Ecological Bias: Use of Maximum-Entropy Approximations |
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Authors: | Noel Cressie Sylvia Richardson Isabelle Jaussent |
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Affiliation: | Dept of Statistics, The Ohio State University, Columbus, USA; Dept of Epidemiology and Public Health, Imperial College School of Medicine, London, UK; INSERM, France |
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Abstract: | ![]() The focus of geographical studies in epidemiology has recently moved towards looking for effects of exposures based on data taken at local levels of aggregation (i.e. small areas). This paper investigates how regression coefficients measuring covariate effects at the point level are modified under aggregation. Changing the level of aggregation can lead to completely different conclusions about exposure–effect relationships, a phenomenon often referred to as ecological bias. With partial knowledge of the within‐area distribution of the exposure variable, the notion of maximum entropy can be used to approximate that part of the distribution that is unknown. From the approximation, an expression for the ecological bias is obtained; simulations and an example show that the maximum‐entropy approximation is often better than other commonly used approximations. |
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Keywords: | aggregation ecological regression exposure–effect relationships geographical epidemiology maximum entropy distribution point-level models |
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