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Differential evolution based multiobjective optimization for biomedical entity extraction

机译:基于差异进化的生物医学实体提取多目标优化

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In this paper, we propose multi-objective differential evolution (DE) based feature selection and ensemble learning techniques for biomedical entity extraction. The algorithm operates in two layers, first step of which concerns with the problem of automatic feature selection for a machine learning algorithm, namely Conditional Random Field (CRF). The solutions of the final best population provides different feature combinations. The classifiers generated with these feature representations are combined together using a multi-objective differential based ensemble technique. We evaluate the proposed algorithm for named entity (NE) extraction in biomedical text. Experiments on the benchmark setup yield recall, precision and F-measure values of 73.50%, 77.02% and 75.22%, respectively.
机译:在本文中,我们提出了基于多目标差分进化(DE)的特征选择和集成学习技术,用于生物医学实体提取。该算法分两层运行,第一步涉及机器学习算法(即条件随机场(CRF))的自动特征选择问题。最终最佳总体的解决方案提供了不同的功能组合。使用基于多目标微分的集成技术,将利用这些特征表示生成的分类器组合在一起。我们评估生物医学文本中提出的用于命名实体(NE)提取的算法。在基准设置上进行的实验分别产生了73.50%,77.02%和75.22%的召回率,精确度和F量度值。

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