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Statistical science as organized in formal academic departments
is relatively new. With a few exceptions, most Statistics and
Biostatistics departments have been created within the past 60
years. This book consists of a set of memoirs, one for each
department in the U.S. created by the mid-1960s. The memoirs
describe key aspects of the department s history -- its founding,
its growth, key people in its development, success stories (such as
major research accomplishments) and the occasional failure story,
PhD graduates who have had a significant impact, its impact on
statistical education, and a summary of where the department stands
today and its vision for the future. Read here all about how
departments such as at Berkeley, Chicago, Harvard, and Stanford
started and how they got to where they are today. The book should
also be of interests to scholars in the field of disciplinary
history. "
Social media data contains our communication and online sharing,
mirroring our daily life. This book looks at how we can use and
what we can discover from such big data: Basic knowledge (data
& challenges) on social media analytics Clustering as a
fundamental technique for unsupervised knowledge discovery and data
mining A class of neural inspired algorithms, based on adaptive
resonance theory (ART), tackling challenges in big social media
data clustering Step-by-step practices of developing unsupervised
machine learning algorithms for real-world applications in social
media domain Adaptive Resonance Theory in Social Media Data
Clustering stands on the fundamental breakthrough in cognitive and
neural theory, i.e. adaptive resonance theory, which simulates how
a brain processes information to perform memory, learning,
recognition, and prediction. It presents initiatives on the
mathematical demonstration of ART's learning mechanisms in
clustering, and illustrates how to extend the base ART model to
handle the complexity and characteristics of social media data and
perform associative analytical tasks. Both cutting-edge research
and real-world practices on machine learning and social media
analytics are included in the book and if you wish to learn the
answers to the following questions, this book is for you: How to
process big streams of multimedia data? How to analyze social
networks with heterogeneous data? How to understand a user's
interests by learning from online posts and behaviors? How to
create a personalized search engine by automatically indexing and
searching multimodal information resources? .
Statistical science as organized in formal academic departments is
relatively new. With a few exceptions, most Statistics and
Biostatistics departments have been created within the past 60
years. This book consists of a set of memoirs, one for each
department in the U.S. created by the mid-1960s. The memoirs
describe key aspects of the department's history -- its founding,
its growth, key people in its development, success stories (such as
major research accomplishments) and the occasional failure story,
PhD graduates who have had a significant impact, its impact on
statistical education, and a summary of where the department stands
today and its vision for the future. Read here all about how
departments such as at Berkeley, Chicago, Harvard, and Stanford
started and how they got to where they are today. The book should
also be of interests to scholars in the field of disciplinary
history.
Since their popularization in the 1990s, Markov chain Monte Carlo
(MCMC) methods have revolutionized statistical computing and have
had an especially profound impact on the practice of Bayesian
statistics. Furthermore, MCMC methods have enabled the development
and use of intricate models in an astonishing array of disciplines
as diverse as fisheries science and economics. The wide-ranging
practical importance of MCMC has sparked an expansive and deep
investigation into fundamental Markov chain theory. The Handbook of
Markov Chain Monte Carlo provides a reference for the broad
audience of developers and users of MCMC methodology interested in
keeping up with cutting-edge theory and applications. The first
half of the book covers MCMC foundations, methodology, and
algorithms. The second half considers the use of MCMC in a variety
of practical applications including in educational research,
astrophysics, brain imaging, ecology, and sociology. The in-depth
introductory section of the book allows graduate students and
practicing scientists new to MCMC to become thoroughly acquainted
with the basic theory, algorithms, and applications. The book
supplies detailed examples and case studies of realistic scientific
problems presenting the diversity of methods used by the
wide-ranging MCMC community. Those familiar with MCMC methods will
find this book a useful refresher of current theory and recent
developments.
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