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Just Enough R! An Interactive Approach to Machine Learning and
Analytics presents just enough of the R language, machine learning
algorithms, statistical methodology, and analytics for the reader
to learn how to find interesting structure in data. The approach
might be called "seeing then doing" as it first gives step-by-step
explanations using simple, understandable examples of how the
various machine learning algorithms work independent of any
programming language. This is followed by detailed scripts written
in R that apply the algorithms to solve nontrivial problems with
real data. The script code is provided, allowing the reader to
execute the scripts as they study the explanations given in the
text. Features Gets you quickly using R as a problem-solving tool
Uses RStudio's integrated development environment Shows how to
interface R with SQLite Includes examples using R's Rattle
graphical user interface Requires no prior knowledge of R, machine
learning, or computer programming Offers over 50 scripts written in
R, including several problem-solving templates that, with slight
modification, can be used again and again Covers the most popular
machine learning techniques, including ensemble-based methods and
logistic regression Includes end-of-chapter exercises, many of
which can be solved by modifying existing scripts Includes datasets
from several areas, including business, health and medicine, and
science About the Author Richard J. Roiger is a professor emeritus
at Minnesota State University, Mankato, where he taught and
performed research in the Computer and Information Science
Department for over 30 years.
Just Enough R! An Interactive Approach to Machine Learning and
Analytics presents just enough of the R language, machine learning
algorithms, statistical methodology, and analytics for the reader
to learn how to find interesting structure in data. The approach
might be called "seeing then doing" as it first gives step-by-step
explanations using simple, understandable examples of how the
various machine learning algorithms work independent of any
programming language. This is followed by detailed scripts written
in R that apply the algorithms to solve nontrivial problems with
real data. The script code is provided, allowing the reader to
execute the scripts as they study the explanations given in the
text. Features Gets you quickly using R as a problem-solving tool
Uses RStudio's integrated development environment Shows how to
interface R with SQLite Includes examples using R's Rattle
graphical user interface Requires no prior knowledge of R, machine
learning, or computer programming Offers over 50 scripts written in
R, including several problem-solving templates that, with slight
modification, can be used again and again Covers the most popular
machine learning techniques, including ensemble-based methods and
logistic regression Includes end-of-chapter exercises, many of
which can be solved by modifying existing scripts Includes datasets
from several areas, including business, health and medicine, and
science About the Author Richard J. Roiger is a professor emeritus
at Minnesota State University, Mankato, where he taught and
performed research in the Computer and Information Science
Department for over 30 years.
Data Mining: A Tutorial-Based Primer, Second Edition provides a
comprehensive introduction to data mining with a focus on model
building and testing, as well as on interpreting and validating
results. The text guides students to understand how data mining can
be employed to solve real problems and recognize whether a data
mining solution is a feasible alternative for a specific problem.
Fundamental data mining strategies, techniques, and evaluation
methods are presented and implemented with the help of two
well-known software tools. Several new topics have been added to
the second edition including an introduction to Big Data and data
analytics, ROC curves, Pareto lift charts, methods for handling
large-sized, streaming and imbalanced data, support vector
machines, and extended coverage of textual data mining. The second
edition contains tutorials for attribute selection, dealing with
imbalanced data, outlier analysis, time series analysis, mining
textual data, and more. The text provides in-depth coverage of
RapidMiner Studio and Weka's Explorer interface. Both software
tools are used for stepping students through the tutorials
depicting the knowledge discovery process. This allows the reader
maximum flexibility for their hands-on data mining experience.
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