Selection of Effective Sentences from a Corpus to Improve the Accuracy of Identification of Protein Names
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概要
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As the number of documents about protein structural analysis increases, a method of automatically identifying protein names in them is required. However, the accuracy of identification is not high if the training data set is not large enough. We consider a method to extend a training data set based on machine learning using an available corpus. Such a corpus usually consists of documents about a certain kind of organism species, and documents about different kinds of organism species tend to have different vocabularies. Therefore, depending on the target document or corpus, it is not effective for the accurate identification to simply use a corpus as a training data set. In order to improve the accuracy, we propose a method to select sentences that have a positive effect on identification and to extend the training data set with the selected sentences. In the proposed method, a portion of a set of tagged sentences is used as a validation set. The process to select sentences is iterated using the result of the identification of protein names in a validation set as feedback. In the experiment, compared with the baseline, a method without a corpus, with a whole corpus, or with a part of a corpus chosen at random, the accuracy of the proposed method was higher than any baseline method. Thus, it was confirmed that the proposed method selected effective sentences.
- Information and Media Technologies 編集運営会議の論文
著者
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Ohkawa Takenao
Graduate School Of Engineering Kobe University
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Ozaki Tomonobu
Organization Of Adavanced Science And Technology Kobe University
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Miyanishi Kazunori
Graduate School of Science and Technology, Kobe University
関連論文
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- Reaction Structure Profile: A Comparative Analysis of Metabolic Pathways Based on Important Substructures
- Selection of Effective Sentences from a Corpus to Improve the Accuracy of Identification of Protein Names
- A Method to Extract Sentences Containing Protein Function Information with Training Data Extension Based on User's Feedback