Award Abstract # 2153326
CRII:III:Towards Advanced Filtering and Pooling Operations for Graph Neural Networks

NSF Org: IIS
Division of Information & Intelligent Systems
Recipient: NEW JERSEY INSTITUTE OF TECHNOLOGY
Initial Amendment Date: February 8, 2022
Latest Amendment Date: February 8, 2022
Award Number: 2153326
Award Instrument: Standard Grant
Program Manager: Hector Munoz-Avila
IIS
 Division of Information & Intelligent Systems
CSE
 Directorate for Computer and Information Science and Engineering
Start Date: July 1, 2022
End Date: December 31, 2023 (Estimated)
Total Intended Award Amount: $175,000.00
Total Awarded Amount to Date: $175,000.00
Funds Obligated to Date: FY 2022 = $44,845.00
History of Investigator:
  • Yao Ma (Principal Investigator)
    may13@rpi.edu
Recipient Sponsored Research Office: New Jersey Institute of Technology
323 DR MARTIN LUTHER KING JR BLVD
NEWARK
NJ  US  07102-1824
(973)596-5275
Sponsor Congressional District: 10
Primary Place of Performance: New Jersey Institute of Technology
University Heights
Newark
NJ  US  07102-1982
Primary Place of Performance
Congressional District:
10
Unique Entity Identifier (UEI): SGBMHQ7VXNH5
Parent UEI:
NSF Program(s): Info Integration & Informatics
Primary Program Source: 010V2122DB R&RA ARP Act DEFC V
Program Reference Code(s): 102Z, 7364, 8228
Program Element Code(s): 736400
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.070

ABSTRACT

This award is funded in whole or in part under the American Rescue Plan Act of 2021 (Public Law 117-2).

In recent years, we have witnessed a rapid growth in our ability to generate and gather data from numerous platforms in the online world and various sensors in the physical world. Graphs provide a universal representation for a variety of data including online social networks, knowledge graphs, transportation networks, and chemical compounds. Entities can usually be represented as nodes while their relations can be denoted represented as edges. Many important real-world applications on these data can be treated as computational tasks on graphs. A crucial step to facilitate these tasks is to learn good vector representations either for nodes or graphs. Recently, graph neural networks, which generalize deep learning techniques to graphs, have been widely adopted to learning representations for graphs. Though graph neural networks have advanced numerous real-world applications from various fields, they still suffer from many limitations in terms of efficacy and efficiency. This project aims to address these limitations by conducting theoretical analysis and developing innovative algorithms. This project is specifically motivated by applications to computational social science, computational biology, and fraud detection in e-commerce. Furthermore, this project will involve graduate and undergraduate students in pursuing their theses or honor projects. Discoveries and research findings of this project will be tightly integrated into several current and new courses at the New Jersey Institute of Technology.

The technical aims of the project are divided into two tasks corresponding to the two major building components of graph neural networks: graph filtering operations and graph pooling operations. The graph filtering operation aims to refine node representations for all nodes in a graph. On the other hand, the graph pooling operation aims to summarize node representations to obtain a graph representation. The first task aims to investigate graph filtering operations under heterophily?a setting typically poses great challenges for graph filtering operations. In particular, the investigator will conduct theoretical analyses on graph filtering operations to gain deeper insights into their intrinsic mechanism, especially under the scenario of heterophily. Then, based on these understandings, more advanced graph neural networks models will be proposed to handle heterophilous graphs. The second task aims to develop more efficient and effective graph pooling operations. The investigators will explore and develop graph pooling operations based on clustering and down-sampling process. To improve the efficacy and efficiency of the graph pooling operations, the clustering/down-sampling process will be nicely incorporated into the entire learning framework in an end-to-end way.

This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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Fan, Wenqi and Zhao, Xiangyu and Li, Qing and Derr, Tyler and Ma, Yao and Liu, Hui and Wang, Jianping and Tang, Jiliang "Adversarial Attacks for Black-Box Recommender Systems Via Copying Transferable Cross-Domain User Profiles" IEEE Transactions on Knowledge and Data Engineering , 2023 https://doi.org/10.1109/TKDE.2023.3272652 Citation Details
Li, Juanhui and Shomer, Harry and Ding, Jiayuan and Wang, Yiqi and Ma, Yao and Shah, Neil and Tang, Jiliang and Yin, Dawei "Are Message Passing Neural Networks Really Helpful for Knowledge Graph Completion?" The 61st Annual Meeting of the Association for Computational Linguistics , 2023 Citation Details
Li, Juanhui and Zeng, Wei and Cheng, Suqi and Ma, Yao and Tang, Jiliang and Wang, Shuaiqiang and Yin, Dawei "Graph Enhanced BERT for Query Understanding" International ACM SIGIR Conference on Research and Development in Information Retrieval , 2023 Citation Details

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