User intent classification is a vital component of a question-answering system or a task-based dialogue system. In order to understand the goals of users’ questions or discourses, the system categorizes user text into a set of pre-defined user intent categories. User questions or discourses are usually short in length and lack sufficient context; thus, it is difficult to extract deep semantic information from these types of text and the accuracy of user intent classification may be affected. To better identify user intents, this paper proposes a BERT-Cap hybrid neural network model with focal loss for user intent classification to capture user intents in dialogue. The model uses multiple transformer encoder blocks to encode user utterances ...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
MasterOne of the main components of spoken language understanding is user intent detection. Common c...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...
Intent recognition is a key component of any task-oriented conversational system. The intent recogni...
Conversational agents are increasingly present in the context of Industry 4.0, in particular for cus...
onversational assistants are being progressively adopted by the general population. However, they ar...
Computational linguistics explores how human language is interpreted automatically and then processe...
Spoken dialogue systems have been proposed to enable a more natural and intuitive interaction with t...
Intent analysis is capturing the attention of both the industry and academia due to its commercial a...
Conversation is very important in the lives of human beings. Interaction between two or more people ...
Intent detection is a key sub-task of spoken language understanding in human-machine dialogue system...
Conversations are more than just a sequence of text, it is where two or more participants interact i...
Question-answering systems are becoming increasingly popular in Natural Language Processing, especia...
International audienceTask-oriented dialogue systems employ third-party APIs to serve end-users via ...
Successful applications of deep learning technologies in the natural language processing domain have...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
MasterOne of the main components of spoken language understanding is user intent detection. Common c...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...
Intent recognition is a key component of any task-oriented conversational system. The intent recogni...
Conversational agents are increasingly present in the context of Industry 4.0, in particular for cus...
onversational assistants are being progressively adopted by the general population. However, they ar...
Computational linguistics explores how human language is interpreted automatically and then processe...
Spoken dialogue systems have been proposed to enable a more natural and intuitive interaction with t...
Intent analysis is capturing the attention of both the industry and academia due to its commercial a...
Conversation is very important in the lives of human beings. Interaction between two or more people ...
Intent detection is a key sub-task of spoken language understanding in human-machine dialogue system...
Conversations are more than just a sequence of text, it is where two or more participants interact i...
Question-answering systems are becoming increasingly popular in Natural Language Processing, especia...
International audienceTask-oriented dialogue systems employ third-party APIs to serve end-users via ...
Successful applications of deep learning technologies in the natural language processing domain have...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
MasterOne of the main components of spoken language understanding is user intent detection. Common c...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...