10% off all books and free delivery over £40
Buy from our bookstore and 25% of the cover price will be given to a school of your choice to buy more books. *15% of eBooks.

Intelligent Learning Systems

View All Editions

The selected edition of this book is not available to buy right now.
Add To Wishlist
Write A Review

About

Intelligent Learning Systems Synopsis

Intelligent (machine) learning is a subfield of artificial intelligence and it originates from the researches in the pattern recognition, the computational learning theory, and the use of statistics for the purpose of learning - based on previously available data.Extremely important is to make a distinction between machine learning and artificial intelligence - in order to understand their operation: while artificial intelligence aims not only to mimic human behavior through learning, and also some sort of abstract thinking, knowledge representation and reasoning, machine learning is only directed to create software that can learn from past experiences. Machine learning is much closer to the data mining and statistical analysis. Many even believe that it have prevailed over the classical statistics, because it relies on the accuracy of the prediction, as opposed to a pure data modeling. The machine learning techniques have gained large popularity nowadays, since many companies apply some type of data mining in order to understand the clients’ behaviour and to predict the future market trends. This edition covers different topics from machine learning, and application of pattern recognition solutions in the industry, economy, engineering etc. Also, the intelligent tutoring systems will be covered in the last section, since they will re-shape the future of the current e-learning and distance learning systems. Section 1 focuses on machine learning basics, providing machine learning overview, types of machine learning algorithms, and methods for pattern classification. Section 2 focuses on intelligent learning methods and approaches, describing evolutionary learning of concepts, neural machine learning approaches: Q-learning and complexity estimation, training with input selection and testing (TWIST) algorithm, hybrid neural network architecture for on-line learning, and resampling methods for unsupervised learning from sample data. Section 3 focuses on intelligent learning applications, describing application of machine-learning based prediction techniques in wireless networks, application of extreme learning machine in fault classification of power transformer, prediction of solar irradiation using quantum support vector machine learning algorithm, data mining in electronic commerce: benefits and challenges, and data mining with time series data in short-term stocks prediction. Section 4 focuses on human learning assisted by intelligent systems, describing application of data-mining technology on e-learning material recommendation, intelligent interaction support for e-learning, data mining for instructional design, learning and assessment, students’ access patterns in e-learning including Web 2.0 resources, and advances in artificial intelligence in modeling of student-centered VLEs.

About This Edition

ISBN: 9781773610757
Publication date: 1st November 2017
Author: Zoran Gacovski
Publisher: Arcler Education Inc
Format: Hardback
Pagination: 275 pages
Genres: Computer science
Knowledge management