Biography
FIB-Lab, Department of Electronic Engineering, Tsinghua University
(Incoming Research Assistant Professor in BNRist, Tsinghua University)
Email: chgao96[at]gmail[dot]com
Chen Gao is now a Postdoctoral Researcher at FIB-Lab in the Department of E.E., Tsinghua University. He obtained his Ph.D. Degree (advised by Prof. Yong Li and Prof. Depeng Jin) and Bachelor's Degree from the same department in 2021 and 2016, respectively. His research primarily focuses on data mining and information retrieval, with over 50 papers in top-tier venues (40+ CCF-A), including SIGIR, WWW, KDD, TKDE, TOIS, ICDE, ICLR, NeurIPS, MM, UbiComp, CSCW, NDSS, etc. His work on GNN-based bundle recommendation received the Best Short Paper Honorable Mention Award in SIGIR 2020. He serves as the PC member for conferences such as WWW, KDD, SIGIR, WSDM, CIKM, NeurIPS, ICLR, ICML, MM, RecSys, AAAI, IJCAI, AISTATS, ECML-PKDD, etc., and the regular reviewer for journals including IEEE TKDE, ACM TOIS, IEEE TNNLS, etc. He was a visiting research scholar (advised by Prof. Tat-Seng Chua) at NExT Center of National University of Singapore in 2018. He was selected as one of Top 100 Chinese Rising Stars in Artificial Intelligence by Baidu Scholar in 2021. He was also at the finalist of 2021 China Computer Federation (CCF) Outstanding Doctoral Dissertation Award.
Advertisements (long-term effective): We are seeking self-motivated interns (SRTs) to conduct research with us remotely or at Tsinghua (we will cover your rental expense). Feel free to contact me via email if you are interested.
Survey
Causal Inference in Recommender Systems: A Survey and Future Directions [Up-to-date version on arXiv]
A Survey of Graph Neural Networks for Recommender Systems: Challenges, Methods, and Directions, ACM Transactions on Recommender Systems (TORS), 2022. [Preprint camera-ready version on arXiv]
Tutorial
(*corresponding author)
In the year of 2023:
Towards the Understanding and Modeling of Passive-Negative Feedback in Sequential Short-video Recommendation. Y. Pan, Chen Gao*, Y. Song, K. Gai, D. Jin, and Y. Li. (RecSys'23)
Efficient and Joint Hyperparameter and Architecture Search for Collaborative Filtering. Y. Wen, Chen Gao*, L. Yi, L. Qiu, Y. Wang, and Y. Li. (KDD'23)
NEON: Living Needs Prediction System in Meituan. X. Lan, Chen Gao*, W. Shi, X. Chen, Y. Che, H. Zhang, H. Wei, H. Luo, and Y. Li. (KDD'23)
Detecting Vulnerable Nodes in Urban Infrastructure Interdependent Network. J. Mao, L. Cao, Chen Gao*, H. Wang, H. Fan, D. Jin, and Y. Li. (KDD'23)
Learning Fine-grained User Interests for Micro-video Recommendation. Y. Shang, Chen Gao, J. Chen, D. Jin, Y. Li and M. Wang. (SIGIR'23)
Uncertainty-aware Consistency Learning for Cold-Start Item Recommendation. T. Liu, Chen Gao*, Z. Wang, D. Li, J. Hao, D. Jin and Y. Li. (SIGIR'23, short)
Learning from Hierarchical Structure of Knowledge Graph for Recommendation. Y. Qin, Chen Gao*, S. Wei, Y. Wang, D. Jin, J. Yuan, L. Zhang, D. Li, J. Hao, and Y.Li. (TOIS'23)
Cascading Residual Graph Convolutional Network for Multi-Behavior Recommendation. M. Yan, Z. Cheng, Chen Gao, J. Sun, F. Liu, F. Sun, H. Li. (TOIS'23)
Dual-interest Factorization-heads Attention for Sequential Recommendation. G. Lin, Chen Gao*, Y. Zheng, J. Chang, Y. Niu, Y. Song, Z. Li, D. Jin, and Y. Li. (TheWebConf/WWW'23)
