Tags
Language
Tags
March 2024
Su Mo Tu We Th Fr Sa
25 26 27 28 29 1 2
3 4 5 6 7 8 9
10 11 12 13 14 15 16
17 18 19 20 21 22 23
24 25 26 27 28 29 30
31 1 2 3 4 5 6

Temporal Data Mining

Posted By: tot167
Temporal Data Mining

Theophano Mitsa, "Temporal Data Mining"
Chapman and Hall/CRC | 2010 | ISBN: 1420089765 | 395 pages | PDF | 4,8 MB

Temporal data mining deals with the harvesting of useful information from temporal data. New initiatives in health care and business organizations have increased the importance of temporal information in data today.

From basic data mining concepts to state-of-the-art advances, Temporal Data Mining covers the theory of this subject as well as its application in a variety of fields. It discusses the incorporation of temporality in databases as well as temporal data representation, similarity computation, data classification, clustering, pattern discovery, and prediction. The book also explores the use of temporal data mining in medicine and biomedical informatics, business and industrial applications, web usage mining, and spatiotemporal data mining.

Along with various state-of-the-art algorithms, each chapter includes detailed references and short descriptions of relevant algorithms and techniques described in other references. In the appendices, the author explains how data mining fits the overall goal of an organization and how these data can be interpreted for the purpose of characterizing a population. She also provides programs written in the Java language that implement some of the algorithms presented in the first chapter.

Review

"Temporal Data Mining presents a comprehensive overview of the various mathematical and computational aspects of dynamical data processing, from database storage and retrieval to statistical modeling and inference. The first part of the book discusses the key tools and techniques in considerable depth, with a focus on the applicable models and algorithms. Building on this, the second part considers the application to bioinformatics, finance and business computing. The technical depth is appropriate to interest a broad audience, and the text is highly accessible irrespective of the reader’s prior familiarity with the subject. An extensive bibliography is provided on each of the topics covered, which makes this book a valuable reference for both the novice and the established practitioner. The clear, concise and instructive style will make this book particularly attractive to graduate students, researchers and industry professionals."
—Dr. Wasim Q. Malik, Massachusetts Institute of Technology and Harvard Medical School, Cambridge, USA

"… how can decision-makers be so data poor in such a (theoretically at least) data-rich economy? Chapter 7 of Theo Mitsa’s book presents the potential for an interesting resolution to this paradox. Her linkage of sophisticated concepts of temporal data mining to practical business issues, such as strategy, forecasting, financial scenario analysis, customer value and retention, operations and logistics management, etc., offers an illuminating approach to organizing and creating sense from overwhelming quantities of random data. Although the algorithms and computations are complex, a reader can learn that there are quantitative approaches to expose additional, possibly critical, insights about virtually any facet of a business. This book further illustrates the growing importance of business analytics and showcases the myriad opportunities available to savvy managers and entrepreneurs to use a system of tools to leverage the value of, and investment in, their data collection and mining efforts."
—Gary Minkoff, Babson MBA, President, Above & Beyond Marketing, Highland Park, New Jersey, USA

"As someone who works on signal processing applications in the medical device industry, I found the topic of temporal data mining to be extremely relevant. Our work focuses primarily on time series analysis of evoked potentials. Analysis of these signals is complicated by interfering signals, which although variable, tend to fall into a fairly small number of stereotypical cases. The techniques described in chapter 2 for temporal data similarity calculations and in chapter 3 for temporal data classification have potential application in our work. I found that Temporal Data Mining offered a valuable overview of these fields and gave interesting insight into topics related to gene discovery and bioinformatics. A major strength of the book is the large bibliography, which provides the reader with the tools to dig deeper into topics of interest."
—Dr. Brian Tracey, Signal Processing Project Leader at Neurometrix, Inc.

Download