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arxiv: 2604.27542 · v2 · submitted 2026-04-30 · 💻 cs.CL

HATS: An Open data set Integrating Human Perception Applied to the Evaluation of Automatic Speech Recognition Metrics

Pith reviewed 2026-05-07 09:13 UTC · model grok-4.3

classification 💻 cs.CL
keywords automatic speech recognitionevaluation metricshuman perceptionHATS datasetword error rateembedding metricstranscription qualityFrench speech
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The pith

New open dataset records human preferences on ASR transcript pairs to test metric alignment with listener perception.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

The paper presents HATS, an open French dataset built from side-by-side choices made by 143 humans between pairs of automatic speech recognition transcripts. It then measures how closely standard lexical metrics such as word error rate and newer embedding-based metrics match those human decisions. This approach treats human perception as the reference point rather than assuming word-level accuracy alone defines quality. If the correlations are weak, current metrics may steer ASR development toward outputs that people do not actually prefer.

Core claim

We introduce the Human Assessed Transcription Side-by-side (HATS) dataset, consisting of preference labels from 143 annotators who chose the better of two ASR hypotheses for French speech. Using this data, we examine the relationship between human judgments and both lexical metrics like word error rate and embedding-based semantic metrics.

What carries the argument

The HATS collection of human side-by-side preference labels on paired ASR transcriptions, used as ground truth to assess how well automatic metrics reflect perceived quality.

If this is right

  • Metrics showing strong correlation with HATS preferences can replace or supplement word error rate when selecting or training ASR models for human use.
  • The open dataset allows direct benchmarking of new evaluation methods against actual listener choices.
  • ASR systems optimized with human-aligned metrics may produce transcripts that users find more acceptable in practice.
  • Embedding-based metrics can be prioritized if they prove closer to HATS judgments than purely lexical ones.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • Low correlations would indicate that error severity and fluency matter to humans in ways current metrics miss.
  • The side-by-side preference format could extend to other generative tasks such as machine translation where human judgment is the real target.
  • Releasing the dataset supports training of learned preference models that predict human choices without new annotations each time.

Load-bearing premise

Isolated text-only side-by-side choices by 143 humans on transcription pairs accurately stand in for human perception of ASR quality when people hear the original audio in realistic conditions.

What would settle it

A follow-up test in which participants listen to the source audio while choosing preferred transcripts, then check whether their selections match the text-only labels in HATS.

Figures

Figures reproduced from arXiv: 2604.27542 by Jane Wottawa, Mickael Rouvier, Richard Dufour, Teva Merlin, Thibault Ba\~neras Roux.

Figure 1
Figure 1. Figure 1: Screenshot from the side-by-side experiment view at source ↗
Figure 2
Figure 2. Figure 2: Participant characterization in terms of number of spoken languages view at source ↗
Figure 3
Figure 3. Figure 3: Participant characterization in terms of level of education. decided to study human behavior and metrics in complex situation, i.e. where humans have difficulties to choose the best transcription. In this context, the aim was to maximize the diversity of choices to be made: subjects had to choose among errors made by different systems (since it is unlikely that different systems produce identical errors). … view at source ↗
read the original abstract

Conventionally, Automatic Speech Recognition (ASR) systems are evaluated on their ability to correctly recognize each word contained in a speech signal. In this context, the word error rate (WER) metric is the reference for evaluating speech transcripts. Several studies have shown that this measure is too limited to correctly evaluate an ASR system, which has led to the proposal of other variants of metrics (weighted WER, BERTscore, semantic distance, etc.). However, they remain system-oriented, even when transcripts are intended for humans. In this paper, we firstly present Human Assessed Transcription Side-by-side (HATS), an original French manually annotated data set in terms of human perception of transcription errors produced by various ASR systems. 143 humans were asked to choose the best automatic transcription out of two hypotheses. We investigated the relationship between human preferences and various ASR evaluation metrics, including lexical and embedding-based ones, the latter being those that correlate supposedly the most with human perception.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

1 major / 2 minor

Summary. The paper introduces the HATS dataset of 143 human side-by-side preferences over pairs of ASR transcriptions (French), collected to capture human perception of transcription errors. It then reports correlations between these preferences and a range of ASR metrics, including lexical measures such as WER and embedding-based metrics that are hypothesized to align better with human judgments.

