2023
DOI: 10.53106/160792642023072404015
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Deep Learning-Based Self-Admitted Technical Debt Detection Empirical Research

Abstract: <p>Self-Admitted Technical Debt (SATD) is a workaround for current gains and subsequent software quality in software comments. Some studies have been conducted using NLP-based techniques or CNN-based classifiers. However, there exists a class imbalance problem in different software projects since the software code comments with SATD features are significantly less than those without Non-SATD. Therefore, to design a classification model with the ability of dealing with this class imbalance problem is nece… Show more

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