基于高精度规则的PPI提取和基于对的性能评价

Junkyu Lee, Seongsoon Kim, Sunwon Lee, Kyubum Lee, Jaewoo Kang
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引用次数: 7

摘要

目前几乎所有的PPI提取研究都集中在提高f分上,旨在平衡准确率和召回率的表现。然而,在许多涉及大型语料库的现实场景中,与高召回率的对应工具相比,极高精度的PPI提取工具可以带来更多好处。我们还认为,当前的“每个实例”的基础性能评估方法应该重新审视。为了解决这些问题,我们引入了一种新的基于规则的PPI提取方法,该方法配备了一套超高精度的提取规则。我们还提出了一个新的“每对”基础性能度量,它在实践中更加实用。所提出的PPI提取方法在aims基准语料上的每对提取精度为95-96%,每实例提取精度为94-97%。
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High precision rule based PPI extraction and per-pair basis performance evaluation
Virtually all current PPI extraction studies focus on improving F-score, aiming to balance the performance on both precision and recall. However, in many realistic scenarios involving large corpora, one can benefit more from an extremely high precision PPI extraction tool than a high-recall counterpart. We also argue that the current "per-instance" basis performance evaluation method should be revisited. In order to address these problems, we introduce a new rule-based PPI extraction method equipped with a set of ultra-high precision extraction rules. We also propose a new "per-pair" basis performance metric, which is more pragmatic in practice. The proposed PPI extraction method achieves 95-96% per-pair and 94-97% per-instance precisions on the AIMed benchmark corpus.
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