Abstract
Software development and, in particular, software maintenance are time consuming and require detailed knowledge of the structure and the past development activities of a software system. Limited resources and time constraints make the situation even more difficult. Therefore, a significant amount of research effort has been dedicated to learning software prediction models that allow project members to allocate and spend the limited resources efficiently on the (most) critical parts of their software system. Prominent examples are bug prediction models and change prediction models: Bug prediction models identify the bug-prone modules of a software system that should be tested with care; change prediction models identify modules that change frequently and in combination with other modules, i.e., they are change coupled. By combining statistical methods, data mining approaches, and machine learning techniques software prediction models provide a structured and analytical basis to make decisions.Researchers proposed a wide range of approaches to build effective prediction models that take into account multiple aspects of the software development process. They achieved especially good prediction performance, guiding developers towards those parts of their system where a large share of bugs can be expected. For that, they rely on change data provided by version control systems (VCS). However, due to the fact that current VCS track code changes only on file-level and textual basis most of those approaches suffer from coarse-grained and rather generic change information. More fine-grained change information, for instance, at the level of source code statements, and the type of changes, e.g., whether a method was renamed or a condition expression was changed, are often not taken into account. Therefore, investigating the development process and the evolution of software at a fine-grained change level has recently experienced an increasing attention in research.The key contribution of this thesis is to improve software prediction models by using fine-grained source code changes. Those changes are based on the abstract syntax tree structure of source code and allow us to track code changes at the fine-grained level of individual statements. We show with a series of empirical studies using the change history of open-source projects how prediction models can benefit in terms of prediction performance and prediction granularity from the more detailed change information.First, we compare fine-grained source code changes and code churn, i.e., lines modified, for bug prediction. The results with data from the Eclipse platform show that fine grained-source code changes significantly outperform code churn when classifying source files into bug- and not bug-prone, as well as when predicting the number of bugs in source files. Moreover, these results give more insights about the relation of individual types of code changes, e.g., method declaration changes and bugs. For instance, in our dataset method declaration changes exhibit a stronger correlation with the number of bugs than class declaration changes.Second, we leverage fine-grained source code changes to predict bugs at method-level. This is beneficial as files can grow arbitrarily large. Hence, if bugs are predicted at the level of files a developer needs to manually inspect all methods of a file one by one until a particular bug is located.Third, we build models using source code properties, e.g., complexity, to predict whether a source file will be affected by a certain type of code change. Predicting the type of changes is of practical interest, for instance, in the context of software testing as different change types require different levels of testing: While for small statement changes local unit-tests are mostly sufficient, API changes, e.g., method declaration changes, might require system-wide integration-tests which are more expensive. Hence, knowing (in advance) which types of changes will most likely occur in a source file can help to better plan and develop tests, and, in case of limited resources, prioritize among different types of testing.Finally, to assist developers in bug triaging we compute prediction models based on the attributes of a bug report that can be used to estimate whether a bug will be fixed fast or whether it will take more time for resolution.The results and findings of this thesis give evidence that fine-grained source code changes can improve software prediction models to provide more accurate results.
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