How Do You Feel, Developer? An Explanatory Theory of the Impact of Affects on Programming Performance
May 27, 2015 Β· Declared Dead Β· π PeerJ Computer Science
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Authors
Daniel Graziotin, Xiaofeng Wang, Pekka Abrahamsson
arXiv ID
1505.07240
Category
cs.SE: Software Engineering
Cross-listed
cs.CY,
cs.HC
Citations
58
Venue
PeerJ Computer Science
Last Checked
3 months ago
Abstract
Affects---emotions and moods---have an impact on cognitive activities and the working performance of individuals. Development tasks are undertaken through cognitive processes, yet software engineering research lacks theory on affects and their impact on software development activities. In this paper, we report on an interpretive study aimed at broadening our understanding of the psychology of programming in terms of the experience of affects while programming, and the impact of affects on programming performance. We conducted a qualitative interpretive study based on: face-to-face open-ended interviews, in-field observations, and e-mail exchanges. This enabled us to construct a novel explanatory theory of the impact of affects on development performance. The theory is explicated using an established taxonomy framework. The proposed theory builds upon the concepts of events, affects, attractors, focus, goals, and performance. Theoretical and practical implications are given.
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