Chengguo Lv


2021

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Chinese Opinion Role Labeling with Corpus Translation: A Pivot Study
Ranran Zhen | Rui Wang | Guohong Fu | Chengguo Lv | Meishan Zhang
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing

Opinion Role Labeling (ORL), aiming to identify the key roles of opinion, has received increasing interest. Unlike most of the previous works focusing on the English language, in this paper, we present the first work of Chinese ORL. We construct a Chinese dataset by manually translating and projecting annotations from a standard English MPQA dataset. Then, we investigate the effectiveness of cross-lingual transfer methods, including model transfer and corpus translation. We exploit multilingual BERT with Contextual Parameter Generator and Adapter methods to examine the potentials of unsupervised cross-lingual learning and our experiments and analyses for both bilingual and multilingual transfers establish a foundation for the future research of this task.

2020

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Sentence Matching with Syntax- and Semantics-Aware BERT
Tao Liu | Xin Wang | Chengguo Lv | Ranran Zhen | Guohong Fu
Proceedings of the 28th International Conference on Computational Linguistics

Sentence matching aims to identify the special relationship between two sentences, and plays a key role in many natural language processing tasks. However, previous studies mainly focused on exploiting either syntactic or semantic information for sentence matching, and no studies consider integrating both of them. In this study, we propose integrating syntax and semantics into BERT with sentence matching. In particular, we use an implicit syntax and semantics integration method that is less sensitive to the output structure information. Thus the implicit integration can alleviate the error propagation problem. The experimental results show that our approach has achieved state-of-the-art or competitive performance on several sentence matching datasets, demonstrating the benefits of implicitly integrating syntactic and semantic features in sentence matching.