Search Results for author: Shoubin Dong

Found 7 papers, 1 papers with code

Deep Learning Overloaded Vehicle Identification for Long Span Bridges Based on Structural Health Monitoring Data

no code implementations4 Sep 2023 Yuqin Li, Jun Liu, Shengliang Zhong, Licheng Zhou, Shoubin Dong, Zejia Liu, Liqun Tang

In this paper, a deep learning based overloaded vehicle identification approach (DOVI) is proposed, with the purpose of overloaded vehicle identification for long-span bridges by the use of structural health monitoring data.

BrainNPT: Pre-training of Transformer networks for brain network classification

no code implementations2 May 2023 Jinlong Hu, Yangmin Huang, Nan Wang, Shoubin Dong

In this paper, we focused on pre-training methods with Transformer networks to leverage existing unlabeled data for brain functional network classification.

Classification

Transformer and Snowball Graph Convolution Learning for Brain functional network Classification

1 code implementation28 Mar 2023 Jinlong Hu, Yangmin Huang, Shoubin Dong

In this paper, we proposed a novel Transformer and snowball encoding networks (TSEN) for brain functional network classification, which introduced Transformer architecture with graph snowball connection into GNNs for learning whole-graph representation.

Graph Classification

A Multi-modal Fusion Framework Based on Multi-task Correlation Learning for Cancer Prognosis Prediction

no code implementations22 Jan 2022 Kaiwen Tan, Weixian Huang, Xiaofeng Liu, Jinlong Hu, Shoubin Dong

By integrating these heterogeneous but complementary data, many multi-modal methods are proposed to study the complex mechanisms of cancers, and most of them achieve comparable or better results from previous single-modal methods.

Multi-Task Learning Survival Analysis

AEFE: Automatic Embedded Feature Engineering for Categorical Features

no code implementations19 Oct 2021 Zhenyuan Zhong, Jie Yang, Yacong Ma, Shoubin Dong, Jinlong Hu

The challenge of solving data mining problems in e-commerce applications such as recommendation system (RS) and click-through rate (CTR) prediction is how to make inferences by constructing combinatorial features from a large number of categorical features while preserving the interpretability of the method.

Click-Through Rate Prediction Feature Engineering +2

Top-N-Rank: A Scalable List-wise Ranking Method for Recommender Systems

no code implementations10 Dec 2018 Junjie Liang, Jinlong Hu, Shoubin Dong, Vasant Honavar

We propose Top-N-Rank, a novel family of list-wise Learning-to-Rank models for reliably recommending the N top-ranked items.

Learning-To-Rank Recommendation Systems

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