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首页> 外文期刊>IEICE transactions on information and systems >TFIDF-FL: Localizing Faults Using Term Frequency-Inverse Document Frequency and Deep Learning
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TFIDF-FL: Localizing Faults Using Term Frequency-Inverse Document Frequency and Deep Learning

机译:TFIDF-FL:使用术语频率反文档频率和深度学习对故障进行定位

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Existing fault localization based on neural networks utilize the information of whether a statement is executed or not executed to identify suspicious statements potentially responsible for a failure. However, the information just shows the binary execution states of a statement, and cannot show how important a statement is in executions. Consequently, it may degrade fault localization effectiveness. To address this issue, this paper proposes TFIDF-FL by using term frequency-inverse document frequency to identify a high or low degree of the influence of a statement in an execution. Our empirical results on 8 real-world programs show that TFIDF-FL significantly improves fault localization effectiveness.
机译:基于神经网络的现有故障定位利用语句是已执行还是未执行的信息来识别可能导致故障的可疑语句。但是,该信息仅显示语句的二进制执行状态,而不能显示语句在执行中的重要性。因此,它可能会降低故障定位的有效性。为了解决这个问题,本文提出了TFIDF-FL,该方法通过使用术语频率-反文档频率来识别执行中语句影响的高低。我们在8个实际程序中的经验结果表明,TFIDF-FL显着提高了故障定位的有效性。

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