Aman Mishra
2024-12-03 11:30:00
gbhackers.com
Federated Parameter-Efficient Fine-Tuning (FedPEFT) is a technique that combines parameter-efficient fine-tuning (PEFT) with federated learning (FL) to improve the efficiency and privacy of training large language models (PLMs) on specific tasks.
However, this approach introduces a new security risk called “PEFT-as-an-Attack” (PaaA), where malicious actors can exploit PEFT to bypass the safety alignment of PLMs and generate harmful content.
Researchers studied the effectiveness of PaaA against different PEFT methods and investigated potential defenses like Robust Aggregation Schemes (RASs) and Post-PEFT Safety Alignment (PPSA).
In particular, when dealing with a wide variety of data distributions, they discovered that RASs are not very effective against PaaA.
While PPSA can mitigate PaaA, it significantly reduces the model’s accuracy, which highlights the need for new defense mechanisms that can balance security and performance in FedPEFT systems.
It introduces a FedPEFT system for instruction tuning of PLMs using decentralized, domain-specific datasets, as the system faces the risk of PaaA, where malicious clients inject toxic training data to compromise the PLM’s safety guardrails.
To address this, potential defense mechanisms include robust aggregation schemes (RASs) to mitigate the impact of malicious updates and post-PEFT safety alignment (PPSA) to restore the model’s adherence to safety constraints.
It conducts experiments using four PLMs and three PEFT methods on two domain-specific QA datasets, where malicious clients inject harmful data to compromise model safety.
The experiments assess the impact of malicious clients on model safety and utility, measuring attack success rate and task accuracy by utilizing the Blades benchmark suite to simulate the FedPEFT system and employs the Hugging Face ecosystem for training and evaluation.
The paper experimentally evaluated the effectiveness of FedPEFT methods in adapting PLMs for medical question answering, while LoRA consistently outperformed other methods in terms of accuracy but was also more vulnerable to PaA.
RASs were found to be ineffective in defending against PaA, especially in non-IID settings. PPSA effectively mitigated the impact of PaA but at the cost of reduced performance in downstream tasks, which highlights the need for further research to develop robust and efficient defense mechanisms against PaA in FedPEFT.
It introduces a new security threat to FedPEFT known as PaaA, as this attack leverages PEFT methods to bypass safety alignment and generate harmful content in response to malicious prompts.
The evaluation demonstrates that existing defenses, such as RASs and PPSA, have limitations when it comes to mitigating the effects of PaaA.
To mitigate this, it suggests future research directions, including developing advanced PPSA techniques and integrating safety alignment directly into the fine-tuning process to dynamically address emerging vulnerabilities while maintaining model performance.
Leveraging 2024 MITRE ATT&CK Results for SME & MSP Cybersecurity Leaders – Attend Free Webinar
Keep your files stored safely and securely with the SanDisk 2TB Extreme Portable SSD. With over 69,505 ratings and an impressive 4.6 out of 5 stars, this product has been purchased over 8K+ times in the past month. At only $129.99, this Amazon’s Choice product is a must-have for secure file storage.
Help keep private content private with the included password protection featuring 256-bit AES hardware encryption. Order now for just $129.99 on Amazon!
Support Techcratic
If you find value in Techcratic’s insights and articles, consider supporting us with Bitcoin. Your support helps me, as a solo operator, continue delivering high-quality content while managing all the technical aspects, from server maintenance to blog writing, future updates, and improvements. Support Innovation! Thank you.
Bitcoin Address:
bc1qlszw7elx2qahjwvaryh0tkgg8y68enw30gpvge
Please verify this address before sending funds.
Bitcoin QR Code
Simply scan the QR code below to support Techcratic.
Please read the Privacy and Security Disclaimer on how Techcratic handles your support.
Disclaimer: As an Amazon Associate, Techcratic may earn from qualifying purchases.