Morphological Inflection Generation Using Character Sequence to Sequence Learning

12/18/2015
by   Manaal Faruqui, et al.
0

Morphological inflection generation is the task of generating the inflected form of a given lemma corresponding to a particular linguistic transformation. We model the problem of inflection generation as a character sequence to sequence learning problem and present a variant of the neural encoder-decoder model for solving it. Our model is language independent and can be trained in both supervised and semi-supervised settings. We evaluate our system on seven datasets of morphologically rich languages and achieve either better or comparable results to existing state-of-the-art models of inflection generation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/17/2017

Unlabeled Data for Morphological Generation With Character-Based Sequence-to-Sequence Models

We present a semi-supervised way of training a character-based encoder-d...
research
05/21/2018

MorphNet: A sequence-to-sequence model that combines morphological analysis and disambiguation

We introduce MorphNet, a single model that combines morphological analys...
research
10/11/2019

Neural Generation for Czech: Data and Baselines

We present the first dataset targeted at end-to-end NLG in Czech in the ...
research
09/04/2020

Linguistically inspired morphological inflection with a sequence to sequence model

Inflection is an essential part of every human language's morphology, ye...
research
07/04/2017

CharManteau: Character Embedding Models For Portmanteau Creation

Portmanteaus are a word formation phenomenon where two words are combine...
research
06/16/2019

Neural Decipherment via Minimum-Cost Flow: from Ugaritic to Linear B

In this paper we propose a novel neural approach for automatic decipherm...
research
09/03/2019

DeepObfusCode: Source Code Obfuscation Through Sequence-to-Sequence Networks

The paper explores a novel methodology in source code obfuscation throug...

Please sign up or login with your details

Forgot password? Click here to reset