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This book focuses on three core knowledge requirements for
effective and thorough data analysis for solving business problems.
These are a foundational understanding of: 1. statistical,
econometric, and machine learning techniques; 2. data handling
capabilities; 3. at least one programming language. Practical in
orientation, the volume offers illustrative case studies throughout
and examples using Python in the context of Jupyter notebooks.
Covered topics include demand measurement and forecasting,
predictive modeling, pricing analytics, customer satisfaction
assessment, market and advertising research, and new product
development and research. This volume will be useful to business
data analysts, data scientists, and market research professionals,
as well as aspiring practitioners in business data analytics. It
can also be used in colleges and universities offering courses and
certifications in business data analytics, data science, and market
research.
This book connects predictive analytics and simulation analytics,
with the end goal of providing Rich Information to stakeholders in
complex systems to direct data-driven decisions. Readers will
explore methods for extracting information from data, work with
simple and complex systems, and meld multiple forms of analytics
for a more nuanced understanding of data science. The methods can
be readily applied to business problems such as demand measurement
and forecasting, predictive modeling, pricing analytics including
elasticity estimation, customer satisfaction assessment, market
research, new product development, and more. The book includes
Python examples in Jupyter notebooks, available at the book's
affiliated Github. This volume is intended for current and aspiring
business data analysts, data scientists, and market research
professionals, in both the private and public sectors.
This book develops survey data analysis tools in Python, to create
and analyze cross-tab tables and data visuals, weight data, perform
hypothesis tests, and handle special survey questions such as
Check-all-that-Apply. In addition, the basics of Bayesian data
analysis and its Python implementation are presented. Since surveys
are widely used as the primary method to collect data, and
ultimately information, on attitudes, interests, and opinions of
customers and constituents, these tools are vital for private or
public sector policy decisions. As a compact volume, this book uses
case studies to illustrate methods of analysis essential for those
who work with survey data in either sector. It focuses on two
overarching objectives: Demonstrate how to extract actionable,
insightful, and useful information from survey data; and Introduce
Python and Pandas for analyzing survey data.
The theme of this book is simple. The price - the number someone
puts on a product to help consumers decide to buy that product -
comes from data. Specifically, itcomes from statistically modeling
the data. This book gives the reader the statistical modeling tools
needed to get the number to put on a product. But statistical
modeling is not done in a vacuum. Economic and statistical
principles and theory conjointly provide the background and
framework for the models. Therefore, this book emphasizes two
interlocking components of modeling: economic theory and
statistical principles. The economic theory component is sufficient
to provide understanding of the basic principles for pricing,
especially about elasticities, which measure the effects of pricing
on key business metrics. Elasticity estimation is the goal of
statistical modeling, so attention is paid to the concept and
implications of elasticities. The statistical modeling component is
advanced and detailed covering choice (conjoint, discrete choice,
MaxDiff) and sales data modeling. Experimental design principles,
model estimation approaches, and analysis methods are discussed and
developed for choice models. Regression fundamentals have been
developed for sales model specification and estimation and expanded
for latent class analysis.
This book presents and develops the deep data analytics for
providing the information needed for successful new product
development. Deep Data Analytics for New Product Development has a
simple theme: information about what customers need and want must
be extracted from data to effectively guide new product decisions
regarding concept development, design, pricing, and marketing. The
benefits of reading this book are twofold. The first is an
understanding of the stages of a new product development process
from ideation through launching and tracking, each supported by
information about customers. The second benefit is an understanding
of the deep data analytics for extracting that information from
data. These analytics, drawn from the statistics, econometrics,
market research, and machine learning spaces, are developed in
detail and illustrated at each stage of the process with simulated
data. The stages of new product development and the supporting deep
data analytics at each stage are not presented in isolation of each
other, but are presented as a synergistic whole. This book is
recommended reading for analysts involved in new product
development. Readers with an analytical bent or who want to develop
analytical expertise would also greatly benefit from reading this
book, as well as students in business programs.
The theme of this book is simple. The price - the number someone
puts on a product to help consumers decide to buy that product -
comes from data. Specifically, itcomes from statistically modeling
the data. This book gives the reader the statistical modeling tools
needed to get the number to put on a product. But statistical
modeling is not done in a vacuum. Economic and statistical
principles and theory conjointly provide the background and
framework for the models. Therefore, this book emphasizes two
interlocking components of modeling: economic theory and
statistical principles. The economic theory component is sufficient
to provide understanding of the basic principles for pricing,
especially about elasticities, which measure the effects of pricing
on key business metrics. Elasticity estimation is the goal of
statistical modeling, so attention is paid to the concept and
implications of elasticities. The statistical modeling component is
advanced and detailed covering choice (conjoint, discrete choice,
MaxDiff) and sales data modeling. Experimental design principles,
model estimation approaches, and analysis methods are discussed and
developed for choice models. Regression fundamentals have been
developed for sales model specification and estimation and expanded
for latent class analysis.
This book focuses on three core knowledge requirements for
effective and thorough data analysis for solving business problems.
These are a foundational understanding of: 1. statistical,
econometric, and machine learning techniques; 2. data handling
capabilities; 3. at least one programming language. Practical in
orientation, the volume offers illustrative case studies throughout
and examples using Python in the context of Jupyter notebooks.
Covered topics include demand measurement and forecasting,
predictive modeling, pricing analytics, customer satisfaction
assessment, market and advertising research, and new product
development and research. This volume will be useful to business
data analysts, data scientists, and market research professionals,
as well as aspiring practitioners in business data analytics. It
can also be used in colleges and universities offering courses and
certifications in business data analytics, data science, and market
research.
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