Los puntos clave no están disponibles para este artículo en este momento.
Natural Language Processing (NLP), a critical subfield of artificial intelligence, has seen significant advancements over the past decade, driven by innovations in machine learning and deep learning techniques. This paper provides a comprehensive review of recent trends in NLP, highlighting breakthroughs such as transformer models, BERT, and GPT architectures, which have substantially improved the performance of language understanding and generation tasks. Despite these advancements, the field faces several challenges, including the need for vast amounts of annotated data, computational resources, and the inherent biases present in training datasets. Moreover, achieving true language comprehension and contextual understanding remains elusive. This paper also explores the ethical considerations associated with NLP technologies, particularly regarding privacy, misinformation, and the potential for misuse. Finally, it discusses future directions, including the development of more efficient models, multilingual capabilities, and the integration of NLP with other AI domains to create more robust and versatile systems. Through this exploration, we aim to provide insights into the current state of NLP and outline the roadmap for overcoming existing obstacles to harness the full potential of language-based AI technologies.
Nbs et al. (Tue,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: