While explicit positional encodings such as RoPE are a primary source of positional information in Transformer decoders, the causal mask also provides positional information. In this work, we prove that the causal mask can induce position-dependent patterns in attention scores, even without parameters or causal dependency in the input. Our theoretical analysis indicates that the induced attention pattern tends to favor nearby query-key pairs, mirroring the behavior of common positional encodings. Empirical analysis confirms that trained models exhibit the same behavior, with learned parameters further amplifying these patterns. Notably, we found that the interaction of causal mask and RoPE distorts RoPE's relative attention score patterns into non-relative ones. We consistently observed this effect in modern large language models, suggesting the importance of considering the causal mask as a source of positional information alongside explicit positional encodings.
Behind RoPE: How Does Causal Mask Encode Positional Information?
The causal mask in Transformer decoders induces position-dependent attention patterns, which can interact with explicit positional encodings like RoPE, affecting their relative attention score patterns.
- Year
- 2025
- Venue
- arXiv 2025
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- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2509.21042ARXIV-DEFAULT
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