Slot filling is a critical task in natural language understanding (NLU) for dialog systems. State-of-the-art approaches treat it as a sequence labeling problem and adopt such models as BiLSTM-CRF. While these models work relatively well on standard benchmark datasets, they face challenges in the context of E-commerce where the slot labels are more informative and carry richer expressions. In this work, inspired by the unique structure of E-commerce knowledge base, we propose a novel multi-task model with cascade and residual connections, which jointly learns segment tagging, named entity tagging and slot filling. Experiments show the effectiveness of the proposed cascade and residual structures. Our model has a 14.6% advantage in F1 score o...
We study the problem of linking information between different idiomatic usages of the same language,...
This paper indicates the use of siamese neural network with triplet and contrastive loss function to...
Multi-task learning (MTL) has recently contributed to learning better representations in service of ...
Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue s...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
We present a general solution towards building task-oriented dialogue systems for online shopping, a...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
This paper addresses the problem of learning multiple spoken language understanding (SLU) tasks that...
These days’ multi-intent utterances have become very important for the spoken language unders...
Few-shot slot tagging is an important task in dialogue systems and attracts much attention of resear...
Voice command smart home systems have become a target for the industry to provide more natural human...
International audienceVoice command smart home systems have become a target for the industry to prov...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
This study evaluates the impacts of slot tagging and training data length on joint natural language ...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
We study the problem of linking information between different idiomatic usages of the same language,...
This paper indicates the use of siamese neural network with triplet and contrastive loss function to...
Multi-task learning (MTL) has recently contributed to learning better representations in service of ...
Slot filling is a crucial task in the Natural Language Understanding (NLU) component of a dialogue s...
Slot filling techniques are often adopted in language understanding components for task-oriented dia...
We present a general solution towards building task-oriented dialogue systems for online shopping, a...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
This paper addresses the problem of learning multiple spoken language understanding (SLU) tasks that...
These days’ multi-intent utterances have become very important for the spoken language unders...
Few-shot slot tagging is an important task in dialogue systems and attracts much attention of resear...
Voice command smart home systems have become a target for the industry to provide more natural human...
International audienceVoice command smart home systems have become a target for the industry to prov...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
This study evaluates the impacts of slot tagging and training data length on joint natural language ...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
We study the problem of linking information between different idiomatic usages of the same language,...
This paper indicates the use of siamese neural network with triplet and contrastive loss function to...
Multi-task learning (MTL) has recently contributed to learning better representations in service of ...