Search Results for author: Wenliang Zhong

Found 15 papers, 3 papers with code

PathM3: A Multimodal Multi-Task Multiple Instance Learning Framework for Whole Slide Image Classification and Captioning

no code implementations13 Mar 2024 Qifeng Zhou, Wenliang Zhong, Yuzhi Guo, Michael Xiao, Hehuan Ma, Junzhou Huang

In the field of computational histopathology, both whole slide images (WSIs) and diagnostic captions provide valuable insights for making diagnostic decisions.

Caption Generation Image Classification +2

Denoising Time Cycle Modeling for Recommendation

no code implementations5 Feb 2024 Sicong Xie, Qunwei Li, Weidi Xu, Kaiming Shen, Shaohu Chen, Wenliang Zhong

We define the subset of user behaviors that are irrelevant to the target item as noises, which limits the performance of target-related time cycle modeling and affect the recommendation performance.

Denoising Recommendation Systems

End-to-end Learnable Clustering for Intent Learning in Recommendation

1 code implementation11 Jan 2024 Yue Liu, Shihao Zhu, Jun Xia, Yingwei Ma, Jian Ma, Wenliang Zhong, Xinwang Liu, Guannan Zhang, Kejun Zhang

Concretely, we encode users' behavior sequences and initialize the cluster centers (latent intents) as learnable neurons.

Clustering Contrastive Learning +2

MIVC: Multiple Instance Visual Component for Visual-Language Models

no code implementations28 Dec 2023 Wenyi Wu, Qi Li, Wenliang Zhong, Junzhou Huang

Vision-language models have been widely explored across a wide range of tasks and achieve satisfactory performance.

Question Answering Visual Question Answering

PEACE: Prototype lEarning Augmented transferable framework for Cross-domain rEcommendation

no code implementations4 Dec 2023 Chunjing Gan, Bo Huang, Binbin Hu, Jian Ma, Ziqi Liu, Zhiqiang Zhang, Jun Zhou, Guannan Zhang, Wenliang Zhong

To help merchants/customers to provide/access a variety of services through miniapps, online service platforms have occupied a critical position in the effective content delivery, in which how to recommend items in the new domain launched by the service provider for customers has become more urgent.

Recommendation Systems

Which Matters Most in Making Fund Investment Decisions? A Multi-granularity Graph Disentangled Learning Framework

no code implementations23 Nov 2023 Chunjing Gan, Binbin Hu, Bo Huang, Tianyu Zhao, Yingru Lin, Wenliang Zhong, Zhiqiang Zhang, Jun Zhou, Chuan Shi

In this paper, we highlight that both conformity and risk preference matter in making fund investment decisions beyond personal interest and seek to jointly characterize these aspects in a disentangled manner.

ChatGraph: Interpretable Text Classification by Converting ChatGPT Knowledge to Graphs

1 code implementation3 May 2023 Yucheng Shi, Hehuan Ma, Wenliang Zhong, Qiaoyu Tan, Gengchen Mai, Xiang Li, Tianming Liu, Junzhou Huang

To tackle these limitations, we propose a novel framework that leverages the power of ChatGPT for specific tasks, such as text classification, while improving its interpretability.

Decision Making Language Modelling +3

COUPA: An Industrial Recommender System for Online to Offline Service Platforms

no code implementations25 Apr 2023 Sicong Xie, Binbin Hu, Fengze Li, Ziqi Liu, Zhiqiang Zhang, Wenliang Zhong, Jun Zhou

Aiming at helping users locally discovery retail services (e. g., entertainment and dinning), Online to Offline (O2O) service platforms have become popular in recent years, which greatly challenge current recommender systems.

Position Recommendation Systems

Learning Graph Neural Networks with Approximate Gradient Descent

no code implementations7 Dec 2020 Qunwei Li, Shaofeng Zou, Wenliang Zhong

Two types of GNNs are investigated, depending on whether labels are attached to nodes or graphs.

Graph Representation Learning for Merchant Incentive Optimization in Mobile Payment Marketing

no code implementations27 Feb 2020 Ziqi Liu, Dong Wang, Qianyu Yu, Zhiqiang Zhang, Yue Shen, Jian Ma, Wenliang Zhong, Jinjie Gu, Jun Zhou, Shuang Yang, Yuan Qi

In this paper, we present a graph representation learning method atop of transaction networks for merchant incentive optimization in mobile payment marketing.

Graph Representation Learning Marketing

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