We extend previously proposed measures of complexity, emergence, and
self-organization to continuous distributions using differential entropy. This
allows us to calculate the complexity of phenomena for which distributions are
known. We find that a broad range of common parameters found in Gaussian and
scale-free distributions present high complexity values. We also explore the
relationship between our measure of complexity and information adaptation.Comment: 21 pages, 5 Tables, 4 Figure