A Systematic Literature Review on the Use of Deep Learning in Software Engineering Research

Author:

Watson Cody1,Cooper Nathan2,Palacio David Nader2,Moran Kevin3ORCID,Poshyvanyk Denys2

Affiliation:

1. Washington & Lee University, Lexington, Virginia

2. William & Mary, Williamsburg, Virginia

3. George Mason University, Fairfax, Virginia

Abstract

An increasingly popular set of techniques adopted by software engineering (SE) researchers to automate development tasks are those rooted in the concept of Deep Learning (DL). The popularity of such techniques largely stems from their automated feature engineering capabilities, which aid in modeling software artifacts. However, due to the rapid pace at which DL techniques have been adopted, it is difficult to distill the current successes, failures, and opportunities of the current research landscape. In an effort to bring clarity to this cross-cutting area of work, from its modern inception to the present, this article presents a systematic literature review of research at the intersection of SE & DL. The review canvasses work appearing in the most prominent SE and DL conferences and journals and spans 128 papers across 23 unique SE tasks. We center our analysis around the components of learning , a set of principles that governs the application of machine learning techniques (ML) to a given problem domain, discussing several aspects of the surveyed work at a granular level. The end result of our analysis is a research roadmap that both delineates the foundations of DL techniques applied to SE research and highlights likely areas of fertile exploration for the future.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Software

Reference196 articles.

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2. Pornsiri Muenchaisri. Literature Reviews on Applying Artificial Intelligence/Machine Learning to Software Engineering Research Problems: Preliminary. SEED@APSEC.

3. Artifact Review and Badging – Version 2.0. Artifact Review and Badging – Version 2.0 Association for Computing Machinery 4 Nov. 2021 https://www.acm.org/publications/policies/artifact-review-badging.

4. Mierswa Ingo and Ralf Klinkenberg. “Best Data Science & Machine Learning Platform.” RapidMiner RapidMiner Inc. 9 Nov. 2021 https://rapidminer.com/.

5. Yaser S. Abu-Mostafa, Malik Magdon-Ismail, and Hsuan-Tien Lin. 2012. Learning from Data: A Short Course. AMLbook.com.

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