Zhu, 2019 - Google Patents
Improving Software Defect Assignment Accuracy With the LSTM and Rule Engine ModelZhu, 2019
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- 2781683923115307037
- Author
- Zhu R
- Publication year
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After a software defect is reported with a title and a text description, a competent developer needs to be assigned to fix it. The accuracy of this assignment has big impact on the quality of the resulting software, and the speed of the debugging process. Traditionally this software …
- 238000000034 method 0 abstract description 62
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