%0 Conference Proceedings %B 12th Working Conference on Mining Software Repositories (MSR 2015) %D 2015 %T Characterization and prediction of issue-related risks in software projects %A Morakot Choetkiertikul %A Dam, Hoa Khanh %A Truyen Tran %A Aditya Ghose %X Identifying risks relevant to a software project and planning measures to deal with them are critical to the success of the project. Current practices in risk assessment mostly rely on high-level, generic guidance or the subjective judgements of experts. In this paper, we propose a novel approach to risk assessment using historical data associated with a software project. Specifically, our approach identifies patterns of past events that caused project delays, and uses this knowledge to identify risks in the current state of the project. A set of risk factors characterizing “risky” software tasks (in the form of issues) were extracted from five open source projects: Apache, Duraspace, JBoss, Moodle, and Spring. In addition, we performed feature selection using a sparse logistic regression model to select risk factors with good discriminative power. Based on these risk factors, we built predictive models to predict if an issue will cause a project delay. Our predictive models are able to predict both the risk impact (i.e. the extend of the delay) and the likelihood of a risk occurring. The evaluation results demonstrate the effectiveness of our predictive models, achieving on average 48%–81% precision, 23%–90% recall, 29%–71% F-measure, and 70%–92% Area Under the ROC Curve. Our predictive models also have low error rates: 0.39–0.75 for Macroaveraged Mean Cost-Error and and 0.7–1.2 for Macro-averaged Mean Absolute Error %B 12th Working Conference on Mining Software Repositories (MSR 2015) %I IEEE %8 05/2015 %U http://www.uow.edu.au/~hoa/papers/msr-2015-preprint.pdf %> https://flosshub.org/sites/flosshub.org/files/msr-2015-preprint.pdf