Nearest‐neighbor, BERT‐based, scalable clone detection: A practical approach for large‐scale industrial code bases
Gul Aftab Ahmed,
James Vincent Patten,
Yuanhua Han
et al.
Abstract:Hidden code clones negatively impact software maintenance, but manually detecting them in large codebases is impractical. Additionally, automated approaches find detection of syntactically‐divergent clones very challenging. While recent deep neural networks (for example BERT‐based artificial neural networks) seem more effective in detecting such clones, their pairwise comparison of every code pair in the target system(s) is inefficient and scales poorly on large codebases. We present SSCD, a BERT‐based clone d… Show more
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