
- https://doi.org/10.1198/004017002188618527
Abstract
Formulation and evaluation of environmental policy depends on receptor models that are used to assess the number and nature of pollution sources affecting the air quality for a region of interest. Different approaches have been developed for situations in which no information is available about the number and nature of these sources (e.g., exploratory factor analysis) and the composition of these sources is assumed known (e.g., regression and measurement error models). We propose a flexible approach for fitting the receptor model when only partial pollution source information is available. The use of latent variable modeling allows the direct incorporation of subject matter knowledge into the model, including known physical constraints and partial pollution source information obtained from laboratory measurements or past studies. Because air quality data often exhibit temporal and/or spatial dependence, we consider the importance of accounting for such correlation in estimating model parameters and making valid statistical inferences. We propose an approach for incorporating dependence structure directly into estimation and inference procedures via a new nested block bootstrap method that adjusts for bias in estimating moment matrices. A goodness-of-fit test that is valid in the presence of such dependence is proposed. The application of the approach is facilitated by a new multivariate extension of an existing block size determination algorithm. The proposed approaches are evaluated by simulation and illustrated with an analysis of hourly measurements of volatile organic compounds in the El Paso, Texas/Ciudad Juarez, Mexico area.Keywords
This publication has 16 references indexed in Scilit:
- Some thoughts on chemical mass balance modelsChemometrics and Intelligent Laboratory Systems, 1997
- On blocking rules for the bootstrap with dependent dataBiometrika, 1995
- Vehicle-Related Hydrocarbon Source Compositions from Ambient Data: The GRACE/SAFER MethodEnvironmental Science & Technology, 1994
- Asymptotic Chi-Square Tests for a Large Class of Factor Analysis ModelsThe Annals of Statistics, 1990
- The Asymptotic Normal Distribution of Estimators in Factor Analysis under General ConditionsThe Annals of Statistics, 1988
- Current factor analysis receptor models are ill-posedAtmospheric Environment (1967), 1987
- The Use of Subseries Values for Estimating the Variance of a General Statistic from a Stationary SequenceThe Annals of Statistics, 1986
- Resampling a coverage patternStochastic Processes and their Applications, 1985
- Bootstrap Tests and Confidence Regions for Functions of a Covariance MatrixThe Annals of Statistics, 1985
- A quantitative determination of sources in the Boston urban aerosolAtmospheric Environment (1967), 1980