Yejing Wang
27 Papers
Yejing Wang is an academic researcher. The author has contributed to research in topics: Computer science & Recommender system. The author has an hindex of 3, co-authored 9 publications.
Chat about Author
Papers
AutoField: Automating Feature Selection in Deep Recommender Systems
Yejing Wang,Xiang Zhao,Tong Xu,Xianren Wu +3 more
- 19 Apr 2022
TL;DR: This work designs a differentiable controller network, which is capable of automatically adjusting the probability of selecting a particular feature field; then, only selected feature fields are utilized to retrain the deep recommendation model.
AutoDenoise: Automatic Data Instance Denoising for Recommendations
Weilin Lin,Xiang Zhao,Yejing Wang,Yuanshao Zhu,Wanyu Wang +4 more
- 12 Mar 2023
TL;DR: In this paper , a Deep Reinforcement Learning (DRL) based framework, AutoDenoise, with an Instance Denoising Policy Network, is proposed for denoising data instances with an instance selection manner in deep recommendation systems.
STRec: Sparse Transformer for Sequential Recommendations
Chengxi Li,Yejing Wang,Qidong Liu,Xiangyu Zhao,Wanyu Wang,Yiqi Wang,Lixin Zou,Wenqi Fan,Qing Li +8 more
- 14 Sep 2023
TL;DR: This paper identifies the sparse attention phenomenon in transformer-based SRS models and proposes Sparse Transformer for sequential Recommendation tasks (STRec), which achieves the state-of-the-art accuracy while reducing 54% inference time and 70% memory cost.
21
Single-shot Feature Selection for Multi-task Recommendations
Yejing Wang,Zhaochen Du,Xiangyu Zhao,Bo Chen,Huiwen Guo,Ruiming Tang +5 more
- 19 Jul 2023
TL;DR: MultiSFS as mentioned in this paper proposes a single-shot feature selection framework for multi-task recommender systems, which is capable of selecting feature fields for each task while considering task relations in a single shot manner.
17
Doctor Specific Tag Recommendation for Online Medical Record Management
Yejing Wang,Shenzhang Ge,Xiangyu Zhao,Xin Wu,Tongjing Xu,Chen Ma,Zhi Zheng +6 more
- 04 Aug 2023
TL;DR: This paper proposes an efficient doctor specific tag recommendation framework for improved medical record management without side information by utilizing effective language models to learn the text representation and constructing a doctor embedding learning module to enhance the recommendation quality.
5