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Improving Speech Recognition for African American English With Audio Classification

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arxiv 2309.09996 v1 pith:EFRIMET7 submitted 2023-09-16 eess.AS cs.CLcs.LGcs.SD

Improving Speech Recognition for African American English With Audio Classification

classification eess.AS cs.CLcs.LGcs.SD
keywords englishamericandataspeechafricanaudioclassifierlarge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatic speech recognition (ASR) systems have been shown to have large quality disparities between the language varieties they are intended or expected to recognize. One way to mitigate this is to train or fine-tune models with more representative datasets. But this approach can be hindered by limited in-domain data for training and evaluation. We propose a new way to improve the robustness of a US English short-form speech recognizer using a small amount of out-of-domain (long-form) African American English (AAE) data. We use CORAAL, YouTube and Mozilla Common Voice to train an audio classifier to approximately output whether an utterance is AAE or some other variety including Mainstream American English (MAE). By combining the classifier output with coarse geographic information, we can select a subset of utterances from a large corpus of untranscribed short-form queries for semi-supervised learning at scale. Fine-tuning on this data results in a 38.5% relative word error rate disparity reduction between AAE and MAE without reducing MAE quality.

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