In this paper, characteristics of a runaway project are revealed based on combination of risk factors
which appear in the project. Concretely, an association rule mining technique is applied with an actual
questionnaire data to induce rules that associate combination of risk factors with runaway status of
software projects. Furthermore, the induced rules are integrated and reduced based on a certain rule
obtained from experts’ perception to simplify the representation of characteristics of a runaway project.
Then, for confirming the effectiveness of this characterization, it is evaluated how many runaway
projects in distinct data set were identified by the reduced rules. The result of the experiment suggested
that the induced rules are effective to characterize runaway projects.