Data Weighted Training Strategies for Grammatical Error Correction
Author(s) -
Jared Lichtarge,
Chris Alberti,
Shankar Kumar
Publication year - 2020
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00336
Subject(s) - perplexity , computer science , task (project management) , machine translation , artificial intelligence , machine learning , schedule , training set , function (biology) , test data , quality (philosophy) , natural language processing , language model , philosophy , management , epistemology , evolutionary biology , economics , biology , programming language , operating system
Recent progress in the task of Grammatical Error Correction (GEC) has been driven by addressing data sparsity, both through new methods for generating large and noisy pretraining data and through the publication of small and higher-quality finetuning data in the BEA-2019 shared task. Building upon recent work in Neural Machine Translation (NMT), we make use of both kinds of data by deriving example-level scores on our large pretraining data based on a smaller, higher-quality dataset. In this work, we perform an empirical study to discover how to best incorporate delta-log-perplexity, a type of example scoring, into a training schedule for GEC. In doing so, we perform experiments that shed light on the function and applicability of delta-log-perplexity. Models trained on scored data achieve state- of-the-art results on common GEC test sets.
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