Unmasking Transformers: A Theoretical Approach to Data Recovery via Attention Weights
In the realm of deep learning, transformers have emerged as a dominant architecture, particularly in natural language processing tasks. However, with their widespread adoption, concerns regarding the security and privacy of the data processed by these models have arisen. In this paper, we address a...
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Zusammenfassung: | In the realm of deep learning, transformers have emerged as a dominant
architecture, particularly in natural language processing tasks. However, with
their widespread adoption, concerns regarding the security and privacy of the
data processed by these models have arisen. In this paper, we address a pivotal
question: Can the data fed into transformers be recovered using their attention
weights and outputs? We introduce a theoretical framework to tackle this
problem. Specifically, we present an algorithm that aims to recover the input
data $X \in \mathbb{R}^{d \times n}$ from given attention weights $W = QK^\top
\in \mathbb{R}^{d \times d}$ and output $B \in \mathbb{R}^{n \times n}$ by
minimizing the loss function $L(X)$. This loss function captures the
discrepancy between the expected output and the actual output of the
transformer. Our findings have significant implications for the Localized
Layer-wise Mechanism (LLM), suggesting potential vulnerabilities in the model's
design from a security and privacy perspective. This work underscores the
importance of understanding and safeguarding the internal workings of
transformers to ensure the confidentiality of processed data. |
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DOI: | 10.48550/arxiv.2310.12462 |