句法特征在蛋白质相互作用提取中的作用

Timur Fayruzov, M. D. Cock, C. Cornelis, Veronique Hoste
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引用次数: 7

摘要

大多数从生物医学文本中挖掘蛋白质相互作用的方法都使用词汇和句法特征。然而,这两种特征对采矿过程有效性的个别影响尚未得到深入研究。在本文中,我们对最近发表的最先进的支持向量机方法进行了这样的研究,该方法同时使用了词汇和句法特征。为此,我们将该方法简化为只使用初始语法特征子集的算法。接下来,我们通过在5个基准数据集上评估原始方法和简化方法以及执行5个额外的跨数据集实验来比较原始方法和简化方法。虽然原始方法利用了非常丰富的特征集,包括单词、词性和语法关系,但它并没有明显优于精简版本;事实上,前者甚至没有一直优于后者。
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The role of syntactic features in protein interaction extraction
Most approaches for protein interaction mining from biomedical texts use both lexical and syntactic features. However, the individual impact of these two kinds of features on the effectiveness of the mining process has not yet been thoroughly studied. In this paper, we perform such a study on a recently published state of the art support vector machine approach that uses both lexical and syntactic features. To this end, we strip this approach down to an algorithm that uses only a subset of the initial syntactic features. Next, we compare the original and the stripped-down method by evaluating them on 5 benchmark datasets as well as by performing 5 additional cross-dataset experiments. Although the original method exploits a very rich feature set including words, parts-of-speech and grammatical relations, it is not significantly better than the stripped-down version; in fact, the former does not even consistently outperform the latter.
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