Part 7: Convolutional NNInternational audienceIn this paper we exploit cross-lingual models to enable dialogue act recognition for specific tasks with a small number of annotations. We design a transfer learning approach for dialogue act recognition and validate it on two different target languages and domains. We compute dialogue turn embeddings with both a CNN and multi-head self-attention model and show that the best results are obtained by combining all sources of transferred information. We further demonstrate that the proposed methods significantly outperform related cross-lingual DA recognition approaches
Having an intelligent assistant that can communicate with humans to serve their needs is a fundament...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...
Part 7: Convolutional NNInternational audienceIn this paper we exploit cross-lingual models to enabl...
Solutions to many natural language processing problems need language-specific labeled data to be lea...
Response generation for task-oriented dialogues involves two basic components: dialogue planning and...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Nowadays the dialogue act classification is one of the hot topics in computational linguistics. Diff...
In task-oriented dialogue (ToD), a user holds a conversation with an artificial agent to complete a ...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
International audienceThis paper deals with automatic dialogue act (DA) recognition. Dialogue acts a...
Automatic dialog act recognition is an important step for dialog systems since it reveals the intent...
International audienceThis paper deals with multilingual dialogue act (DA) recognition. The proposed...
Having an intelligent assistant that can communicate with humans to serve their needs is a fundament...
Recent progress in task-oriented neural dialogue systems is largely focused on a handful of language...
Having an intelligent assistant that can communicate with humans to serve their needs is a fundament...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...
Part 7: Convolutional NNInternational audienceIn this paper we exploit cross-lingual models to enabl...
Solutions to many natural language processing problems need language-specific labeled data to be lea...
Response generation for task-oriented dialogues involves two basic components: dialogue planning and...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
Nowadays the dialogue act classification is one of the hot topics in computational linguistics. Diff...
In task-oriented dialogue (ToD), a user holds a conversation with an artificial agent to complete a ...
Recognising dialogue acts (DA) is important for many natural language processing tasks such as dialo...
International audienceThis paper deals with automatic dialogue act (DA) recognition. Dialogue acts a...
Automatic dialog act recognition is an important step for dialog systems since it reveals the intent...
International audienceThis paper deals with multilingual dialogue act (DA) recognition. The proposed...
Having an intelligent assistant that can communicate with humans to serve their needs is a fundament...
Recent progress in task-oriented neural dialogue systems is largely focused on a handful of language...
Having an intelligent assistant that can communicate with humans to serve their needs is a fundament...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...
In this paper, we explore instance-based learning methods for dialogue act classification on two cor...