no code implementations • Findings (EMNLP) 2021 • Yunhe Xie, Kailai Yang, Chengjie Sun, Bingquan Liu, Zhenzhou Ji
However, these models neglect direct utterance-knowledge interaction.
Ranked #13 on
Emotion Recognition in Conversation
on DailyDialog
no code implementations • SemEval (NAACL) 2022 • Weihe Zhai, Mingqiang Feng, Arkaitz Zubiaga, Bingquan Liu
As a result, the model can well generalise to soft constrained and other competence-based question answering problem.
no code implementations • 20 Oct 2022 • Shaobo Li, Xiaoguang Li, Lifeng Shang, Chengjie Sun, Bingquan Liu, Zhenzhou Ji, Xin Jiang, Qun Liu
Further experiments on question-answering datasets show that trying to learn a deterministic relationship with the proposed methods can also help other knowledge-intensive tasks.
no code implementations • Findings (ACL) 2022 • Shaobo Li, Xiaoguang Li, Lifeng Shang, Zhenhua Dong, Chengjie Sun, Bingquan Liu, Zhenzhou Ji, Xin Jiang, Qun Liu
We check the words that have three typical associations with the missing words: knowledge-dependent, positionally close, and highly co-occurred.
no code implementations • 7 Sep 2021 • Shaobo Li, Qun Liu, Xin Jiang, Yichun Yin, Chengjie Sun, Bingquan Liu, Zhenzhou Ji, Lifeng Shang
Human-designed rules are widely used to build industry applications.
no code implementations • 31 Dec 2020 • Shaobo Li, Xiaoguang Li, Lifeng Shang, Xin Jiang, Qun Liu, Chengjie Sun, Zhenzhou Ji, Bingquan Liu
In this paper, we propose a new retrieval target, hop, to collect the hidden reasoning evidence from Wikipedia for complex question answering.
Ranked #7 on
Question Answering
on HotpotQA
no code implementations • SEMEVAL 2020 • Yice Zhang, Jiaxuan Lin, Yang Fan, Peng Jin, Yuanchao Liu, Bingquan Liu
For this task, it is obvious that external knowledge, such as Knowledge graph, can help the model understand commonsense in natural language statements.
no code implementations • ACL 2019 • Yuanchao Liu, Bo Pang, Bingquan Liu
Although the proper use of idioms can enhance the elegance of writing, the active use of various expressions is a challenge because remembering idioms is difficult.
no code implementations • NAACL 2018 • Zhen Xu, Nan Jiang, Bingquan Liu, Wenge Rong, Bowen Wu, Baoxun Wang, Zhuoran Wang, Xiaolong Wang
The experimental results have shown that our proposed corpus can be taken as a new benchmark dataset for the NRG task, and the presented metrics are promising to guide the optimization of NRG models by quantifying the diversity of the generated responses reasonably.
no code implementations • SEMEVAL 2018 • Wenjie Liu, Chengjie Sun, Lei Lin, Bingquan Liu
Semantic Evaluation (SemEval) 2018 Task 12 {``}The Argument Reasoning Comprehension{''} committed to research natural language reasoning.
no code implementations • EMNLP 2017 • Zhen Xu, Bingquan Liu, Baoxun Wang, Chengjie Sun, Xiaolong Wang, Zhuoran Wang, Chao Qi
This paper presents a Generative Adversarial Network (GAN) to model single-turn short-text conversations, which trains a sequence-to-sequence (Seq2Seq) network for response generation simultaneously with a discriminative classifier that measures the differences between human-produced responses and machine-generated ones.
no code implementations • SEMEVAL 2017 • Wenjie Liu, Chengjie Sun, Lei Lin, Bingquan Liu
Semantic Textual Similarity (STS) devotes to measuring the degree of equivalence in the underlying semantic of the sentence pair.
1 code implementation • 17 May 2016 • Zhen Xu, Bingquan Liu, Baoxun Wang, Chengjie Sun, Xiaolong Wang
Modeling human conversations is the essence for building satisfying chat-bots with multi-turn dialog ability.