Modeling Composite Labels for Neural Morphological Tagging

10/20/2018
by   Alexander Tkachenko, et al.
0

Neural morphological tagging has been regarded as an extension to POS tagging task, treating each morphological tag as a monolithic label and ignoring its internal structure. We propose to view morphological tags as composite labels and explicitly model their internal structure in a neural sequence tagger. For this, we explore three different neural architectures and compare their performance with both CRF and simple neural multiclass baselines. We evaluate our models on 49 languages and show that the neural architecture that models the morphological labels as sequences of morphological category values performs significantly better than both baselines establishing state-of-the-art results in morphological tagging for most languages.

READ FULL TEXT
research
10/16/2018

Neural Morphological Tagging for Estonian

We develop neural morphological tagging and disambiguation models for Es...
research
05/21/2020

Evaluating Neural Morphological Taggers for Sanskrit

Neural sequence labelling approaches have achieved state of the art resu...
research
04/04/2019

A Simple Joint Model for Improved Contextual Neural Lemmatization

English verbs have multiple forms. For instance, talk may also appear as...
research
07/21/2019

Augmenting a BiLSTM tagger with a Morphological Lexicon and a Lexical Category Identification Step

Previous work on using BiLSTM models for PoS tagging has primarily focus...
research
12/19/2016

Neural Multi-Source Morphological Reinflection

We explore the task of multi-source morphological reinflection, which ge...
research
12/12/2014

A Robust Transformation-Based Learning Approach Using Ripple Down Rules for Part-of-Speech Tagging

In this paper, we propose a new approach to construct a system of transf...
research
05/08/2021

Falling Through the Gaps: Neural Architectures as Models of Morphological Rule Learning

Recent advances in neural architectures have revived the problem of morp...

Please sign up or login with your details

Forgot password? Click here to reset