Predicting Developers' IDE Commands with Machine Learning
October 10, 2020 Β· Declared Dead Β· π IEEE Working Conference on Mining Software Repositories
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Authors
Tyson Bulmer, Lloyd Montgomery, Daniela Damian
arXiv ID
2010.05036
Category
cs.SE: Software Engineering
Citations
6
Venue
IEEE Working Conference on Mining Software Repositories
Last Checked
4 months ago
Abstract
When a developer is writing code they are usually focused and in a state-of-mind which some refer to as flow. Breaking out of this flow can cause the developer to lose their train of thought and have to start their thought process from the beginning. This loss of thought can be caused by interruptions and sometimes slow IDE interactions. Predictive functionality has been harnessed in user applications to speed up load times, such as in Google Chrome's browser which has a feature called "Predicting Network Actions". This will pre-load web-pages that the user is most likely to click through. This mitigates the interruption that load times can introduce. In this paper we seek to make the first step towards predicting user commands in the IDE. Using the MSR 2018 Challenge Data of over 3000 developer session and over 10 million recorded events, we analyze and cleanse the data to be parsed into event series, which can then be used to train a variety of machine learning models, including a neural network, to predict user induced commands. Our highest performing model is able to obtain a 5 cross-fold validation prediction accuracy of 64%.
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