Many data sets are incomplete causing problems when performing spatial analysis or when mapping. Sometimes the data is unable to be collected, other times the data is collected but its quality is questionable or the method of collection is suspect, and still other times the data is collected but not shared. When data sets are incomplete, they can cause errors or biases in spatial analyses and result in uninformative or incomplete-looking maps. This workshop examines a variety of approaches that can be taken to help to mitigate these problems and evaluates their relative strengths and weaknesses.