Statistical techniques in business & economics, 7th ed.
Over the years, we received many compliments on this text and understand that it’s a favorite among students. We accept that as the highest compliment and continue to work very hard to maintain that status. The objective of Statistical Techniques in Business and Economics is to provide students...
Saved in:
Main Author: | |
---|---|
Format: | Book |
Language: | English |
Published: |
McGraw-Hill Education
2020
|
Subjects: | |
Online Access: | http://dspace.uniten.edu.my/jspui/handle/123456789/15350 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Summary: | Over the years, we received many compliments on this text and understand that it’s a
favorite among students. We accept that as the highest compliment and continue to
work very hard to maintain that status.
The objective of Statistical Techniques in Business and Economics is to provide
students majoring in management, marketing, finance, accounting, economics, and
other fields of business administration with an introductory survey of descriptive and inferential
statistics. To illustrate the application of statistics, we use many examples and
exercises
that focus on business applications, but also relate to the current world of the
college student. A previous course in statistics is not necessary, and the mathematical
requirement is first-year algebra.
In this text, we show beginning students every step needed to be successful in
a basic statistics course. This step-by-step approach enhances performance, accelerates
preparedness, and significantly improves motivation. Understanding the
concepts, seeing and doing plenty of examples and exercises, and comprehending
the application of statistical methods in business and economics are the focus of
this book.
The first edition of this text was published in 1967. At that time, locating relevant
business data was difficult. That has changed! Today, locating data is not a problem.
The number of items you purchase at the grocery store is automatically recorded at
the checkout counter. Phone companies track the time of our calls, the length of calls,
and the identity of the person called. Credit card companies maintain information on
the number, time and date, and amount of our purchases. Medical devices automatically
monitor our heart rate, blood pressure, and temperature from remote locations.
A large amount of business information is recorded and reported almost instantly.
CNN, USA Today, and MSNBC, for example, all have websites that track stock prices
in real time.
Today, the practice of data analytics is widely applied to “big data.” The practice
of data analytics requires skills and knowledge in several areas. Computer skills are
needed to process large volumes of information. Analytical skills are needed to
evaluate, summarize, organize, and analyze the information. Critical thinking skills
are needed to interpret and communicate the results of processing the
information.
Our text supports the development of basic data analytical skills. In this edition,
we added a new section at the end of each chapter called Data Analytics. As you
work through the text, this section provides the instructor and student with opportunities
to apply statistical knowledge and statistical software to explore several business
environments. Interpretation of the analytical results is an integral part of these
exercises.
A variety of statistical software is available to complement our text. Microsoft Excel
includes an add-in with many statistical analyses. Megastat is an add-in available for
Microsoft Excel. Minitab and JMP are stand-alone statistical software available to download
for either PC or MAC computers. In our text, Microsoft Excel, Minitab, and Megastat
are used to illustrate statistical software analyses. When a software application is presented,
the software commands for the application are available in Appendix C. We use
screen captures within the chapters, so the student becomes familiar with the nature of
the software output.
Because of the availability of computers and software, it is no longer necessary to
dwell on calculations. We have replaced many of the calculation examples with interpretative
ones, to assist the student in understanding and interpreting the statistical results.
In addition, we place more emphasis on the conceptual nature of the statistical topics.
While making these changes, we still continue to present, as best we can, the key concepts,
along with supporting interesting and relevant examples. |
---|