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Books > Business & Economics > Economics > Econometrics > Economic statistics
This business analytics (BA) text discusses the models based on
fact-based data to measure past business performance to guide an
organization in visualizing and predicting future business
performance and outcomes. It provides a comprehensive overview of
analytics in general with an emphasis on predictive analytics.
Given the booming interest in analytics and data science, this book
is timely and informative. It brings many terms, tools, and methods
of analytics together. The first three chapters provide an
introduction to BA, importance of analytics, types of
BA-descriptive, predictive, and prescriptive-along with the tools
and models. Business intelligence (BI) and a case on descriptive
analytics are discussed. Additionally, the book discusses on the
most widely used predictive models, including regression analysis,
forecasting, data mining, and an introduction to recent
applications of predictive analytics-machine learning, neural
networks, and artificial intelligence. The concluding chapter
discusses on the current state, job outlook, and certifications in
analytics.
This publication presents economic statistics relevant for
cross-border production arrangements analysis in Hong Kong, China;
Japan; Mongolia; the People's Republic of China; the Republic of
Korea; and Taipei, China. It was computed from ADB's multi-regional
input-output database which serves the increasing demand for
structured, relevant, timely, and accurate data, especially with
the onset of various economic research projects on global value
chains. Supply and use tables and input-output tables in the
publication address the emerging need for more systematic and
comprehensive approaches in data management, economic analysis, and
policy research for national economies around the world.
Doubt over the trustworthiness of published empirical results is
not unwarranted and is often a result of statistical
mis-specification: invalid probabilistic assumptions imposed on
data. Now in its second edition, this bestselling textbook offers a
comprehensive course in empirical research methods, teaching the
probabilistic and statistical foundations that enable the
specification and validation of statistical models, providing the
basis for an informed implementation of statistical procedure to
secure the trustworthiness of evidence. Each chapter has been
thoroughly updated, accounting for developments in the field and
the author's own research. The comprehensive scope of the textbook
has been expanded by the addition of a new chapter on the Linear
Regression and related statistical models. This new edition is now
more accessible to students of disciplines beyond economics and
includes more pedagogical features, with an increased number of
examples as well as review questions and exercises at the end of
each chapter.
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