Humans have the most advanced method of communication, which is known as natural language. While humans can use computers to send voice and text messages to each other, computers do not innately know how to process natural language. In recent years, deep learning has primarily transformed the perspectives of a variety of fields in Artificial Intelligence (AI), including speech, vision, and natural language processing (NLP). The extensive success of deep learning in a wide variety of applications has served as a benchmark for the many downstream tasks in AI. The field of computer vision has taken great leaps in recent years and surpassed humans in tasks related to detecting and labeling objects thanks to advances in deep learning and neural networks. Deep Learning Research Applications for Natural Language Processing explains the concepts and state-of-the-art research in the fields of NLP, speech, and computer vision. It provides insights into using the tools and libraries in Python for real-world applications. Covering topics such as Deep Learning algorithms, neural networks, and advanced prediction, this premier reference source is an excellent resource for computational linguists, software engineers, IT managers, computer scientists, students and faculty of higher education, libraries, researchers, and academicians.
Machine Learning (ML) is transformative which opens up new scenarios that were simple impossible a few years ago. Profound gaining addresses a significant change in perspective from customary programming improvement models. Rather than recording unequivocal top guidelines for how programming ought to act Deep Learning permits your product to sum up rules of tasks. Deep Learning models empower the engineers to configure that are characterized by the information have not the guidelines to compose. Deep Learning models are conveyed at scale and creation applications, for example, car, gaming, medical services and independent vehicles. Deep Learning models employ artificial neural networks (ANN), which are computer architectures comprised of multiple layers of interconnected components. By avoiding data transmission through these connected units, a neural network can learn how to approximate the computations required to transform inputs to outputs. Deep Learning models require top-notch information to prepare a brain organization to carry out a particular errand. Contingent upon your expected applications, you might have to get thousands to millions of tests. The objective of the book is to provide the readers with the fundamentals, recent trends of Deep Learning algorithms in the field of natural language processing (NLP). This book gives the introduction, applications of deep learning to the academicians, researchers and students who are new to this field. This book produces an evident research outcomes using cutting edge technologies in this field with real time applications. This book provides thorough introduction to cutting-edge research in Deep Learning for NLP.
Author(s): L. Ashok Kumar, Dhanaraj Karthika Renuka, S. Geetha
Publisher: IGI Global
Year: 2023
Language: English
Pages: 290