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Main Authors: Li, Yanda, Liu, Yuhan, Song, Zirui, Wei, Yunchao, Takáč, Martin, Lahlou, Salem
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.15383
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author Li, Yanda
Liu, Yuhan
Song, Zirui
Wei, Yunchao
Takáč, Martin
Lahlou, Salem
author_facet Li, Yanda
Liu, Yuhan
Song, Zirui
Wei, Yunchao
Takáč, Martin
Lahlou, Salem
contents Large audio-language models (LALMs) generalize across speech, sound, and music, but unified decoders can exhibit a \emph{temporal smoothing bias}: transient acoustic cues may be underutilized in favor of temporally smooth context that is better supported by language priors, leading to less specific audio-grounded outputs. We propose \emph{Temporal Contrastive Decoding} (TCD), a training-free decoding method for unified LALMs that mitigates this effect at inference time. TCD constructs a temporally blurred slow-path view by smoothing the input waveform and re-encoding it, then contrasts next-token logits from the original and slow-path views. The contrastive signal is applied as a token-level logit update restricted to a small candidate set. A self-normalized stability score sets the blur window and update scale, and a step-wise gate based on uncertainty and audio reliance activates the update only when needed. Experiments on MMAU and AIR-Bench show consistent improvements on strong unified LALMs. We further conduct ablations and an architectural applicability study to analyze the contributions of key components and how TCD behaves across large audio-language model designs.
format Preprint
id arxiv_https___arxiv_org_abs_2604_15383
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Temporal Contrastive Decoding: A Training-Free Method for Large Audio-Language Models
Li, Yanda
Liu, Yuhan
Song, Zirui
Wei, Yunchao
Takáč, Martin
Lahlou, Salem
Sound
Artificial Intelligence
Large audio-language models (LALMs) generalize across speech, sound, and music, but unified decoders can exhibit a \emph{temporal smoothing bias}: transient acoustic cues may be underutilized in favor of temporally smooth context that is better supported by language priors, leading to less specific audio-grounded outputs. We propose \emph{Temporal Contrastive Decoding} (TCD), a training-free decoding method for unified LALMs that mitigates this effect at inference time. TCD constructs a temporally blurred slow-path view by smoothing the input waveform and re-encoding it, then contrasts next-token logits from the original and slow-path views. The contrastive signal is applied as a token-level logit update restricted to a small candidate set. A self-normalized stability score sets the blur window and update scale, and a step-wise gate based on uncertainty and audio reliance activates the update only when needed. Experiments on MMAU and AIR-Bench show consistent improvements on strong unified LALMs. We further conduct ablations and an architectural applicability study to analyze the contributions of key components and how TCD behaves across large audio-language model designs.
title Temporal Contrastive Decoding: A Training-Free Method for Large Audio-Language Models
topic Sound
Artificial Intelligence
url https://arxiv.org/abs/2604.15383