no code implementations • 21 Feb 2024 • Jianghui Zhou, Ya Gao, Jie Liu, Xuemin Zhao, Zhaohua Yang, Yue Wu, Lirong Shi
Large language models(LLM) such as ChatGPT have substantially simplified the generation of marketing copy, yet producing content satisfying domain specific requirements, such as effectively engaging customers, remains a significant challenge.
1 code implementation • 16 Jul 2023 • Zifeng Cheng, Qingyu Zhou, Zhiwei Jiang, Xuemin Zhao, Yunbo Cao, Qing Gu
However, these methods are only trained at a single granularity (i. e., either token level or span level) and have some weaknesses of the corresponding granularity.
no code implementations • 15 Mar 2023 • Tongwen Huang, Xihua Li, Chao Yi, Xuemin Zhao, Yunbo Cao
When students make a mistake in an exercise, they can consolidate it by ``similar exercises'' which have the same concepts, purposes and methods.
no code implementations • 9 Mar 2023 • He Zhu, Xihua Li, Xuemin Zhao, Yunbo Cao, Shan Yu
Finally, supervised contrastive learning was conducted on relevance prediction-related downstream tasks, which helped the model to learn the representation of questions effectively.
1 code implementation • 20 Oct 2022 • Haoran Meng, Zheng Xin, Tianyu Liu, Zizhen Wang, He Feng, Binghuai Lin, Xuemin Zhao, Yunbo Cao, Zhifang Sui
While interacting with chatbots, users may elicit multiple intents in a single dialogue utterance.
no code implementations • 17 Nov 2021 • Hengyao Bao, Xihua Li, Xuemin Zhao, Yunbo Cao
In this paper, we propose a method of student representation with the exploration of the hierarchical relations of knowledge concepts and student embedding.
1 code implementation • 21 Apr 2021 • Yuhao Zhou, Xihua Li, Yunbo Cao, Xuemin Zhao, Qing Ye, Jiancheng Lv
With pivot module reconstructed the decoder for individual students and leveled learning specialized encoders for groups, personalized DKT was achieved.
no code implementations • SEMEVAL 2018 • Mingming Fu, Xuemin Zhao, Yonghong Yan
This paper describes HCCL team systems that participated in SemEval 2018 Task 8: SecureNLP (Semantic Extraction from cybersecurity reports using NLP).
no code implementations • SEMEVAL 2017 • Junqing He, Long Wu, Xuemin Zhao, Yonghong Yan
In this paper, we introduce an approach to combining word embeddings and machine translation for multilingual semantic word similarity, the task2 of SemEval-2017.
Cross-Lingual Word Embeddings
Multilingual Word Embeddings
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