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ASE 2020
Mon 21 - Fri 25 September 2020 Melbourne, Australia

Software design patterns are solutions to common software problems that are proven to work adequately in particular scenarios. Deciding which design pattern to use for a given software problem often requires practical knowledge acquired with experience in a similar domain and can be highly subjective and error-prone. Further, for novice programmers, an automated approach would be a tremendous help as they usually lack practical knowledge required for deciding which design pattern to use for a particular software problem. The majority of research in software design pattern prediction involves using software structure and features in determining which design pattern to implement. However, there are circumstances where software designers would prefer to know which design pattern to be used by looking at the design problem during or before the implementation phase. Existing design pattern prediction tools cannot be utilized in this scenario due to the absence of code and class structures. To address this issue, this paper proposes a new approach that analyses the context of the software problem from text and predicts a suitable design pattern for the given problem context using feature learning, neural embedding, and classification. To evaluate our approach, we make use of Stack Overflow posts, where developers often discuss design problems and consequences that they should consider, which are related to two main design pattern elements. We evaluate our approach on a case study from Stack Overflow with more than 66,000 questions that discuss problems and consequences related to 23 design patterns. The experimental evaluation shows that our approach can predict design patterns from the text with 82% overall accuracy. This indicates that our approach can successfully be used to support software designers in determining the most suitable design pattern for their software implementation.

Fri 25 Sep
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08:00 - 10:35: International Workshop on Software Engineering Automation: A Natural Language Perspective[Workshop] NLP-SEA at Kangaroo
Chair(s): Abdul RaufRISE Research Institutes of Sweden, Mehrdad SaadatmandRISE SICS, Sajid Anwer
08:00 - 08:15
Talk
Boosting Component-based Synthesis with API Usage KnowledgeWorkshop
[Workshop] NLP-SEA
Jiaxin LiuNational University of Defense Technology, Wei DongSchool of Computer, National University of Defense Technology, China, Binbin LiuNational University of Defense Technology
08:20 - 08:35
Talk
Collective Intelligence for Smarter Neural Program SynthesisWorkshop
[Workshop] NLP-SEA
Daiyan WangNational University of Defense Technology, Wei DongSchool of Computer, National University of Defense Technology, China, Yating ZhangNational University of Defense Technology
08:40 - 08:55
Talk
Predicting Software Design Patterns from Text using NeuralEmbeddingWorkshop
[Workshop] NLP-SEA
Laksri WijerathnaMonash University, Aldeida AletiMonash University
09:00 - 09:15
Talk
NLP-based Enhancement of Information Security in ITO Service Delivery – A Diffusion of Innovation Theory perspectiveWorkshop
[Workshop] NLP-SEA
Baber Majid BhattiUniversity of South Australia
09:20 - 09:35
Talk
AutoEPRS-20: Extracting Business Process Redesign Suggestions from Natural Language TextWorkshop
[Workshop] NLP-SEA
Amina MustansirPUCIT, University of the Punjab, Khurram ShahzadPUCIT, University of the Punjab, Muhammad Kamran MalikPUCIT, University of the Punjab
09:40 - 09:55
Talk
Emotion Detection in Roman Urdu Text using Machine LearningWorkshop
[Workshop] NLP-SEA
Adil MajeedNational University of Computer and Emerging Sciences, Islamabad, Pakistan, Hasan MujtabaNational University of Computer and Emerging Sciences, Islamabad, Pakistan, Mirza Omer BegNational University of Computer and Emerging Sciences, Islamabad, Pakistan
10:00 - 10:15
Talk
Mapping Textual Feedback to Process Model ElementsWorkshop
[Workshop] NLP-SEA
Sanam AhmedPunjab University College of Information Technology , University of the Punjab, Amina MustansirPUCIT, University of the Punjab
10:20 - 10:35
Talk
Roman Urdu Reviews Dataset for Aspect Based Opinion MiningWorkshop
[Workshop] NLP-SEA
Rabail ZahidNational University of Computer and Emerging Sciences, Islamabad, Pakistan, Muhammad Owais IdreesNational University of Computer and Emerging Sciences, Islamabad, Pakistan, Hasan MujtabaNational University of Computer and Emerging Sciences, Islamabad, Pakistan, Mirza Omer BegNational University of Computer and Emerging Sciences, Islamabad, Pakistan