Curates 341k SATD items from 1k Apache repos, analyzes effort differences by debt type, and shows BERT/TextCNN models predict repayment effort from text better than traditional ML baselines.
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A systematic literature review summarizing the shift in SATD detection from heuristic keyword methods to ML, DL, and Transformer models, along with performance trends and open challenges like dataset heterogeneity.
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Text Tells the Cost: Predicting and Analyzing Repayment Effort of Self-Admitted Technical Debt
Curates 341k SATD items from 1k Apache repos, analyzes effort differences by debt type, and shows BERT/TextCNN models predict repayment effort from text better than traditional ML baselines.
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Self-Admitted Technical Debt Detection Approaches: A Decade Systematic Review
A systematic literature review summarizing the shift in SATD detection from heuristic keyword methods to ML, DL, and Transformer models, along with performance trends and open challenges like dataset heterogeneity.