Word association is an important part of human language. Many techniques for capturing semantic relations between words exist, but their ability to model word associations is rarely tested in a real application.
In this paper, we evaluate three models aimed at different types of word associations: a word-embedding model for synonymy, a point-wise mutual information model for word collocations, and a dependency model for common properties of words. The quality of the proposed models is tested on English and Czech by humans in an online version of the word-association game "Codenames".