Urban planning is a knowledge-intensive activity. It acquires useful knowledge by analysing jointly socio-economic data and topographic maps. When supported by computers, this preliminary information gathering triggers a knowledge discovery process, which often consists of exploratory data analysis tasks. Advances in geo-referencing have caused - among the other things - a growing demand for more powerful exploratory data analysis techniques. We resort to the field of spatial data mining and propose the task of mining spatial association patterns/rules, i.e. frequent associations between spatial objects, as a means for data exploration. Strong points of the proposed technique for this task are the power of logics as a knowledge representati...