Litcius/Paper detail

Effective Batching for Recurrent Neural Network Grammars

Hiroshi Noji, Yohei Oseki

202116 citationsDOIOpen Access PDF

Abstract

As a language model that integrates traditional symbolic operations and flexible neural representations, recurrent neural network grammars (RNNGs) have attracted great attention from both scientific and engineering perspectives. However, RNNGs are known to be harder to scale due to the difficulty of batched training. In this paper, we propose effective batching for RNNGs, where every operation is computed in parallel with tensors across multiple sentences. Our PyTorch implementation effectively employs a GPU and achieves x6 speedup compared to the existing C++ DyNet implementation with model-independent auto-batching. Moreover, our batched RNNG also accelerates inference and achieves x20-150 speedup for beam search depending on beam sizes. Finally, we evaluate syntactic generalization performance of the scaled RNNG against the LSTM baseline, based on the large training data of 100M tokens from English Wikipedia and the broad-coverage targeted syntactic evaluation benchmark. 1

Topics & Concepts

Computer scienceRule-based machine translationRecurrent neural networkArtificial intelligenceArtificial neural networkNatural language processingTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications
Effective Batching for Recurrent Neural Network Grammars | Litcius