Liwei (Levi) Che

liwei-profile.jpeg

Rutgers University

Piscataway, NJ, USA

I am Liwei Che, a PhD candidate in Computer Science at Rutgers University, advised by Prof. Vladimir Pavlovic.

My current research focuses on improving the general-purpose capabilities and safety of LLMs / MLLMs. I am especially interested in hallucination mitigation, visual reasoning, mechanistic understanding of multimodal models, and post-training techniques including RL and SFT.

Before Rutgers, I completed my M.S. in Informatics at Penn State and my B.Eng. in Electronic Information Engineering at UESTC. I have also interned as an Applied Scientist II at Amazon, where I worked on large-scale retrieval models and customer representation learning.

This homepage is designed to help both recruiters and academic peers quickly understand my research profile, selected publications, recent experience, and technical background.

News

Jan 2026 I received the Rutgers DCS PhD Fellowship.
Sep 2025 I was awarded an ICCV travel grant.
Aug 2025 I was selected for the ICCV Doctoral Consortium.
Jun 2025 One paper was accepted by ICCV 2025 on LVLM object hallucination detection and mitigation.
May 2025 Started my internship at Amazon Ads as an Applied Scientist II, working on generative retrieval models.
May 2024 One paper was accepted by ECML PKDD on distributed learning with multimodal foundation models.
May 2024 Started my internship at Amazon as an Applied Scientist II, working on MLLM for embedding-based retrieval.

Selected Work

2026

  1. arXiv
    Counting Circuits: Mechanistic Interpretability of Visual Reasoning in Large Vision-Language Models
    Liwei Che, Zhiyu Xue, Yihao Quan, and 7 more authors
    2026
    under review

2025

  1. ICCV
    Hallucinatory Image Tokens: A Training-free EAZY Approach to Detecting and Mitigating Object Hallucinations in LVLMs
    Liwei Che, Tony Qingze Liu, Jing Jia, and 3 more authors
    2025
    ICCV 2025

2024

  1. ECML-PKDD
    Leveraging Foundation Models for Multi-modal Federated Learning with Incomplete Modality
    Liwei Che, Jiaqi Wang, Xinyue Liu, and 1 more author
    In ECML PKDD, 2024

2023

  1. NeurIPS
    Towards Personalized Federated Learning via Heterogeneous Model Reassembly
    Jiaqi Wang, Xingyi Yang, Suhan Cui, and 4 more authors
    2023
  2. Sensors
    Multimodal Federated Learning: A Survey
    Liwei Che, Jiaqi Wang, Yao Zhou, and 1 more author
    Sensors, 2023
  3. IEEE TSMC
    FedStream: Prototype-Based Federated Learning on Distributed Concept-Drifting Data Streams
    Cobbinah B. Mawuli, Liwei Che, Jay Kumar, and 4 more authors
    IEEE Transactions on Systems, Man, and Cybernetics: Systems, 2023

2021

  1. IEEE BigData
    FedTriNet: A Pseudo Labeling Method with Three Players for Federated Semi-supervised Learning
    Liwei Che, Zewei Long, Jiaqi Wang, and 3 more authors
    In 2021 IEEE International Conference on Big Data (Big Data), 2021