Intent classification is a central component of a Natural Language Understanding (NLU) pipeline for conversational agents. The quality of such a component depends on the quality of the training data, however, for many conversational scenarios, the data might be scarce; in these scenarios, data augmentation techniques are used. Having general data augmentation methods that can generalize to many datasets is highly desirable. The work presented in this paper is centered around two main components. First, we explore the influence of various feature vectors on the task of intent classification using RASA’s text classification capabilities. The second part of this work consists of a generic method for efficiently augmenting textual corpora using...
Natural Language Understanding (NLU) systems are essential components in many industry conversationa...
Multi-intent natural language sentence classification aims at identifying multiple user goals in a s...
Multimodal intent recognition poses significant challenges, requiring the incorporation of non-verba...
Intent analysis is capturing the attention of both the industry and academia due to its commercial a...
Intent classification is known to be a complex problem in Natural Language Processing (NLP) research...
Successful applications of deep learning technologies in the natural language processing domain have...
New intent discovery aims to uncover novel intent categories from user utterances to expand the set ...
Sub-tasks of intent classification, such as robustness to distribution shift, adaptation to specific...
Computational linguistics explores how human language is interpreted automatically and then processe...
Intent recognition is a key component of any task-oriented conversational system. The intent recogni...
Intent classification (IC) and Named Entity Recognition (NER) are arguably the two main components n...
Intent recognition models, which match a written or spoken input's class in order to guide an intera...
The natural language processing field has seen task-oriented dialog systems emerge as a strong area ...
Detecting user intents from utterances is the basis of natural language understanding (NLU) task. To...
Spoken language understanding (SLU) is an important part of human-machine dialogue system. Intent de...
Natural Language Understanding (NLU) systems are essential components in many industry conversationa...
Multi-intent natural language sentence classification aims at identifying multiple user goals in a s...
Multimodal intent recognition poses significant challenges, requiring the incorporation of non-verba...
Intent analysis is capturing the attention of both the industry and academia due to its commercial a...
Intent classification is known to be a complex problem in Natural Language Processing (NLP) research...
Successful applications of deep learning technologies in the natural language processing domain have...
New intent discovery aims to uncover novel intent categories from user utterances to expand the set ...
Sub-tasks of intent classification, such as robustness to distribution shift, adaptation to specific...
Computational linguistics explores how human language is interpreted automatically and then processe...
Intent recognition is a key component of any task-oriented conversational system. The intent recogni...
Intent classification (IC) and Named Entity Recognition (NER) are arguably the two main components n...
Intent recognition models, which match a written or spoken input's class in order to guide an intera...
The natural language processing field has seen task-oriented dialog systems emerge as a strong area ...
Detecting user intents from utterances is the basis of natural language understanding (NLU) task. To...
Spoken language understanding (SLU) is an important part of human-machine dialogue system. Intent de...
Natural Language Understanding (NLU) systems are essential components in many industry conversationa...
Multi-intent natural language sentence classification aims at identifying multiple user goals in a s...
Multimodal intent recognition poses significant challenges, requiring the incorporation of non-verba...