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Main Authors: Zhang, Ruijie, Liang, Haozhe, Chang, Da, Hu, Li, Kong, Fanqi, Yin, Huaxiao, Li, Yu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.08234
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author Zhang, Ruijie
Liang, Haozhe
Chang, Da
Hu, Li
Kong, Fanqi
Yin, Huaxiao
Li, Yu
author_facet Zhang, Ruijie
Liang, Haozhe
Chang, Da
Hu, Li
Kong, Fanqi
Yin, Huaxiao
Li, Yu
contents Long-context LLM inference is bottlenecked by the memory and bandwidth cost of reading large KV caches during decoding. KV compression reduces this cost by keeping only part of the cache, but task accuracy alone does not identify why a selector succeeds or fails. A selector can fail at three steps: it may miss the evidence future decoding needs, give high scores to tokens that do not affect the output, or break related evidence when fitting scores into a small cache. We introduce a fixed-contract diagnostic that holds the selector's setup fixed and changes one decision slot at a time. For value ranking, the probe combines a block's attention mass with the estimated output change from removing it. On LongBench across three models and two budgets, the probe is positive on 72.6% of positive-margin cells and 32.4% of nonpositive-margin cells. NeedleBench M-RT at 32k and a RULER 8k check probe support closure under branched retrieval, and a 264-cell sign evaluation separates support recovery and output-value ranking from leverage effects near the boundary. The resulting order is to recover decode-side evidence, rank its output value, and preserve coupled evidence during projection.
format Preprint
id arxiv_https___arxiv_org_abs_2605_08234
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When Does Value-Aware KV Eviction Help? A Fixed-Contract Diagnostic for Non-Monotone Cache Compression
Zhang, Ruijie
Liang, Haozhe
Chang, Da
Hu, Li
Kong, Fanqi
Yin, Huaxiao
Li, Yu
Machine Learning
Artificial Intelligence
Long-context LLM inference is bottlenecked by the memory and bandwidth cost of reading large KV caches during decoding. KV compression reduces this cost by keeping only part of the cache, but task accuracy alone does not identify why a selector succeeds or fails. A selector can fail at three steps: it may miss the evidence future decoding needs, give high scores to tokens that do not affect the output, or break related evidence when fitting scores into a small cache. We introduce a fixed-contract diagnostic that holds the selector's setup fixed and changes one decision slot at a time. For value ranking, the probe combines a block's attention mass with the estimated output change from removing it. On LongBench across three models and two budgets, the probe is positive on 72.6% of positive-margin cells and 32.4% of nonpositive-margin cells. NeedleBench M-RT at 32k and a RULER 8k check probe support closure under branched retrieval, and a 264-cell sign evaluation separates support recovery and output-value ranking from leverage effects near the boundary. The resulting order is to recover decode-side evidence, rank its output value, and preserve coupled evidence during projection.
title When Does Value-Aware KV Eviction Help? A Fixed-Contract Diagnostic for Non-Monotone Cache Compression
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.08234