Speak & Improve Corpus 2025: an L2 English Speech Corpus for Language Assessment and Feedback
We introduce the Speak & Improve Corpus 2025, a dataset of L2 learner English data with holistic scores and language error annotation, collected from open (spontaneous) speaking tests on the Speak & Improve learning platform. The aim of the corpus release is to address a major challenge to d...
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Zusammenfassung: | We introduce the Speak & Improve Corpus 2025, a dataset of L2 learner English
data with holistic scores and language error annotation, collected from open
(spontaneous) speaking tests on the Speak & Improve learning platform. The aim
of the corpus release is to address a major challenge to developing L2 spoken
language processing systems, the lack of publicly available data with
high-quality annotations. It is being made available for non-commercial use on
the ELiT website. In designing this corpus we have sought to make it cover a
wide-range of speaker attributes, from their L1 to their speaking ability, as
well as providing manual annotations. This enables a range of language-learning
tasks to be examined, such as assessing speaking proficiency or providing
feedback on grammatical errors in a learner's speech. Additionally the data
supports research into the underlying technology required for these tasks
including automatic speech recognition (ASR) of low resource L2 learner
English, disfluency detection or spoken grammatical error correction (GEC). The
corpus consists of around 315 hours of L2 English learners audio with holistic
scores, and a subset of audio annotated with transcriptions and error labels. |
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DOI: | 10.48550/arxiv.2412.11986 |