no code implementations • 10 Sep 2024 • Ningyuan Xi, Yetao Wu, Kun Fan, Teng Chen, Qingqing Gu, Peng Yu, Jinxian Qu, Chenxi Liu, Zhonglin Jiang, Yong Chen, Luo Ji
Large Language Models (LLM) often needs to be Continual Pre-Trained (CPT) to obtain the unfamiliar language skill or adapt into new domains.
no code implementations • 8 Apr 2024 • Faren Yan, Peng Yu, Xin Chen
The use of LLMs for natural language processing has become a popular trend in the past two years, driven by their formidable capacity for context comprehension and learning, which has inspired a wave of research from academics and industry professionals.
no code implementations • 17 Oct 2023 • Xu Yang, Xiao Yang, Weiqing Liu, Jinhui Li, Peng Yu, Zeqi Ye, Jiang Bian
In the wake of relentless digital transformation, data-driven solutions are emerging as powerful tools to address multifarious industrial tasks such as forecasting, anomaly detection, planning, and even complex decision-making.
no code implementations • 25 Apr 2023 • Xiaofei Guan, Xintong Wang, Hao Wu, Zihao Yang, Peng Yu
Simultaneously, the INN is designed to partition the parameter vector linked to the input physical field into two distinct components: the expansion coefficients representing the forward problem solution and the Gaussian latent noise.
1 code implementation • 16 Sep 2022 • Peng Yu, Chao Xu, Albert Bifet, Jesse Read
Decision trees are well-known due to their ease of interpretability.
2 code implementations • 11 Nov 2020 • Peng Yu, Spencer S. Ericksen, Anthony Gitter, Michael A. Newton
An IBR method selects an informer set of compounds, and then prioritizes the remaining compounds on the basis of new bioactivity experiments performed with the informer set on the target.
Methodology
no code implementations • 27 May 2019 • Dora Jambor, Peng Yu
Binary relevance is a simple approach to solve multi-label learning problems where an independent binary classifier is built per each label.
no code implementations • 27 Apr 2018 • Donglai Zhu, Hengshuai Yao, Bei Jiang, Peng Yu
In deep neural network, the cross-entropy loss function is commonly used for classification.
no code implementations • 9 Feb 2016 • Szymon Sidor, Peng Yu, Cheng Fang, Brian Williams
The problem of scheduling under resource constraints is widely applicable.