Breaking Filter Bubble: A Reinforcement Learning Framework of Controllable Recommender System. Y. Dong, Z. Li, Chen Gao*, Y. Zhao, D. Li, J. Hao, Z. Wang, K. Zhang, and Y. Li. (TheWebConf/WWW'23)
Robust Preference-Guided Denoising for Graph-based Social Recommendation. Y. Quan, J. Ding, Chen Gao, L. Yi, D. Jin, and Y. Li. (TheWebConf/WWW'23)
In the year of 2022:
Disentangling Geographical Effect for Point-of-Interest Recommendation. Y. Qin, Chen Gao*, Y. Wang, S. Wei, D. Jin, J. Yuan and L. Zhang. (TKDE'22)
Spatiotemporal-aware Session-based Recommendation with Graph Neural Networks. Y. Li, Chen Gao*, X. Du, H. Wei, H. Luo, D. Jin, and Y. Li. (CIKM'22)
An Exploratory Study of Information Cocoon on Short-form Video Platform. N. Li, Chen Gao*, J Piao, X Huang, A Yue, L Zhou, Q Liao, and Y Li. (CIKM'22, short)
DVR: Micro-Video Recommendation Optimizing Watch-Time-Gain under Duration Bias. Y. Zheng, Chen Gao*, J. Ding, L. Yi, D. Jin, Y. Li, and M. Wang. (ACM MM'22, oral)
Automatically Discovering User Consumption Intents in Meituan. Y. Li, Chen Gao*, X. Du, H. Wei, H. Luo, D. Jin, and Y. Li. (KDD'22)
Modeling Persuasion Factor of User Decision for Recommendation. C. Liu, Chen Gao*, Y. Yuan, C. Bai, L. Luo, X. Du, H. Luo, D. Jin, and Y. Li. (KDD'22)
Disentangled Modeling of Social Homophily and Influence for Social Recommendation. N. Li, Chen Gao*, D. Jin and Q. Liao. (TKDE'22)
Dual Contrastive Network for Sequential Recommendation. G. Lin, Chen Gao*, Y. Li, Y. Zheng, Z. Li, D. Jin and Y. Li. (SIGIR'22, short)
Enhancing Hypergraph Neural Networks with Intent Disentanglement for Session-based Recommendation. Y. Li, Chen Gao*, H. Luo, D. Jin and Y. Li (SIGIR'22, short)
DisenHCN: Disentangled Hypergraph Convolutional Networks for Spatiotemporal Activity Prediction. Y. Li, Chen Gao*, Q. Yao, T. Li, D. Jin and Y. Li. (ICDE'22)
Inhomogeneous Social Recommendation with Hypergraph Convolutional Networks. Z. Zhu, Chen Gao, X. Chen, N. Li, D. Jin and Y. Li. (ICDE'22)
Disentangling Long and Short-Term Interests for Recommendation. Y. Zheng, Chen Gao*, J. Chang, Y. Niu, Y. Song, D. Jin and Y. Li. (TheWebConf/WWW'22)
Practitioners Versus Users: A Value-Sensitive Evaluation of Current Industrial Recommender System Design. Z. Chen, J. Piao, X. Lan, H. Cao, Chen Gao, Z. Lu and Y. Li. (CSCW'22)
In the year of 2021:
Progressive Feature Interaction Search for Deep Sparse Network. Chen Gao, Y. Li, Q. Yao, D. Jin and Y. Li. (NeurIPS'21)
Bundle Recommendation and Generation with Graph Neural Networks . J. Chang, Chen Gao*, X. He, D. Jin and Y. Li. (TKDE'21)
Cross-platform Item Recommendation for Online Social E-Commerce. Chen Gao, TH. Lin, N. Li, D. Jin and Y. Li. (TKDE'21)
Incorporating Price into Recommendation with Graph Convolutional Networks. Y. Zheng, Chen Gao, X. He, D. Jin and Y. Li. (TKDE'21)
Bringing Friends into the Loop of Recommender Systems: An Exploratory Study. J. Piao, G. Zhang, F. Xu, Z. Chen, Y. Zheng, Chen Gao and Y. Li. (CSCW'21)
Efficient Data-specific Model Search for Collaborative Filtering. Chen Gao, Q. Yao, D. Jin and Y. Li. (KDD'21)
User Consumption Intention Prediction in Meituan. Y. Ping, Chen Gao, T. Liu, X. Du, H. Luo, D. Jin and Y. Li. (KDD'21)
Sequential Recommendation with Graph Neural Networks. J. Chang, Chen Gao, Y. Zheng, Y. Hui, Y. Niu, Y. Song, D. Jin and Y. Li. (SIGIR'21)
Cross-domain Recommendation with Bridge-Item Embeddings. Chen Gao, Y. Li, F. Feng, X. Chen, K. Zhao, X. He and D. Jin. (TKDD'21)
