Publication | Open Access
Compare, Compress and Propagate: Enhancing Neural Architectures with Alignment Factorization for Natural Language Inference
94
Citations
25
References
2018
Year
Unknown Venue
Structured PredictionEngineeringMachine LearningLarge Language ModelWord EmbeddingsNatural Language ProcessingSyntaxEnhancing Neural ArchitecturesComputational LinguisticsLanguage StudiesMachine TranslationAlignment FactorizationLarge Ai ModelNatural LanguageAlignment VectorsNlp TaskLinguisticsDeep LearningNatural Language InferenceExpressive Compression
This paper presents a new deep learning architecture for Natural Language Inference (NLI). Firstly, we introduce a new architecture where alignment pairs are compared, compressed and then propagated to upper layers for enhanced representation learning. Secondly, we adopt factorization layers for efficient and expressive compression of alignment vectors into scalar features, which are then used to augment the base word representations. The design of our approach is aimed to be conceptually simple, compact and yet powerful. We conduct experiments on three popular benchmarks, SNLI, MultiNLI and SciTail, achieving competitive performance on all. A lightweight parameterization of our model also enjoys a 3 times reduction in parameter size compared to the existing state-of-the-art models, e.g., ESIM and DIIN, while maintaining competitive performance. Additionally, visual analysis shows that our propagated features are highly interpretable.
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