CLLGJun 24, 2019

A Tensorized Transformer for Language Modeling

arXiv:1906.09777v3196 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of deploying large Transformer models in resource-limited settings, offering an incremental improvement through parameter compression and efficiency gains.

The paper tackles the resource limitations of Transformer's multi-head attention by proposing a tensorized self-attention model using Block-Term Tensor Decomposition, which compresses parameters and improves performance on language modeling and translation tasks.

Latest development of neural models has connected the encoder and decoder through a self-attention mechanism. In particular, Transformer, which is solely based on self-attention, has led to breakthroughs in Natural Language Processing (NLP) tasks. However, the multi-head attention mechanism, as a key component of Transformer, limits the effective deployment of the model to a resource-limited setting. In this paper, based on the ideas of tensor decomposition and parameters sharing, we propose a novel self-attention model (namely Multi-linear attention) with Block-Term Tensor Decomposition (BTD). We test and verify the proposed attention method on three language modeling tasks (i.e., PTB, WikiText-103 and One-billion) and a neural machine translation task (i.e., WMT-2016 English-German). Multi-linear attention can not only largely compress the model parameters but also obtain performance improvements, compared with a number of language modeling approaches, such as Transformer, Transformer-XL, and Transformer with tensor train decomposition.

Code Implementations1 repo
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