ATLAS:全方位多尺度长上下文能力测试 / ATLAS: All-round Testing of Long-context Abilities across Scales
1️⃣ 一句话总结
本文提出了ATLAS基准框架,通过分层能力分类、长度相关的AUC评分和综合ATLAScore指标,系统性地评估长上下文语言模型在不同长度和任务类型下的真实性能,揭示了现有评测中常见的性能崩溃与能力迁移不足问题,并发现模型排名会随评测长度范围显著变化。
Long-context language models now advertise context windows up to millions of tokens, yet evaluations typically report a single length or a narrow task family, masking two failure modes: performance can collapse as length grows, and strong retrieval need not transfer to downstream use. We present ATLAS, a benchmarking framework that redefines long-context evaluation as length-dependent capability profiling. ATLAS contributes three methodological principles:(i) a layered taxonomy separating foundational operations from application workloads so failures can be attributed, (ii) length-aware AUC scoring that integrates score-length curves over a fixed 8K-1M grid, replacing single-point metrics with full degradation profiles, and (iii) ATLAScore, a harmonic-mean aggregate over taxonomy categories that penalizes imbalanced profiles, with end-to-end uncertainty propagation from subset scores through the nonlinear final aggregate. We instantiate the framework across eight capability dimensions with nine auditable components and 6,438 instances, and evaluate 26 models. Gemini-3.1-Pro-Preview leads at 128K, Claude-Opus-4.6 leads at 1M. Rankings reshuffle substantially between ATLASscore@8K-128K and ATLASscore@8K-1M: 7 models move by at least two ranks, and the two taxonomy layers share only 61% of cross-model variance, with individual rank gaps up to 12 positions. These results support reporting long-context quality by capability and length, not by a single headline score.
ATLAS:全方位多尺度长上下文能力测试 / ATLAS: All-round Testing of Long-context Abilities across Scales
本文提出了ATLAS基准框架,通过分层能力分类、长度相关的AUC评分和综合ATLAScore指标,系统性地评估长上下文语言模型在不同长度和任务类型下的真实性能,揭示了现有评测中常见的性能崩溃与能力迁移不足问题,并发现模型排名会随评测长度范围显著变化。
源自 arXiv: 2605.28079