Recent Advances In End-to-end Spoken Language Understanding
2019 Β· Natalia Tomashenko, Antoine Caubriere, Yannick Esteve, et al.
Abstract
This work investigates spoken language understanding (SLU) systems in the scenario when the semantic information is extracted directly from the speech signal by means of a single end-to-end neural network model. Two SLU tasks are considered: named entity recognition (NER) and semantic slot filling (SF). For these tasks, in order to improve the model performance, we explore various techniques including speaker adaptation, a modification of the connectionist temporal classification (CTC) training criterion, and sequential pretraining.
Authors
(none)
Tags
Stats
Related papers
- Where Are We In Semantic Concept Extraction For Spoken Language Understanding? (2021)5.84
- Speech-language Pre-training For End-to-end Spoken Language Understanding (2021)9.41
- End-to-end Architectures For Asr-free Spoken Language Understanding (2019)8.60
- Improving End-to-end Models For Set Prediction In Spoken Language Understanding (2022)0.00
- Towards End-to-end Spoken Language Understanding (2018)14.73
- Speech To Semantics: Improve ASR And NLU Jointly Via All-neural Interfaces (2020)9.03
- End-to-end Spoken Language Understanding For Generalized Voice Assistants (2021)6.34
- Understanding Semantics From Speech Through Pre-training (2019)0.00