Significance. If the collected preferences validly reflect human assessment of ASR output quality under realistic conditions, the open dataset would be a useful resource for validating or improving automatic evaluation metrics beyond WER. The work directly addresses the known limitations of system-oriented metrics for human-facing applications.

major comments (1)
  1. [Methods / Data Collection] Data collection protocol (described in the methods section): annotators are presented only with isolated pairs of text hypotheses and asked to choose the better transcription. This setup does not include the source audio, reference transcript, or any use-case context, so the resulting labels may capture relative textual fluency or grammaticality rather than perception of ASR-specific errors. Because this protocol is load-bearing for the central claim that HATS integrates 'human perception of transcription errors,' the subsequent metric-correlation results cannot be interpreted as evidence about which metrics best track real-world ASR quality.
minor comments (2)
  1. [Abstract] The abstract states that embedding-based metrics 'correlate supposedly the most with human perception' without citing the specific prior studies or providing the exact correlation values obtained in this work.
  2. [Results] No exclusion criteria, inter-annotator agreement statistics, or error bars on the reported correlations are mentioned in the abstract; these details should be added to the results section for reproducibility.

Simulated Author's Rebuttal

1 responses · 0 unresolved

We thank the referee for the constructive feedback on our manuscript. The concern regarding the data collection protocol is well-taken, as it directly impacts how the human judgments should be interpreted. We address this point below and outline planned revisions to improve clarity and avoid overstatement.

read point-by-point responses
  1. Referee: [Methods / Data Collection] Data collection protocol (described in the methods section): annotators are presented only with isolated pairs of text hypotheses and asked to choose the better transcription. This setup does not include the source audio, reference transcript, or any use-case context, so the resulting labels may capture relative textual fluency or grammaticality rather than perception of ASR-specific errors. Because this protocol is load-bearing for the central claim that HATS integrates 'human perception of transcription errors,' the subsequent metric-correlation results cannot be interpreted as evidence about which metrics best track real-world ASR quality.

    Authors: We agree that the protocol—presenting only text pairs without audio or reference—means the collected preferences primarily reflect relative textual quality (e.g., fluency, grammaticality, or overall readability) rather than direct human perception of ASR errors grounded in the audio signal. This design was intentional to simulate common downstream scenarios where users evaluate or compare ASR outputs as text alone (such as in subtitling or document review), but we acknowledge it limits claims about ASR-specific error perception. We will revise the manuscript as follows: (1) update the abstract, introduction, and title phrasing to emphasize 'human preferences on ASR transcripts' instead of 'human perception of transcription errors'; (2) expand the methods section to explicitly describe the text-only setup and its rationale; and (3) add a dedicated limitations subsection discussing how this affects interpretation of the metric correlations. These changes will ensure the dataset's scope is accurately represented without overstating its alignment with audio-based ASR quality assessment. revision: partial

Circularity Check

0 steps flagged

No circularity: empirical data collection and correlation analysis

full rationale

The paper collects a new dataset of 143 human side-by-side preferences on ASR transcript pairs and reports correlations against lexical and embedding-based metrics. No equations, fitted parameters, predictions, or self-citations are used to derive results; the central contribution is the open dataset itself plus straightforward empirical comparison. All steps remain independent of any internal redefinition or self-referential justification.

Axiom & Free-Parameter Ledger

0 free parameters · 1 axioms · 0 invented entities

No free parameters or invented entities are introduced. The work rests on the domain assumption that aggregated human preferences constitute a valid reference for metric quality.

axioms (1)
  • domain assumption Human side-by-side preferences on transcription pairs reflect meaningful perception of ASR quality
    This assumption underpins the use of the collected judgments to evaluate automatic metrics.

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