Identifying and Classifying User Requirements in Online Feedback via Crowdsourcing

Publication date

2020

Authors

Vliet, Martijn van
Groen, Eduard C.
Dalpiaz, FabianoISNI 0000000419575525
Brinkkemper, S.ISNI 0000000374861981

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

[Context and motivation] App stores and social media channels such as Twitter enable users to share feedback regarding software. Due to its high volume, it is hard to effectively and systematically process such feedback to obtain a good understanding of users’ opinions about a software product. [Question/problem] Tools based on natural language processing and machine learning have been proposed as an inexpensive mechanism for classifying user feedback. Unfortunately, the accuracy of these tools is imperfect, which jeopardizes the reliability of the analysis results. We investigate whether assigning micro-tasks to crowd workers could be an alternative technique for identifying and classifying requirements in user feedback. [Principal ideas/results] We present a crowdsourcing method for filtering out irrelevant app store reviews and for identifying features and qualities. A validation study has shown positive results in terms of feasibility, accuracy, and cost. [Contribution] We provide evidence that crowd workers can be an inexpensive yet accurate resource for classifying user reviews. Our findings contribute to the debate on the roles of and synergies between humans and AI techniques.

Keywords

Crowd-based requirements engineering, Crowdsourcing, Online user reviews, Quality requirements, User feedback analysis, Taverne

Citation

Vliet, M V, Groen, E C, Dalpiaz, F & Brinkkemper, S 2020, Identifying and Classifying User Requirements in Online Feedback via Crowdsourcing. in Requirements Engineering: Foundation for Software Quality : 26th International Working Conference, REFSQ 2020, Pisa, Italy, March 24–27, 2020, Proceedings. Lecture Notes in Computer Science, vol. 12045, Programming and Software Engineering book, vol. 12045, Springer, pp. 143-159. https://doi.org/10.1007/978-3-030-44429-7_11