Comparing Programming Language Models for Design Pattern Recognition
Paper in proceeding, 2024

Design patterns (DPs) facilitate effective software architecture and design and must be maintained and enforced in existing complex software products, for example, automotive software. Implementing DPs in source code facilitates the development of high-quality software products with less effort. However, recognizing DPs in program code is challenging, and this makes it difficult to keep architectural evolution under control in large software products over time. As DPs are abstract solutions, the programs used to recognize them in source code have significant limitations. In this paper, we employ four programming language models based on Bidirectional Encoder Representations from Transformers (BERT) to study to which extent these models can recognize an exemplar DP, in this case, Singleton. We compare four language representation models - OpenAI CodeX, Facebook AI TransCoder, ACoRA/BERT, and CCFlex/bag-of-words, and compare the models' rankings to a simple base metric. We found a discrepancy between models in identifying Singletons and found that the models are inconsistently sensitive to name and semantic changes. Specifically, CodeX recognizes the existence of Singletons better than other models, while only ACoRA shows some signs of recognizing DP semantics.

design patterns recognition

Deep learning

NLP

Programming language models

Author

Sushant Kumar Pandey

Software Engineering 1

Miroslaw Staron

Chalmers, Computer Science and Engineering (Chalmers), Software Engineering (Chalmers)

Jennifer Horkoff

Software Engineering 1

M. Ochodek

Poznan University of Technology

Darko Durisic

Volvo

Proceedings - IEEE 21st International Conference on Software Architecture Companion, ICSA-C 2024

183-190
9798350366259 (ISBN)

21st IEEE International Conference on Software Architecture Companion, ICSA-C 2024
Hyderabad, India,

Subject Categories

Software Engineering

DOI

10.1109/ICSA-C63560.2024.00041

More information

Latest update

9/17/2024