A Paradigm for Interpreting Metrics and Identifying Critical Errors in Automatic Speech Recognition
About
The most commonly used metrics for evaluating automatic speech transcriptions, namely Word Error Rate (WER) and Character Error Rate (CER), have been heavily criticized for their poor correlation to human perception and their inability to take into account linguistic and semantic information. While metric-based embeddings, seeking to approximate human perception, have been proposed, their scores remain difficult to interpret, unlike WER and CER. In this article, we overcome this problem by proposing a paradigm that consists in incorporating a chosen metric into it in order to obtain an equivalent of the error rate: a Minimum Edit Distance (minED). This approach parallels transcription errors with their human perception, also allowing an original study of the severity of these errors from a human perspective.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Human Correlation Analysis | HATS 100% human agreement split | Correlation Ratio79.4 | 9 | |
| Human Correlation Analysis | HATS 70% human agreement split | Correlation Ratio68.2 | 9 |