Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue system. Most approaches for this task rely solely on the domain-specific datasets for training. We propose a joint model of slot filling and Named Entity Recognition (NER) in a multi-task learning (MTL) setup. Our experiments on three slot filling datasets show that using NER as an auxiliary task improves slot filling performance and achieve competitive performance compared with state-of-the art. In particular, NER is effective when supervised at the lower layer of the model. For low-resource scenarios, we found that MTL is effective for one dataset
Named entity recognition (NER) is of vital importance in information extraction in natural language ...
International audienceSince the Message Understanding Conferences on Information Extraction in the 8...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
Slot filling is a critical task in natural language understanding (NLU) for dialog systems. State-of...
Named entity recognition (NER) is one fundamental task in natural language processing, which is usua...
Data augmentation methods are often used to address data scarcity in natural language processing (NL...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
We analyze neural network architectures that yield state of the art results on named entity recognit...
Data augmentation has shown potential in alleviating data scarcity for Natural Language Understandin...
We analyze neural network architectures that yield state of the art results on named entity recognit...
International audienceThis work deals with spoken language understanding (SLU) systems in the scenar...
Much of named entity recognition (NER) research focuses on developing dataset-specific models based ...
Named entity recognition (NER) is of vital importance in information extraction in natural language ...
International audienceSince the Message Understanding Conferences on Information Extraction in the 8...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
Slot filling is a critical task in natural language understanding (NLU) for dialog systems. State-of...
Named entity recognition (NER) is one fundamental task in natural language processing, which is usua...
Data augmentation methods are often used to address data scarcity in natural language processing (NL...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
We analyze neural network architectures that yield state of the art results on named entity recognit...
Data augmentation has shown potential in alleviating data scarcity for Natural Language Understandin...
We analyze neural network architectures that yield state of the art results on named entity recognit...
International audienceThis work deals with spoken language understanding (SLU) systems in the scenar...
Much of named entity recognition (NER) research focuses on developing dataset-specific models based ...
Named entity recognition (NER) is of vital importance in information extraction in natural language ...
International audienceSince the Message Understanding Conferences on Information Extraction in the 8...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...