1 code implementation • EMNLP 2021 • Ting-Wei Wu, Ruolin Su, Biing Juang
We show that it successfully extends to few/zero-shot setting where part of intent labels are unseen in training data, by also taking account of semantics in these unseen intent labels.
no code implementations • 10 Nov 2023 • Ruolin Su, Ting-Wei Wu, Biing-Hwang Juang
Tracking dialogue states is an essential topic in task-oriented dialogue systems, which involve filling in the necessary information in pre-defined slots corresponding to a schema.
no code implementations • 7 Jun 2023 • Ting-Wei Wu, Fatemeh Sheikholeslami, Mohammad Kachuee, Jaeyoung Do, Sungjin Lee
Large-scale conversational systems typically rely on a skill-routing component to route a user request to an appropriate skill and interpretation to serve the request.
1 code implementation • 25 Feb 2023 • Ruolin Su, Jingfeng Yang, Ting-Wei Wu, Biing-Hwang Juang
With the demanding need for deploying dialogue systems in new domains with less cost, zero-shot dialogue state tracking (DST), which tracks user's requirements in task-oriented dialogues without training on desired domains, draws attention increasingly.
1 code implementation • 4 Aug 2022 • Ruolin Su, Ting-Wei Wu, Biing-Hwang Juang
As an essential component in task-oriented dialogue systems, dialogue state tracking (DST) aims to track human-machine interactions and generate state representations for managing the dialogue.
no code implementations • 23 Feb 2022 • Ting-Wei Wu, Biing-Hwang Juang
Modern spoken language understanding (SLU) systems rely on sophisticated semantic notions revealed in single utterances to detect intents and slots.
1 code implementation • 3 Sep 2021 • Ting-Wei Wu, Ruolin Su, Biing-Hwang Juang
The success of interactive dialog systems is usually associated with the quality of the spoken language understanding (SLU) task, which mainly identifies the corresponding dialog acts and slot values in each turn.
no code implementations • 30 May 2021 • Jia-Hong Huang, Ting-Wei Wu, Chao-Han Huck Yang, Marcel Worring
Automatically generating medical reports for retinal images is one of the promising ways to help ophthalmologists reduce their workload and improve work efficiency.
no code implementations • 17 May 2021 • Ting-Wei Wu, Yung-An Hsieh, Yi-Chieh Liu
Quality Estimation (QE) of Machine Translation (MT) is a task to estimate the quality scores for given translation outputs from an unknown MT system.
no code implementations • 26 Apr 2021 • Jia-Hong Huang, Ting-Wei Wu, Marcel Worring
A traditional medical image captioning model creates a medical description only based on a single medical image input.
1 code implementation • 1 Nov 2020 • Jia-Hong Huang, Chao-Han Huck Yang, Fangyu Liu, Meng Tian, Yi-Chieh Liu, Ting-Wei Wu, I-Hung Lin, Kang Wang, Hiromasa Morikawa, Hernghua Chang, Jesper Tegner, Marcel Worring
To train and validate the effectiveness of our DNN-based module, we propose a large-scale retinal disease image dataset.