Learnable Embedding Sizes for Recommender Systems. S. Liu, Chen Gao*, Y. Chen, D. Jin and Y. Li. (ICLR'21)
Group-Buying Recommendation for Social E-Commerce. J. Zhang, Chen Gao*, D. Jin and Y. Li. (ICDE'21)
Disentangling User Interest and Conformity for Recommendation with Causal Embedding. Y. Zheng, Chen Gao, X. Li, X. He, D. Jin and Y. Li. (TheWebConf/WWW'21)
DGCN: Diversified Recommendation with Graph Convolutional Networks. Y. Zheng, Chen Gao, L. Chen, D. Jin and Y. Li. (TheWebConf/WWW'21)
In the year of 2020:
Differentially Private Local Collaborative Filtering. Chen Gao, C. Huang, D. Lin, D. Jin and Y. Li. (SIGIR'20)
Multi-behavior Recommendation with Graph Convolutional Networks. B. Jin, Chen Gao, X. He, D. Jin and Y. Li. (SIGIR'20)
Item Recommendation for Word-of-Mouth Scenario in Social E-Commerce. Chen Gao, C. Huang, D. Yu, TH. Lin, H. Fu, D. Jin and Y. Li. (TKDE'20)
Social Recommendation with Characteristic Regularization. Chen Gao, N. Li, TH. Lin, D. Lin, J. Zhang, Y. Li and D. Jin. (TKDE'20)
Bundle Recommendation with Graph Convolutional Networks. J. Chang, Chen Gao, X. He, D. Jin and Y. Li.(SIGIR'20, Best Short Paper Honorable Mention Award)
Price-aware Recommendation with Graph Convolutional Networks. Y. Zheng, Chen Gao, X. He, Y. Li and D. Jin. (ICDE'20)
Revealing Physical World Privacy Leakage by Cyberspace Cookie Logs . H. Wang, Chen Gao, Y. Li, ZL. Zhang and D. Jin. (TNSM'20)
In the year of 2019:
Learning to Recommend with Multiple Cascading Behaviors. Chen Gao, X. He, D. Gan, X. Chen, F. Feng, Y. Li, TS. Chua and D. Jin. (TKDE'19)
Cross-domain Recommendation without Sharing User-relevant Data. Chen Gao, X. Chen, F. Feng, K. Zhao, X. He, Y. Li and D. Jin. (TheWebConf/WWW'19)
Privacy-preserving Cross-domain Location Recommendation. Chen Gao, C. Huang, Y. Yu, H. Wang, Y. Li and D. Jin. (IMWUT/UbiComp'19)
Neural Multi-Task Recommendation from Multi-Behavior Data. Chen Gao, X. He, D. Gan, X. Chen, F. Feng, Y. Li, TS. Chua and D. Jin. (ICDE'19, short)
CROSS: Cross-platform Recommendation for Social E-Commerce. TH. Lin, Chen Gao and Y. Li. (SIGIR'19)
λOpt: Learn to Regularize Recommender Models in Finer Levels. Y. Chen, B. Chen, X. He, Chen Gao, Y. Li, JG. Lou and Y. Wang. (KDD'19)
DeepAPF: Deep Attentive Probabilistic Factorization for Multi-site Video Recommendation. H. Yan, X.. Chen, Chen Gao, Y. Li and D. Jin. (IJCAI'19)
Anonymization and De-anonymization of Mobility Trajectories: Dissecting the Gaps between Theory and Practice. H. Wang, Y. Li, Chen Gao, G. Wang, X. Tao and D. Jin. (TMC'19)
Before 2019:
Recommender Systems with Characteristic Social Regularization. TH. Lin, Chen Gao and Y. Li. (CIKM'18, short)
De-anonymization of Mobility Trajectories: Dissecting the Gaps between Theory and Practice. H. Wang, Chen Gao, Y. Li, G. Wang, D. Jin and J. Sun. (NDSS'18)
From Fingerprint to Footprint: Revealing Physical World Privacy Leakage by Cyberspace Cookie Logs. H. Wang, Chen Gao, Y. Li, ZL. Zhang and D. Jin. (CIKM'17)
What's New
Jun. 21, 2023
[New!] One paper about short-video recommendation is accepted by RecSys 2023.
May. 30, 2023
I am invited to be a Program Committee (PC) Member of CIKM 2023.
May. 17, 2023
Three papers on recommendation, urban vulnerability, living demands prediction are accepted by KDD 2023.
Apr. 25, 2023
I am invited to be a Program Committee (PC) Member of ACMMM 2023.
