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Abstract
Large Language Models (LLMs) have become integral to numerous domains,
significantly advancing applications in data management, mining, and analysis.
Their profound capabilities in processing and interpreting complex language
data, however, bring to light pressing concerns regarding data privacy,
especially the risk of unintentional training data leakage. Despite the
critical nature of this issue, there has been no existing literature to offer a
comprehensive assessment of data privacy risks in LLMs. Addressing this gap,
our paper introduces LLM-PBE, a toolkit crafted specifically for the systematic
evaluation of data privacy risks in LLMs. LLM-PBE is designed to analyze
privacy across the entire lifecycle of LLMs, incorporating diverse attack and
defense strategies, and handling various data types and metrics. Through
detailed experimentation with multiple LLMs, LLM-PBE facilitates an in-depth
exploration of data privacy concerns, shedding light on influential factors
such as model size, data characteristics, and evolving temporal dimensions.
This study not only enriches the understanding of privacy issues in LLMs but
also serves as a vital resource for future research in the field. Aimed at
enhancing the breadth of knowledge in this area, the findings, resources, and
our full technical report are made available at https://llm-pbe.github.io/,
providing an open platform for academic and practical advancements in LLM
privacy assessment.