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Neural Approaches for Data Driven Dependency Parsing in Sanskrit

Authors :
Krishna, Amrith
Gupta, Ashim
Garasangi, Deepak
Sandhan, Jivnesh
Satuluri, Pavankumar
Goyal, Pawan
Publication Year :
2020

Abstract

Data-driven approaches for dependency parsing have been of great interest in Natural Language Processing for the past couple of decades. However, Sanskrit still lacks a robust purely data-driven dependency parser, probably with an exception to Krishna (2019). This can primarily be attributed to the lack of availability of task-specific labelled data and the morphologically rich nature of the language. In this work, we evaluate four different data-driven machine learning models, originally proposed for different languages, and compare their performances on Sanskrit data. We experiment with 2 graph based and 2 transition based parsers. We compare the performance of each of the models in a low-resource setting, with 1,500 sentences for training. Further, since our focus is on the learning power of each of the models, we do not incorporate any Sanskrit specific features explicitly into the models, and rather use the default settings in each of the paper for obtaining the feature functions. In this work, we analyse the performance of the parsers using both an in-domain and an out-of-domain test dataset. We also investigate the impact of word ordering in which the sentences are provided as input to these systems, by parsing verses and their corresponding prose order (anvaya) sentences.<br />Comment: submitted to WSC 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2004.08076
Document Type :
Working Paper