Publication | Open Access
On Compositionality in Neural Machine Translation
15
Citations
11
References
2019
Year
Structured PredictionEngineeringMachine LearningNeurolinguisticsLarge Language ModelRecurrent Neural NetworkNatural Language ProcessingSyntaxComputational LinguisticsGrammarLanguage StudiesMachine TranslationCognitive ScienceSequence ModellingLinguisticsPrinciple Of CompositionalityCompositionalityDeep LearningMultimodal TranslationNeural Machine TranslationSpecific ManifestationsSequence Model
We investigate two specific manifestations of compositionality in Neural Machine Translation (NMT) : (1) Productivity - the ability of the model to extend its predictions beyond the observed length in training data and (2) Systematicity - the ability of the model to systematically recombine known parts and rules. We evaluate a standard Sequence to Sequence model on tests designed to assess these two properties in NMT. We quantitatively demonstrate that inadequate temporal processing, in the form of poor encoder representations is a bottleneck for both Productivity and Systematicity. We propose a simple pre-training mechanism which alleviates model performance on the two properties and leads to a significant improvement in BLEU scores.
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