2021
DOI: 10.48550/arxiv.2101.05525
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An evaluation of word-level confidence estimation for end-to-end automatic speech recognition

Abstract: Quantifying the confidence (or conversely the uncertainty) of a prediction is a highly desirable trait of an automatic system, as it improves the robustness and usefulness in downstream tasks. In this paper we investigate confidence estimation for end-toend automatic speech recognition (ASR). Previous work has addressed confidence measures for lattice-based ASR, while current machine learning research mostly focuses on confidence measures for unstructured deep learning. However, as the ASR systems are increasi… Show more

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“…The value of c is not critical for the evaluation of the entropy. Similar methods are also applied to compute word confidence measures [101]. In DIANA the entropy was computed after removal of all 'nested' hypotheses from the list of hypotheses (see Section 4).…”
Section: Appendix A4 Computation Of Entropymentioning
confidence: 99%
“…The value of c is not critical for the evaluation of the entropy. Similar methods are also applied to compute word confidence measures [101]. In DIANA the entropy was computed after removal of all 'nested' hypotheses from the list of hypotheses (see Section 4).…”
Section: Appendix A4 Computation Of Entropymentioning
confidence: 99%