Journal ArticleOpen Access
Deep learning-based natural language processing in human–agent interaction: Applications, advancements and challenges
Authors
Author Affiliations
American International University-Bangladesh, Eötvös Loránd University
Published InNatural Language Processing Journal
Year2024
Citations31
Abstract
Human–Agent Interaction is at the forefront of rapid development, with integrating deep learning techniques into natural language processing representing significant potential. This research addresses the complicated dynamics of Human–Agent Interaction and highlights the central role of Deep Learning in shaping the communication between humans and agents. In contrast to a narrow focus on sentiment analysis, this study encompasses various Human–Agent Interaction facets, including dialogue systems, language understanding and contextual communication. This study systematically examines applications, algorithms and models that define the current landscape of deep learning-based natural language processing in Human–Agent Interaction. It also presents common pre-processing techniques, datasets and customized evaluation metrics. Insights into the benefits and challenges of machine learning and Deep Learning algorithms in Human–Agent Interaction are…
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