On the reliability of feature attribution methods for speech classification
On the reliability of feature attribution methods for speech classification
As the capabilities of large-scale pre-trained models evolve, understanding the determinants of their outputs becomes more important. Feature attribution aims to reveal which parts of the input elements contribute the most to model outputs. In speech processing, the unique characteristics of the input signal make the application of feature attribution methods challenging. We study how factors such as input type and aggregation and perturbation timespan impact the reliability of standard feature attribution methods, and how these factors interact with characteristics of each classification task. We find that standard approaches to feature attribution are generally unreliable when applied to the speech domain, with the exception of word-aligned perturbation methods when applied to word-based classification tasks.
Gaofei Shen、Hosein Mohebbi、Arianna Bisazza、Afra Alishahi、Grzegorz Chrupa?a
计算技术、计算机技术
Gaofei Shen,Hosein Mohebbi,Arianna Bisazza,Afra Alishahi,Grzegorz Chrupa?a.On the reliability of feature attribution methods for speech classification[EB/OL].(2025-05-22)[2025-06-06].https://arxiv.org/abs/2505.16406.点此复制
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