Joint model for feature selection and parameter optimization coupled with classifier ensemble in chemical mention recognition
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摘要
Mention recognition in chemical texts plays an important role in a wide-spread range of application areas. Feature selection and parameter optimization are the two important issues in machine learning. While the former improves the quality of a classifier by removing the redundant and irrelevant features, the later concerns finding the most suitable parameter values, which have significant impact on the overall classification performance. In this paper we formulate a joint model that performs feature selection and parameter optimization simultaneously, and propose two approaches based on the concepts of single and multiobjective optimization techniques. Classifier ensemble techniques are also employed to improve the performance further. We identify and implement variety of features that are mostly domain-independent. Experiments are performed with various configurations on the benchmark patent and Medline datasets. Evaluation shows encouraging performance in all the settings.
论文关键词:Feature selection,Parameter optimization,Multiobjective optimization (MOO),Single objective optimization (SOO),Conditional random field (CRF),Support vector machine (SVM)
论文评审过程:Received 15 June 2014, Revised 18 April 2015, Accepted 18 April 2015, Available online 25 April 2015, Version of Record 16 July 2015.
论文官网地址:https://doi.org/10.1016/j.knosys.2015.04.015