LGMay 11

Remember to Forget: Gated Adaptive Positional Encoding

arXiv:2605.1041458.0
Predicted impact top 40% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For LLM practitioners, GAPE provides a drop-in augmentation that improves long-context retrieval without sacrificing local positional resolution.

GAPE introduces a content-aware bias into attention logits to fix out-of-distribution rotary phases in long sequences, achieving sharper attention and improved long-context robustness over rotary baselines.

Rotary Positional Encoding (RoPE) is widely used in modern large language models. However, when sequences are extended beyond the range seen during training, rotary phases can enter out-of-distribution regimes, leading to spurious long-range alignments, diffuse attention, and degraded retrieval. Existing remedies only partially address these failures, as they often trade local positional resolution for long-context stability. We propose GAPE (Gated Adaptive Positional Encoding), a drop-in augmentation for positional encodings that introduces a content-aware bias directly into the attention logits while preserving the rotary geometry. GAPE decouples distance-based suppression from token importance through a query-dependent gate that contracts irrelevant context and a key-dependent gate that preserves salient distant tokens. We prove that protected tokens remain accessible, while the attention mass assigned to unprotected distant tokens decays as a function of the query gate. We further show that GAPE can be implemented within standard scaled dot-product attention. We validate these properties empirically, finding that GAPE consistently yields sharper attention and improved long-context robustness over rotary baselines across both synthetic retrieval and long-context benchmarks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes