Search Results for author: Latifa Guerrouj

Found 4 papers, 2 papers with code

Leveraging Deep Learning for Abstractive Code Summarization of Unofficial Documentation

no code implementations23 Oct 2023 AmirHossein Naghshzan, Latifa Guerrouj, Olga Baysal

We, therefore, have been motivated to leverage such a type of documentation along with deep learning techniques towards generating high-quality summaries for APIs discussed in informal documentation.

Code Summarization Text Summarization

Improving Code Example Recommendations on Informal Documentation Using BERT and Query-Aware LSH: A Comparative Study

1 code implementation4 May 2023 Sajjad Rahmani, AmirHossein Naghshzan, Latifa Guerrouj

Our research investigates the recommendation of code examples to aid software developers, a practice that saves developers significant time by providing ready-to-use code snippets.

Language Modelling Large Language Model

Leveraging Data Mining Algorithms to Recommend Source Code Changes

no code implementations29 Apr 2023 AmirHossein Naghshzan, Saeed Khalilazar, Pierre Poilane, Olga Baysal, Latifa Guerrouj, Foutse khomh

Objectives: This paper proposes an automatic method for recommending source code changes using four data mining algorithms.

Leveraging Unsupervised Learning to Summarize APIs Discussed in Stack Overflow

1 code implementation27 Nov 2021 AmirHossein Naghshzan, Latifa Guerrouj, Olga Baysal

Automated source code summarization is a task that generates summarized information about the purpose, usage, and--or implementation of methods and classes to support understanding of these code entities.

Code Summarization Source Code Summarization

Cannot find the paper you are looking for? You can Submit a new open access paper.