This paper is a continuation of an earlier two-part essay on quadrat analysis. It extends the previous discussion by introducing bivariate models of spatial dispersion to analyze statistically the correlated spatial clustering of food stores and population in urban areas. The data used for empirical study are the spatial patterns of food stores and residential population in Ljubljana, Yugoslavia.
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