Ryosuke Kuwabara


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2020

pdf bib
Single Model Ensemble using Pseudo-Tags and Distinct Vectors
Ryosuke Kuwabara | Jun Suzuki | Hideki Nakayama
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

Model ensemble techniques often increase task performance in neural networks; however, they require increased time, memory, and management effort. In this study, we propose a novel method that replicates the effects of a model ensemble with a single model. Our approach creates K-virtual models within a single parameter space using K-distinct pseudo-tags and K-distinct vectors. Experiments on text classification and sequence labeling tasks on several datasets demonstrate that our method emulates or outperforms a traditional model ensemble with 1/K-times fewer parameters.