NLBSE’22 Tool Competition

Rafael Kallis, Oscar Chaparro, Andrea Di Sorbo, Sebastiano Panichella
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引用次数: 13

Abstract

We report on the organization and results of the first edition of the Tool Competition from the International Workshop on Natural Language-based Software Engineering (NLBSE’22). This year, five teams submitted multiple classification models to automatically classify issue reports as bugs, enhancements, or questions. Most of them are based on BERT (Bidirectional Encoder Representations from Transformers) and were fine-tuned and evaluated on a benchmark dataset of 800k issue reports. The goal of the competition was to improve the classification performance of a baseline model based on fastText. This report provides details of the competition, including its rules, the teams and contestant models, and the ranking of models based on their average classification performance across the issue types.
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NLBSE ' 22工具竞赛
我们报告了基于自然语言的软件工程国际研讨会(NLBSE ' 22)第一期工具竞赛的组织和结果。今年,五个团队提交了多个分类模型,以自动将问题报告分类为bug、增强或问题。它们中的大多数都基于BERT(来自变压器的双向编码器表示),并在包含800k个问题报告的基准数据集上进行了微调和评估。竞赛的目标是提高基于fastText的基线模型的分类性能。该报告提供了竞赛的详细信息,包括其规则、团队和参赛者模型,以及基于模型在问题类型中的平均分类性能的模型排名。
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