A Text-Based Regression Approach to Predict Bug-Fix Time
2020; Springer Nature; Linguagem: Inglês
10.1007/978-3-030-36617-9_5
ISSN1860-9503
AutoresPasquale Ardimento, Nicola Boffoli, Costantino Mele,
Tópico(s)Advanced Malware Detection Techniques
ResumoPredictingArdimento, Pasquale bug-fixing time can help project managers to select the adequate resources in bug assignment activity. In this work, we tackle the problem of predicting the bug-fixing time by a multiple regression analysis using as predictor variablesBoffoli, Nicola the textual information extracted from the bug reports. Our model selects all and only the features useful for prediction, also using statistical procedures, such as the Principal Component Analysis (PCA). To validate our model, weMele, Costantino performed an empirical investigation using the bug reports of four well-known open source projects whose bugs are stored in Bugzilla installations, where Bugzilla is an online open-source Bug Tracking System (BTS). For each project, we built a regression model using the M5P model tree, Support Vector Machine (SVM) and Random Forests algorithms. Experimental results show the model is effective, in fact, they are slightly better than all the ones known in the literature. In the future, we will use and compare other different regression approaches to select the best one for a specific data set.
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