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📄 Abstract
Abstract: Speech foundation models have recently achieved remarkable capabilities
across a wide range of tasks. However, their evaluation remains disjointed
across tasks and model types. Different models excel at distinct aspects of
speech processing and thus require different evaluation protocols. This paper
proposes a unified taxonomy that addresses the question: Which evaluation is
appropriate for which model? The taxonomy defines three orthogonal axes: the
\textbf{evaluation aspect} being measured, the model capabilities required to
attempt the task, and the task or protocol requirements needed to perform it.
We classify a broad set of existing evaluations and benchmarks along these
axes, spanning areas such as representation learning, speech generation, and
interactive dialogue. By mapping each evaluation to the capabilities a model
exposes (e.g., speech generation, real-time processing) and to its
methodological demands (e.g., fine-tuning data, human judgment), the taxonomy
provides a principled framework for aligning models with suitable evaluation
methods. It also reveals systematic gaps, such as limited coverage of prosody,
interaction, or reasoning, that highlight priorities for future benchmark
design. Overall, this work offers a conceptual foundation and practical guide
for selecting, interpreting, and extending evaluations of speech models.
Authors (2)
Maureen de Seyssel
Eeshan Gunesh Dhekane
Submitted
October 22, 2025
Key Contributions
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