CLD integrates convex optimization and ADMM in JAX to deliver 97-98% accuracy for language detection robust to accents under low-resource conditions, with claimed theoretical stability guarantees.
A Survey of Available Corpora for Building Data-Driven Dialogue Systems
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abstract
During the past decade, several areas of speech and language understanding have witnessed substantial breakthroughs from the use of data-driven models. In the area of dialogue systems, the trend is less obvious, and most practical systems are still built through significant engineering and expert knowledge. Nevertheless, several recent results suggest that data-driven approaches are feasible and quite promising. To facilitate research in this area, we have carried out a wide survey of publicly available datasets suitable for data-driven learning of dialogue systems. We discuss important characteristics of these datasets, how they can be used to learn diverse dialogue strategies, and their other potential uses. We also examine methods for transfer learning between datasets and the use of external knowledge. Finally, we discuss appropriate choice of evaluation metrics for the learning objective.
fields
cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Convex Low-resource Accent-Robust Language Detection in Speech Recognition
CLD integrates convex optimization and ADMM in JAX to deliver 97-98% accuracy for language detection robust to accents under low-resource conditions, with claimed theoretical stability guarantees.