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Classifier Ensemble approach to Dependency ParsingAuthors: Silpa Kanneganti,vandan.mujadia ,Dipti Misra Sharma Conference: 18th International Conference on Computational Linguistics and Intelligent Text Processing (CICLing-2017 2017) Location Budapest, Hungary Date: 2017-04-17 Report no: IIIT/TR/2017/28 AbstractIn this paper we propose a neural network based classifier voting approach to dependency parsing using multiple classifiers as component systems in an ensemble and a neural network algorithm as an oracle. We show significant improvements over the best component systems for both transition-based and graph-based dependency parsing. We also investigate different weighting schemes for voting among individual classifiers in the ensemble. All our experiments were conducted on Hindi and Telugu language data but the approach is language-independent. Full paper: pdf Centre for Language Technologies Research Centre |
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