Topic Modeling on User Stories using Word Mover's Distance
July 10, 2020 ยท Declared Dead ยท ๐ International Workshop on Artificial Intelligence for Requirements Engineering
"No code URL or promise found in abstract"
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Authors
Kim Julian Gรผlle, Nicholas Ford, Patrick Ebel, Florian Brokhausen, Andreas Vogelsang
arXiv ID
2007.05302
Category
cs.CL: Computation & Language
Cross-listed
cs.IR
Citations
19
Venue
International Workshop on Artificial Intelligence for Requirements Engineering
Last Checked
4 months ago
Abstract
Requirements elicitation has recently been complemented with crowd-based techniques, which continuously involve large, heterogeneous groups of users who express their feedback through a variety of media. Crowd-based elicitation has great potential for engaging with (potential) users early on but also results in large sets of raw and unstructured feedback. Consolidating and analyzing this feedback is a key challenge for turning it into sensible user requirements. In this paper, we focus on topic modeling as a means to identify topics within a large set of crowd-generated user stories and compare three approaches: (1) a traditional approach based on Latent Dirichlet Allocation, (2) a combination of word embeddings and principal component analysis, and (3) a combination of word embeddings and Word Mover's Distance. We evaluate the approaches on a publicly available set of 2,966 user stories written and categorized by crowd workers. We found that a combination of word embeddings and Word Mover's Distance is most promising. Depending on the word embeddings we use in our approaches, we manage to cluster the user stories in two ways: one that is closer to the original categorization and another that allows new insights into the dataset, e.g. to find potentially new categories. Unfortunately, no measure exists to rate the quality of our results objectively. Still, our findings provide a basis for future work towards analyzing crowd-sourced user stories.
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