Published July 26, 2021 | Version v1
Journal article Open

Recommender systems in model-driven engineering

  • 1. Modelling and Software Engineering Research Group, Universidad Autónoma de Madrid, Madrid, Spain
  • 2. Information Retrieval Group, Universidad Autónoma de Madrid, Madrid, Spain

Description

Recommender systems are information filtering systems used in many online applications like music and video broadcasting and e-commerce platforms. They are also increasingly being applied to facilitate software engineering activities. Following this trend, we are witnessing a growing research interest on recommendation approaches that assist with modelling tasks and modelbased development processes. In this paper, we report on a systematic mapping review (based on the analysis of 66 papers) that classifies the existing research work on recommender systems for model-driven engineering (MDE). This study aims to serve as a guide for tool builders and researchers in understanding the MDE tasks that might be subject to recommendations, the applicable recommendation techniques and evaluation methods, and the open challenges and opportunities in this field of research

Files

Almonte2021_Article_RecommenderSystemsInModel-driv.pdf

Files (4.6 MB)

Additional details

Funding

Lowcomote – Training the Next Generation of Experts in Scalable Low-Code Engineering Platforms 813884
European Commission