Apr. 14, 2023
One paper on knowledge graph-based recommendation is accepted by ACM TOIS.
Apr. 5, 2023
One full paper and one short paper on micro-video recommendation and cold-start recommendation are accepted by SIGIR 2023.
Mar. 10, 2023
One paper on multi-behavior recommendation is accepted by ACM TOIS.
Mar. 3, 2023
I am invited to be a Program Committee (PC) Member of RecSys 2023.
Jan. 25, 2023
Three papers on controllable recommender system, sequential recommendation and social recommendation are accepted by TheWebConf 2023.
Dec. 23, 2022
I am invited to be a Program Committee (PC) Member of SIGIR 2023.
Oct. 30, 2022
One paper on disentangling geographical effect for point-of-interest recommendation is accepted by IEEE TKDE.
Sep. 19, 2022
I am invited to be a Program Committee (PC) Member of AISTATS 2023.
Aug. 29, 2022
We have released a survey on causal inference for recommender systems.
Aug. 25, 2022
Our survey paper about graph neural network-based recommender systems is accepted by ACM Transactions on Recommender Systems.
Aug. 2, 2022
One full research paper and one short research paper are accepted by CIKM 2022.
Jun. 30, 2022
One paper on short-video recommendation is accepted by ACM Multimedia 2022.
May. 19, 2022
Two papers on user intention discovery and user decision-factor are accepted by KDD 2022.
May. 17, 2022
One paper on disentangling social conformity and social influence for recommendation is accepted by IEEE TKDE.
Apr. 1, 2022
Two short papers on sequential recommendation and session-based recommendation are accepted by SIGIR 2022.
Feb. 25, 2022
We hosted the tutorial on "Graph Neural Networks for Recommender System" (Website | Slides) in WSDM 2022.
Dec. 30, 2021
I am invited to be a Program Committee (PC) Member of KDD 2022 and ICML 2022.
Nov. 8, 2021
I am invited to give a talk about the GNN-RecSys survey in the Departmental Seminars (COMP 6911 & COMP 6912) Fall 2021 of the Dept. of ECE, HKUST.
Oct. 28, 2021
Our tutorial proposal of "Graph Neural Networks for Recommender System" is accepted by WSDM 2022.
Sep. 27, 2021
We have released a survey entitled "Graph Neural Networks for Recommender Systems: Challenges, Methods, and Directions" at arXiv.
Aug. 1, 2021
I am invited to be a Program Committee (PC) Member of TheWebConf 2022, ICLR 2022, WSDM 2022, AAAI 2022, and IJCAI 2022.
Apr. 17, 2021
I am invited to be a Program Committee (PC) Member of NeurIPS 2021.
Mar. 17, 2021
I am invited to be a Program Committee (PC) Member of ECML-PKDD 2021.
Professional Services
Conference Program Committee Member (PC Member):
TheWebConf/WWW (The Web Conference): 2021, 2022, 2023
SIGIR (ACM SIGIR Conference on Research and Development in Information Retrieval): 2023
KDD (SIGKDD Conference on Knowledge Discovery and Data Mining): 2022, 2023
RecSys (ACM Conference on Recommender Systems): 2023
MM (ACM International Conference on Multimedia): 2023
WSDM (International Conference on Web Search and Data Mining): 2022, 2023, 2024
NeurIPS (Conference on Neural Information Processing Systems): 2021, 2022, 2023
ICLR (International Conference on Learning Representations): 2022, 2023
AISTATS (International Conference on Artificial Intelligence and Statistics): 2023
CIKM (Conference on Information and Knowledge Management): 2023
AAAI (AAAI Conference on Artificial Intelligence): 2021, 2022, 2023, 2024
IJCAI (International Joint Conference on Artificial Intelligence): 2021, 2022, 2023
ICML (International Conference on Machine Learning): 2022
ECML-PKDD (European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases): 2020, 2021, 2022,2023
Journal Reviewer:
IEEE TKDE (Transactions on Knowledge and Data Engineering)
ACM TOIS (Transactions on Information Systems)
IEEE TNNLS (Transactions on Neural Networks and Learning Systems)
IEEE TMM (Transactions on Multimedia)
Awards
Finalist of China Computer Federation (CCF) Outstanding Doctoral Dissertation Award, 2021
Tsinghua University Outstanding Doctoral Dissertation Award, 2021
Top 100 Chinese Rising Stars in Artificial Intelligence, selected by Baidu Scholar, 2021
SIGIR 2020 Best Short Paper Honorable Mention Award, 2020