Slot labeling (SL) is a core component of task-oriented dialogue (ToD) systems, where slots and corresponding values are usually language-, task- and domain-specific. Therefore, extending the system to any new language-domain-task configuration requires (re)running an expensive and resource-intensive data annotation process. To mitigate the inherent data scarcity issue, current research on multilingual ToD assumes that sufficient English-language annotated data are always available for particular tasks and domains, and thus operates in a standard cross-lingual transfer setup. In this work, we depart from this often unrealistic assumption. We examine challenging scenarios where such transfer-enabling English annotated data cannot be guarante...
We propose a Cross-lingual Encoder-Decoder model that simultaneously translates and generates senten...
Pretrained multilingual language models have become a common tool in transferring NLP capabilities t...
Large Language Models, the dominant starting point for Natural Language Processing (NLP) application...
Research on (multi-domain) task-oriented dialog (TOD) has predominantly focused on the English langu...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
Supervised deep learning-based approaches have been applied to task-oriented dialog and have proven ...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
Cross-lingual semantic parsing transfers parsing capability from a high-resource language (e.g., Eng...
Modern virtual assistants use internal semantic parsing engines to convert user utterances to action...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
Achieving robust language technologies that can perform well across the world's many languages is a ...
Large-scale models for learning fixed-dimensional cross-lingual sentence representations like LASER ...
We present LINGUIST, a method for generating annotated data for Intent Classification and Slot Taggi...
Data augmentation has shown potential in alleviating data scarcity for Natural Language Understandin...
Understanding an event means being able to answer the question Who did what to whom? (and perhaps al...
We propose a Cross-lingual Encoder-Decoder model that simultaneously translates and generates senten...
Pretrained multilingual language models have become a common tool in transferring NLP capabilities t...
Large Language Models, the dominant starting point for Natural Language Processing (NLP) application...
Research on (multi-domain) task-oriented dialog (TOD) has predominantly focused on the English langu...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
Supervised deep learning-based approaches have been applied to task-oriented dialog and have proven ...
Slot filling is a challenging task in Spoken Language Understanding (SLU). Supervised methods usuall...
Cross-lingual semantic parsing transfers parsing capability from a high-resource language (e.g., Eng...
Modern virtual assistants use internal semantic parsing engines to convert user utterances to action...
Slot filling is a core operation for utterance understanding in task-oriented dialogue systems. Slot...
Achieving robust language technologies that can perform well across the world's many languages is a ...
Large-scale models for learning fixed-dimensional cross-lingual sentence representations like LASER ...
We present LINGUIST, a method for generating annotated data for Intent Classification and Slot Taggi...
Data augmentation has shown potential in alleviating data scarcity for Natural Language Understandin...
Understanding an event means being able to answer the question Who did what to whom? (and perhaps al...
We propose a Cross-lingual Encoder-Decoder model that simultaneously translates and generates senten...
Pretrained multilingual language models have become a common tool in transferring NLP capabilities t...
Large Language Models, the dominant starting point for Natural Language Processing (NLP) application...