Jackie Chun-Sing Ho


2022

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Retrofitting Multilingual Sentence Embeddings with Abstract Meaning Representation
Deng Cai | Xin Li | Jackie Chun-Sing Ho | Lidong Bing | Wai Lam
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing

We introduce a new method to improve existing multilingual sentence embeddings with Abstract Meaning Representation (AMR). Compared with the original textual input, AMR is a structured semantic representation that presents the core concepts and relations in a sentence explicitly and unambiguously. It also helps reduce the surface variations across different expressions and languages. Unlike most prior work that only evaluates the ability to measure semantic similarity, we present a thorough evaluation of existing multilingual sentence embeddings and our improved versions, which include a collection of five transfer tasks in different downstream applications. Experiment results show that retrofitting multilingual sentence embeddings with AMR leads to better state-of-the-art performance on both semantic textual similarity and transfer tasks.

2021

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Multilingual AMR Parsing with Noisy Knowledge Distillation
Deng Cai | Xin Li | Jackie Chun-Sing Ho | Lidong Bing | Wai Lam
Findings of the Association for Computational Linguistics: EMNLP 2021

We study multilingual AMR parsing from the perspective of knowledge distillation, where the aim is to learn and improve a multilingual AMR parser by using an existing English parser as its teacher. We constrain our exploration in a strict multilingual setting: there is but one model to parse all different languages including English. We identify that noisy input and precise output are the key to successful distillation. Together with extensive pre-training, we obtain an AMR parser whose performances surpass all previously published results on four different foreign languages, including German, Spanish, Italian, and Chinese, by large margins (up to 18.8 Smatch points on Chinese and on average 11.3 Smatch points). Our parser also achieves comparable performance on English to the latest state-of-the-art English-only parser.