首页> 外文会议>Conference on Intelligent Text Processing and Computational Linguistics;CICLing 2014 >Modified Differential Evolution for Biochemical Name Recognizer
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Modified Differential Evolution for Biochemical Name Recognizer

机译:改进的生物化学名称识别器的差分演变

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In this paper we propose a modified differential evolution (MDE) based feature selection and ensemble learning algorithms for biochemical entity recognizer. Identification and classification of chemical entities are relatively more complex and challenging compared to the other related tasks. As chemical entities we focus on IUPAC and IUPAC related entities. The algorithm performs feature selection within the framework of a robust machine learning algorithm, namely Conditional Random Field. Features are identified and implemented mostly without using any domain specific knowledge and/or resources. In this paper we modify traditional differential evolution to perform two tasks, viz. determining relevant set of features as well as determining proper voting weights for constructing an ensemble. The feature selection technique produces a set of potential solutions on the final population. We develop many models of CRF using these feature combinations. In order to further improve the performance the outputs of these classifiers are combined together using a classifier ensemble technique based on modified DE. Our experiments with the benchmark datasets yield the recall, precision and F-measure values of 82.34%, 88.26% and 85.20%, respectively.
机译:在本文中,我们提出了一种基于修改的差分演进(MDE)的生物化实体识别器的特征选择和集合学习算法。与其他相关任务相比,化学实体的识别和分类是相对更复杂和具有挑战性的。作为化学实体,我们专注于Iupac和Iupac相关实体。该算法在强大的机器学习算法的框架内执行特征选择,即条件随机字段。在不使用任何域特定知识和/或资源的情况下,主要识别和实现功能。在本文中,我们修改了传统的差异演进,执行两个任务,viz。确定相关的特征集以及确定用于构建集合的适当投票权重。特征选择技术在最终群体上产生一组潜在的解决方案。我们使用这些特征组合开发许多型号CRF。为了进一步提高性能,这些分类器的输出使用基于修改的DE的分类器集合技术组合在一起。我们的实验与基准数据集产生召回,精度和F测量值,分别为82.34%,88.26%和85.20%。

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