Authors
Amritanshu Agrawal, Wei Fu, Tim Menzies
Publication date
2018/1/1
Journal
Information and Software Technology
Volume
98
Issue
June
Pages
74-88
Description
Context
Topic modeling finds human-readable structures in unstructured textual data. A widely used topic modeling technique is Latent Dirichlet allocation. When running on different datasets, LDA suffers from “order effects”, i.e., different topics are generated if the order of training data is shuffled. Such order effects introduce a systematic error for any study. This error can relate to misleading results; specifically, inaccurate topic descriptions and a reduction in the efficacy of text mining classification results.
Objective
To provide a method in which distributions generated by LDA are more stable and can be used for further analysis.
Method
We use LDADE, a search-based software engineering tool which uses Differential Evolution (DE) to tune the LDA’s parameters. LDADE is evaluated on data from a programmer information exchange site (Stackoverflow), title and abstract text of thousands of Software Engineering (SE …
Total citations
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