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Don't Take It Literally: An Edit-Invariant Sequence Loss for Text Generation

Authors :
Liu, Guangyi
Yang, Zichao
Tao, Tianhua
Liang, Xiaodan
Bao, Junwei
Li, Zhen
He, Xiaodong
Cui, Shuguang
Hu, Zhiting
Publication Year :
2021

Abstract

Neural text generation models are typically trained by maximizing log-likelihood with the sequence cross entropy (CE) loss, which encourages an exact token-by-token match between a target sequence with a generated sequence. Such training objective is sub-optimal when the target sequence is not perfect, e.g., when the target sequence is corrupted with noises, or when only weak sequence supervision is available. To address the challenge, we propose a novel Edit-Invariant Sequence Loss (EISL), which computes the matching loss of a target n-gram with all n-grams in the generated sequence. EISL is designed to be robust to various noises and edits in the target sequences. Moreover, the EISL computation is essentially an approximate convolution operation with target n-grams as kernels, which is easy to implement and efficient to compute with existing libraries. To demonstrate the effectiveness of EISL, we conduct experiments on a wide range of tasks, including machine translation with noisy target sequences, unsupervised text style transfer with only weak training signals, and non-autoregressive generation with non-predefined generation order. Experimental results show our method significantly outperforms the common CE loss and other strong baselines on all the tasks. EISL has a simple API that can be used as a drop-in replacement of the CE loss: https://github.com/guangyliu/EISL.<br />Comment: Camera ready, 2022 NAACL main conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.15078
Document Type :
Working Paper