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bboylyg/README.md

Hi there, I am Yige Li👋

I am a research fellow at the School of Computing and Information Systems at Singapore Management University supervised by Prof. Jun Sun. I also work closely with the Prof. Xingjun Ma at Fudan university. I have completed my Ph.D. degree at Xidian University supervised by Prof. Xixiang Lyu. Research publications in Google Scholar.

🔭 My research mainly focus on:

  • Understanding the effectiveness of backdoor attacks
  • Robust training against backdoor attacks
  • Design and implement a general defense framework for backdoor attacks

🌱 Publications:

  • Yige Li, Xingjun Ma, et al., “Multi-Trigger Backdoor Attacks: More Triggers, More Threats”, submitting, 2024.
  • Yige Li, Xixiang Lyu, et al., “Reconstructive Neuron Pruning for Backdoor Defense”, ICML 2023.
  • Yige Li, Xixiang Lyu, et al., “Anti-Backdoor Learning: Training Clean Models on Poisoned Data”, NeurIPS 2021.
  • Yige Li, Xixiang Lyu, et al., “Neural Attention Distillation: Erasing Backdoor Triggers from Deep Neural Networks”, ICLR 2021.

⚡ Significance of our works:

  • Neural Attention Distillation (NAD)

    • A simple and universal method against 6 state-of-the-art backdoor attacks via knowledge distillation
    • Only a small amount of clean data is required (5%)
    • Only a few epochs of fine-tuning (2-10 epochs) are required
  • Anti-Backdoor Learning (ABL)

    • Simple, effective, and universal, can defend against 10 state-of-the-art backdoor attacks
    • 1% isolation data is required
    • A novel stratrgy benefit companies, research institutes, or government agencies to train backdoor-free machine learning models

📫 How to reach me:

Pinned Loading

  1. BackdoorLLM BackdoorLLM Public

    BackdoorLLM: A Comprehensive Benchmark for Backdoor Attacks on Large Language Models

    Python 78 5

  2. NAD NAD Public

    This is an implementation demo of the ICLR 2021 paper [Neural Attention Distillation: Erasing Backdoor Triggers from Deep Neural Networks](https://openreview.net/pdf?id=9l0K4OM-oXE) in PyTorch.

    Python 118 13

  3. ABL ABL Public

    Anti-Backdoor learning (NeurIPS 2021)

    Python 78 10

  4. RNP RNP Public

    Reconstructive Neuron Pruning for Backdoor Defense (ICML 2023)

    Python 28 3

  5. Expose-Before-You-Defend Expose-Before-You-Defend Public

    Expose Before You Defend: Unifying and Enhancing Backdoor Defenses via Exposed Models

    Python 3

  6. Multi-Trigger-Backdoor-Attacks Multi-Trigger-Backdoor-Attacks Public

    Shortcuts Everywhere and Nowhere: Exploring Multi-Trigger Backdoor Attacks

    Python 1 1