no code implementations • 20 Dec 2024 • Xianlin Zeng, Yufeng Wang, Yuqi Sun, Guodong Guo, Baochang Zhang, Wenrui Ding
To tackle these issues, we introduce an unsupervised method based on a joint of generative training and discriminative training to learn graph structure and representation, aiming to improve the discriminative performance of generative models.
1 code implementation • 18 Dec 2024 • Qidong Liu, Xiangyu Zhao, Yuhao Wang, Yejing Wang, Zijian Zhang, Yuqi Sun, Xiang Li, Maolin Wang, Pengyue Jia, Chong Chen, Wei Huang, Feng Tian
Large Language Model (LLM) has transformative potential in various domains, including recommender systems (RS).
1 code implementation • 31 Jan 2024 • Wenxuan Yang, Weimin Tan, Yuqi Sun, Bo Yan
This paper introduces data-effective learning, aiming to use data in the most impactful way to pre-train foundation models.
1 code implementation • 18 Dec 2023 • Ruian He, Shili Zhou, Yuqi Sun, Ri Cheng, Weimin Tan, Bo Yan
With the rise of real-time rendering and the evolution of display devices, there is a growing demand for post-processing methods that offer high-resolution content in a high frame rate.
no code implementations • 19 Jun 2023 • Yuqi Sun, Ruian He, Weimin Tan, Bo Yan
Given a short speech video, we first build an efficient talking radiance field, and then apply the latest conditional diffusion model for image editing based on the given instructions and guiding implicit representation optimization towards the editing target.
no code implementations • 18 Jul 2022 • Ri Cheng, Yuqi Sun, Bo Yan, Weimin Tan, Chenxi Ma
To address these problems, we propose the MVSRnet, which uses geometry information to extract sharp details from all LR multi-view to support the SR of the LR input view.
no code implementations • CVPR 2022 • Yuqi Sun, Shili Zhou, Ri Cheng, Weimin Tan, Bo Yan, Lang Fu
Specifically, GR stage takes sparse depth map and RGB as input to predict dense depth map by exploiting the correlation between two modals.
1 code implementation • 30 Apr 2020 • Shangzhi Hong, Yuqi Sun, Hanying Li, Henry S. Lynn
In this study, a novel RF-based multiple imputation method was proposed by constructing conditional distributions the empirical distribution of out-of-bag prediction errors.
1 code implementation • 23 Apr 2020 • Shangzhi Hong, Yuqi Sun, Hanying Li, Henry S. Lynn
Machine learning iterative imputation methods have been well accepted by researchers for imputing missing data, but they can be time-consuming when handling large datasets.
no code implementations • WS 2018 • Yuqi Sun, Haoyue Shi, Junfeng Hu
In multi-sense word embeddings, contextual variations in corpus may cause a univocal word to be embedded into different sense vectors.
no code implementations • 3 Mar 2018 • Haoyue Shi, Yuqi Sun, Junfeng Hu
Unsupervised learned representations of polysemous words generate a large of pseudo multi senses since unsupervised methods are overly sensitive to contextual variations.
no code implementations • 15 Aug 2017 • Michael T. Lash, Yuqi Sun, Xun Zhou, Charles F. Lynch, W. Nick Street
Specifically, we compare model performance using a newly defined metric -- area between the curves (ABC) -- to assess (a) whether survival curves can be reasonably predicted for colorectal cancer patients in the state of Iowa, (b) whether geographical features improve predictive performance, and (c) whether a simple binary representation or richer, spectral clustering-based representation perform better.