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Information theoretic-PSO-based feature selection: an application in biomedical entity extraction

机译:基于信息理论上的PSO的特征选择:生物医学实体提取的应用

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摘要

Named entity recognition is a vital task for various applications related to biomedical natural language processing. It aims at extracting different biomedical entities from the text and classifying them into some predefined categories. The types could vary depending upon the genre and domain, such as gene versus non-gene in a coarse-grained scenario, or protein, DNA, RNA, cell line, and cell-type in a fine-grained scenario. In this paper, we present a novel filter-based feature selection technique utilizing the search capability of particle swarm optimization (PSO) for determining the most optimal feature combination. The technique yields in the most optimized feature set, that when used for classifiers learning, enhance the system performance. The proposed approach is assessed over four popular biomedical corpora, namely GENIA, GENETAG, AIMed, and Biocreative-II Gene Mention Recognition (BC-II). Our proposed model obtains the F score values of 74.49%, 91.11%, 90.47%, 88.64% on GENIA, GENETAG, AIMed, and BC-II dataset, respectively. The efficiency of feature pruning through PSO is evident with significant performance gains, even with amuch reduced set of features.
机译:命名实体识别是与生物医学自然语言处理有关的各种应用程序的重要任务。它旨在从文本中提取不同的生物医学实体并将它们分类为一些预定义的类别。这些类型可以根据类型和结构域而变化,例如粗粒情景中的基因与非基因,或蛋白质,DNA,RNA,细胞系和细胞型在细粒的情况下。在本文中,我们提出了一种利用粒子群优化(PSO)的搜索能力来确定最佳特征组合的新型滤波器的特征选择技术。该技术在最优化的功能集中产生,即用于分类器学习,提高系统性能。该拟议的方法是在四个流行的生物医学Corpora,即Genia,Genetag,瞄准和生物角质-II基因提及识别(BC-II)的过程中进行评估。我们拟议的模型分别获得F分数74.49%,91.11%,90.47%,91.11%,90.47%,88.64%,分别对Genetag,瞄准和BC-II数据集。通过PSO的特征修剪的效率显而易见,即使是AMUCH减少的特征,也具有显着性能的增益。

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