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A Study of Variable-Role-based Feature Enrichment in Neural Models of Code

Authors :
Hussain, Aftab
Rabin, Md Rafiqul Islam
Xu, Bowen
Lo, David
Alipour, Mohammad Amin
Publication Year :
2023

Abstract

Although deep neural models substantially reduce the overhead of feature engineering, the features readily available in the inputs might significantly impact training cost and the performance of the models. In this paper, we explore the impact of an unsuperivsed feature enrichment approach based on variable roles on the performance of neural models of code. The notion of variable roles (as introduced in the works of Sajaniemi et al. [Refs. 1,2]) has been found to help students' abilities in programming. In this paper, we investigate if this notion would improve the performance of neural models of code. To the best of our knowledge, this is the first work to investigate how Sajaniemi et al.'s concept of variable roles can affect neural models of code. In particular, we enrich a source code dataset by adding the role of individual variables in the dataset programs, and thereby conduct a study on the impact of variable role enrichment in training the Code2Seq model. In addition, we shed light on some challenges and opportunities in feature enrichment for neural code intelligence models.<br />Comment: Accepted in the 1st International Workshop on Interpretability and Robustness in Neural Software Engineering (InteNSE'23), Co-located with ICSE

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.04942
Document Type :
Working Paper