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Extraction of Protein-Protein Interaction from Scientific Articles by Predicting Dominant Keywords

机译:通过预测优势关键词从科学论文中提取蛋白质与蛋白质的相互作用

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摘要

For the automatic extraction of protein-protein interaction information from scientific articles, a machine learning approach is useful. The classifier is generated from training data represented using several features to decide whether a protein pair in each sentence has an interaction. Such a specific keyword that is directly related to interaction as “bind” or “interact” plays an important role for training classifiers. We call it a dominant keyword that affects the capability of the classifier. Although it is important to identify the dominant keywords, whether a keyword is dominant depends on the context in which it occurs. Therefore, we propose a method for predicting whether a keyword is dominant for each instance. In this method, a keyword that derives imbalanced classification results is tentatively assumed to be a dominant keyword initially. Then the classifiers are separately trained from the instance with and without the assumed dominant keywords. The validity of the assumed dominant keyword is evaluated based on the classification results of the generated classifiers. The assumption is updated by the evaluation result. Repeating this process increases the prediction accuracy of the dominant keyword. Our experimental results using five corpora show the effectiveness of our proposed method with dominant keyword prediction.
机译:对于从科学文章中自动提取蛋白质相互作用的信息,机器学习方法很有用。分类器是从使用几种功能表示的训练数据中生成的,以确定每个句子中的蛋白质对是否具有相互作用。与交互直接相关的诸如“绑定”或“交互”这样的特定关键字对于训练分类器起着重要的作用。我们称其为影响分类器功能的主要关键字。尽管确定主导关键词很重要,但是关键词是否主导取决于关键词出现的上下文。因此,我们提出了一种预测关键字是否在每个实例中占主导地位的方法。在该方法中,暂时假定导出不平衡分类结果的关键字最初是主导关键字。然后,使用和不使用假定的主导关键字,分别从实例中训练分类器。根据生成的分类器的分类结果评估假定的主导关键词的有效性。通过评估结果更新假设。重复此过程可提高优势关键字的预测准确性。我们使用五个语料库的实验结果表明了我们提出的方法具有优势关键词预测的有效性。

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