CLLGMay 21, 2025

Beyond Hard and Soft: Hybrid Context Compression for Balancing Local and Global Information Retention

arXiv:2505.15774v18 citationsh-index: 30Has CodeINTERSPEECH
Originality Incremental advance
AI Analysis

This addresses computational inefficiency in LLMs for long-text tasks, offering a practical solution for users needing efficient inference, though it is incremental as it builds on existing compression techniques.

The paper tackles the problem of inefficient long-sequence inference in LLMs by proposing HyCo2, a hybrid context compression method that balances local and global information retention, resulting in an average performance improvement of 13.1% across QA benchmarks and an 88.8% reduction in token usage while matching uncompressed performance.

Large Language Models (LLMs) encounter significant challenges in long-sequence inference due to computational inefficiency and redundant processing, driving interest in context compression techniques. Existing methods often rely on token importance to perform hard local compression or encode context into latent representations for soft global compression. However, the uneven distribution of textual content relevance and the diversity of demands for user instructions mean these approaches frequently lead to the loss of potentially valuable information. To address this, we propose $\textbf{Hy}$brid $\textbf{Co}$ntext $\textbf{Co}$mpression (HyCo$_2$) for LLMs, which integrates both global and local perspectives to guide context compression while retaining both the essential semantics and critical details for task completion. Specifically, we employ a hybrid adapter to refine global semantics with the global view, based on the observation that different adapters excel at different tasks. Then we incorporate a classification layer that assigns a retention probability to each context token based on the local view, determining whether it should be retained or discarded. To foster a balanced integration of global and local compression, we introduce auxiliary paraphrasing and completion pretraining before instruction tuning. This promotes a synergistic integration that emphasizes instruction-relevant information while preserving essential local details, ultimately balancing local and global information retention in context compression. Experiments show that our HyCo$_2$ method significantly enhances long-text reasoning while reducing token usage. It improves the performance of various LLM series by an average of 13.1\% across seven knowledge-intensive QA benchmarks. Moreover, HyCo$_2$ matches the performance of uncompressed methods while reducing token consumption by 88.8\%.

Code Implementations1 repo
Foundations

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

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