- Full Description
This book brings together research articles by active practitioners and leading researchers reporting recent advances in the field of knowledge discovery. An overview of the field, looking at the issues and challenges involved is followed by coverage of recent trends in data mining. This provides the context for the subsequent chapters on methods and applications. Part I is devoted to the foundations of mining different types of complex data like trees, graphs, links and sequences. A knowledge discovery approach based on problem decomposition is also described. Part II presents important applications of advanced mining techniques to data in unconventional and complex domains, such as life sciences, world-wide web, image databases, cyber security and sensor networks. With a good balance of introductory material on the knowledge discovery process, advanced issues and state-of-the-art tools and techniques, this book will be useful to students at Masters and PhD level in Computer Science, as well as practitioners in the field.
- Table of Contents
Table of Contents
- Foundations: Knowledge Discovery and Data Mining.
- Automatic Discovery of Class Hierarchies via Output Space.
- based Mining of complex Data.
- Predictive Graph Mining with Kernel Methods.
- TREEMINER: An Efficient Algorithm for Mining Embedded Ordered Frequent Trees.
- Sequence Data Mining.
- based Classification.
- Applications: Knowledge Discovery from Evolutionary Trees.
- assisted Mining of RDF Documents.
- Image Retrieval using Visual Features and Relevance Feedback.
- Significant Feature Selection Using Computational Intelligent Techniques for Intrusion Detection.
- board Mining of Data Streams in Sensor Networks.
- Discovering Evolutionary Classifier over High Speed Non
- static Stream.
If you think that you've found an error in this book, please let us know by emailing to email@example.com . You will find any confirmed erratum below, so you can check if your concern has already been addressed. No errata are currently published