Rating: Not rated
Tags: Analytics, Lang:en
Summary
The fundamental algorithms in data mining and analysis form
the basis for the emerging field of data science, which
includes automated methods to analyze patterns and models for
all kinds of data, with applications ranging from scientific
discovery to business intelligence and analytics. This textbook
for senior undergraduate and graduate data mining courses
provides a broad yet in-depth overview of data mining,
integrating related concepts from machine learning and
statistics. The main parts of the book include exploratory data
analysis, pattern mining, clustering, and classification. The
book lays the basic foundations of these tasks, and also covers
cutting-edge topics such as kernel methods, high-dimensional
data analysis, and complex graphs and networks. With its
comprehensive coverage, algorithmic perspective, and wealth of
examples, this book offers solid guidance in data mining for
students, researchers, and practitioners alike. Key features:
• Covers both core methods and cutting-edge research
• Algorithmic approach with open-source implementations
• Minimal prerequisites: all key mathematical concepts
are presented, as is the intuition behind the formulas •
Short, self-contained chapters with class-tested examples and
exercises allow for flexibility in designing a course and for
easy reference • Supplementary website with lecture
slides, videos, project ideas, and more **