Combining Deep Learning with Information Retrieval to Localize Buggy Files for Bug Reports (N)
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Anh Tuan Nguyen | Hoan Anh Nguyen | Tien N. Nguyen | An Ngoc Lam | T. Nguyen | A. Nguyen | H. Nguyen | A. Lam
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