Introduces a benchmark for mechanistic analysis of temporal failures in LALMs and shows attention scaling at bottleneck layers improves accuracy from 55.9% to 59.1%.
A Closer Look at Failure Modes in Temporal Understanding of Large Audio-Language Models
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abstract
Large Audio Language Models (LALMs) achieve strong performance on a variety of audio understanding tasks but continue to struggle with temporal reasoning, a fundamental capability central to human auditory perception. Understanding the causes of these failures remains challenging as existing benchmarks report performance gaps without probing underlying mechanisms. To address this, we introduce a benchmark with 1,657 questions across three foundational tasks designed specifically for mechanistic analysis. Examining model outputs across varying input settings (behavioral analysis) reveals that models often under-utilize audio when textual cues are available. We also provide the first causal mechanistic analysis of temporal reasoning failures in LALMs. Comparing attention upweighting against scaling, we find that redistributing attention across audio tokens is more effective than increasing audio attention. Targeting task-relevant tokens yields further gains. These findings suggest that modality imbalance alone cannot explain failures. Attention scaling at bottleneck layers improves accuracy from 55.9% to 59.1% without fine-tuning, demonstrating a promising direction for future work.
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cs.SD 1years
2026 1verdicts
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A Closer Look at Failure Modes in Temporal Understanding of Large Audio-Language Models
Introduces a benchmark for mechanistic analysis of temporal failures in LALMs and shows attention scaling at bottleneck layers improves accuracy from 55.9% to 59.1%.