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2021, Volume 18 (XXXV), no 1

Efficiency Analysis of Deeplearning4J Neural Network Classifiers in Development of Transition Based Dependency Parsers

Author(s):
László CSÉPÁNYI-FÜRJES, László KOVÁCS, University of Miskolc Institute of Information Science, Miskolc-Egyetemváros, Hungary

Abstract:
Dependency parsing is a complex process in natural language text processing, text to semantic transformation. The efficiency improvement of dependency parsing is a current and an active research area in the NLP community. The paper presents four transitionbased dependency parser models with implementation using DL4J classifiers. The efficiency of the proposed models were tested with Hungarian language corpora. The parsing model uses a data representation form based on lightweight embedding and a novel morphological-description-vector format is proposed for the input layer. Based on the test experiments on parsing Hungarian text documents, the proposed list-based transitions parsers outperform the widespread stack-based variants.

DOI: https://doi.org/10.2478/amset-2021-0006

Pages: 33-39

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Update: 21-Mar-2024 © Published by University Press