Wen Zhang (@wencolani) 's Twitter Profile
Wen Zhang

@wencolani

Asistant professor at Zhejiang University. My research interests includes knowledge graph, graph computing, and knowledge reasoning.

ID: 1059040049897951232

calendar_today04-11-2018 11:09:58

16 Tweet

36 Followers

80 Following

International Semantic Web Conference (@iswc_conf) 's Twitter Profile Photo

Join us and share your research with the community through the track that fits best for your work! Joint CF Resource Track, In-Use Track, Research Track Papers #iswc_conf #iswc_2022 Conference Website: iswc2022.semanticweb.org

Join us and share your research with the community through the track that fits best for your work!

Joint CF Resource Track, In-Use Track, Research Track Papers   #iswc_conf #iswc_2022

Conference Website: iswc2022.semanticweb.org
Jiaoyan Chen (@chenjiaoyan1) 's Twitter Profile Photo

A new survey and perspective paper on "Knowledge Graph Reasoning with Logics and Embeddings: Survey and Perspective", by Wen Zhang Jiaoyan Chen Jeff Z. Pan ChenHuajun@Zhejiang_University etc. arxiv.org/abs/2202.07412 #KnowledgeGraph #NeuralSymbolic #AI #DeepLearning #Reasoning

International Semantic Web Conference (@iswc_conf) 's Twitter Profile Photo

~2 days to submit an idea for Hybrid 21st #iswc_conf #iswc2022 Workshops & Tutorials! This could be either sharing a new technology or having great minds come together for intense scientific exchange on a specific topic in the field! Conference Website: iswc2022.semanticweb.org

~2 days to submit an idea for Hybrid 21st #iswc_conf #iswc2022 Workshops & Tutorials! This could be either sharing a new technology or having great minds come together for intense scientific exchange on a specific topic in the field!

Conference Website: iswc2022.semanticweb.org
Wen Zhang (@wencolani) 's Twitter Profile Photo

Our paper titled "Analogical Inference Enhanced Knowledge Graph Embedding" accepted by #AAAI23 is available online. In this work, we propose AnKGE, an enhanced KGE framework that enable KGEs with analogical inference capability. Check our paper ๐Ÿ‘‰arxiv.org/abs/2301.00982

Wen Zhang (@wencolani) 's Twitter Profile Photo

We developed a toolkit for diverse representation learning of knowledge graphs, called #NeuralKG. It includes diverse Conventional KGEs, GNN-based KGEs, and Rule-based KGEs. Yesterday we added a recently proposed GNN-KGE method SE-GNN. Check it on github github.com/zjukg/NeuralKG

Wen Zhang (@wencolani) 's Twitter Profile Photo

Our work "Entity-Agnostic Representation Learning for Parameter-Efficient Knowledge Graph Embedding" accepted by #AAAI23 is available online ;) arxiv.org/pdf/2302.01849โ€ฆ

Wen Zhang (@wencolani) 's Twitter Profile Photo

Do you want to know how to pre-train a knowledge graph model on a KG and apply it on other tasks supported by different KGs in a uniform way? Check our work KGTransformer accepted by #TheWebConf 2023. arxiv.org/abs/2303.03922

Wen Zhang (@wencolani) 's Twitter Profile Photo

Looking forward to meet you at #IJCAI2023 and welcome to our tutorial - the 2nd edition of K-ZSL tutorial. Check ๐Ÿ‘‡for details.

ChenHuajun@Zhejiang_University (@chenhuajun) 's Twitter Profile Photo

#IJCAI2023 our comprehensive survey paper on "Knowledge Extrapolation", the capability of handling unseen entities or new relations in KGs. "Generalizing to Unseen Elements: A Survey on Knowledge Extrapolation for Knowledge Graphs" arxiv.org/abs/2302.01859

#IJCAI2023 our comprehensive survey paper on "Knowledge Extrapolation", the capability of  handling unseen entities or new relations in KGs. 

"Generalizing to Unseen Elements: A Survey on Knowledge Extrapolation for Knowledge Graphs"
arxiv.org/abs/2302.01859
Wen Zhang (@wencolani) 's Twitter Profile Photo

We always find that some of the modal data are missing in multi-modal KGs. The missing modality information undermine the modelโ€™s performances during completion. We find generating missing modality features and a cross-modal contrastive loss helps.

Wen Zhang (@wencolani) 's Twitter Profile Photo

Please check our work that will be published at NLPCC 2023 for more discussion: MACO: A Modality Adversarial and Contrastive Framework for Modality-missing Multi-modal Knowledge Graph Completion arxiv.org/pdf/2308.06696โ€ฆ

Wen Zhang (@wencolani) 's Twitter Profile Photo

I like this work pretty much. We are trying to explore realistic settings for automatic knowledge graph completion. We also tried to use LLM for the Triple Set Prediction (TSP) task. Empirical study results show that TSP is not an easy task for LLM. See arxiv.org/pdf/2412.18443

Wen Zhang (@wencolani) 's Twitter Profile Photo

We are thinking about the possibility of synthesize instruction data for finetuning LLMs. In this #EMNLP2024 Findings work. We utilize the complex graph patterns in KGs to automatically generate plan of a question, and utilize the planning data to finetune LLMs. This works well.

Mingyang Chen (@chen_mingyang) 's Twitter Profile Photo

๐ŸŒŸIntroducing ๐—ฅ๐—ฒ๐—ฆ๐—ฒ๐—ฎ๐—ฟ๐—ฐ๐—ต: Learning to Reason with Search for LLMs via Reinforcement Learning. An open-source project that combines ๐—ฅ๐—Ÿ and ๐—ฅ๐—”๐—š for LLMs! ๐Ÿ’กLike Deepseek-R1-Zero and Deep Research, we start with pretrained models and use RL to empower them with the

Richard Sutton (@richardssutton) 's Twitter Profile Photo

David Silver really hits it out of the park in this podcast. The paper "Welcome to the Era of Experience" is here: goo.gle/3EiRKIH.

Mingyang Chen (@chen_mingyang) 's Twitter Profile Photo

๐Ÿš€ Introducing ReCall, learning to Reason with Tool Call via RL. - Multi-turn Reinforcement Learning - No need for supervised data on tool use or reasoning steps - Empowers LLMs to agentically use and combine arbitrary tools Fully open-source! A work in progress and we are

๐Ÿš€ Introducing ReCall, learning to Reason with Tool Call via RL.

- Multi-turn Reinforcement Learning
- No need for supervised data on tool use or reasoning steps
- Empowers LLMs to agentically use and combine arbitrary tools

Fully open-source! A work in progress and we are