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HFFN: A hybrid feature fusion network for representing source code

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008  260205e20251208esp|||p |0|||b|eng d
040  ‎$a‎MAP‎$b‎spa‎$d‎MAP
084  ‎$a‎936
100  ‎$0‎MAPA20260002170‎$a‎D, Shruthi
24510‎$a‎HFFN: A hybrid feature fusion network for representing source code‎$c‎Shruthi D, Chethan H.K. and Agughasi Victor Ikechukwu
520  ‎$a‎This study aims to automate source code summarization by introducing a novel machine learning architecture that integrates multiple feature perspectives. Specifically, it combines lexical, syntactic, and semantic representations of code and employs a transformer-based decoder to generate natural language summaries, benchmarking performance against established baselines. Experiments were conducted on the CanonCode Corpus, a high-quality dataset of 8,542 validated C programs. Individual feature extractors-Convolutional Neural Networks (CNN) for lexical features, Tree-LSTM for syntactic features and Graph Neural Networks (GNN) for semantic features were evaluated and compared with the proposed Hybrid Feature Fusion Network (HFFN). The fused feature vector from HFFN was decoded using a transformer to generate summaries. Performance was measured using ROUGE, BLEU, CodeBLEU, BERTScore, and Exact Match metrics. The HFFN model consistently outperformed all baselines across standard natural language generation metrics, achieving a ROUGE-L score of 0.94 and a BERTScore of 0.93. An ablation study confirmed the complementary contributions of each feature type, with syntactic features providing the greatest individual impact. The improvement over the strongest baseline (CodeBERT) was statistically significant (p < 0.001). The proposed HFFN framework demonstrates the value of combining diverse code representations for summarization. It offers a robust and interpretable architecture that advances multiview representation learning in software engineering and provides a foundation for future research in automated documentation
650 4‎$0‎MAPA20080611200‎$a‎Inteligencia artificial
650 4‎$0‎MAPA20080549084‎$a‎Software
650 4‎$0‎MAPA20080624842‎$a‎Redes neuronales artificiales
650 4‎$0‎MAPA20080617479‎$a‎Lenguajes de programación
7001 ‎$0‎MAPA20260002187‎$a‎H.K. Chethan
7001 ‎$0‎MAPA20260002194‎$a‎Ikechukwu, Agughasi Victor
7102 ‎$0‎MAPA20260002095‎$a‎IBERAMIA, Sociedad Iberoamericana de Inteligencia Artificial
7730 ‎$w‎MAP20200034445‎$g‎08/12/2025 Volume 28 Number 76 - December 2025 , p. 55 - 77‎$x‎1988-3064‎$t‎Revista Iberoamericana de Inteligencia Artificial‎$d‎ : IBERAMIA, Sociedad Iberoamericana de Inteligencia Artificial , 2018-
856  ‎$u‎https://journal.iberamia.org/index.php/intartif/article/view/2467