This document provides an introduction to analytics. It discusses the objectives of the course which are to analyze contexts, qualify available data, apply appropriate methodologies, and integrate visual communications. It also provides an agenda that covers data types, structures, big data, and the Fourth Industrial Revolution. The document directs readers to other resources on data science, decision making, and using data in management.
4. This a place where managers and
students of management can discuss
and debate best practises in the digital
economy, new developments in data
science and decision making. Ask
questions and get practicable
answers, and learn how to use data in
decision making.
Analytics for Management
https://www.linkedin.com/
groups/13536539
Introduction
6. • “The truth is, 9 out of 10
startups fail.”
• Behind every statistic is an
opinion:
• What to measure and
how to collect the data
• How to interpret,
visualize, and present the
results
• Where to distribute the
results and amplify the
reach
• How to finance the
analysis….
We are what we measure (2017)
Data Types
Carine Carmy
7. • More data has been created in the
past two years than in the previous
history of the human race
• « Strategists still confuse
technology with purpose … instead
of garnering context and empathy
to inform change…” - Brian Solis
What is data?
Data Types
8. Categorical (nominal) Data
Data placed in categories according to
a specified characteristic
Categories bear no quantitative
relationship to one another
Examples:
- customer’s location (America,
Europe, Asia)
- employee classification (manager,
supervisor,
associate)
Ordinal Data
Data that is ranked or ordered according to
some relationship with one another
No fixed units of measurement
Examples:
- football rankings
- survey responses
(poor, average, good, very good, excellent)
Ratio Data
Continuous values and have a natural
zero point
Ratios are meaningful
Examples:
- monthly sales
- delivery times
Interval Data
Ordinal data but with constant differences
between observations
No true zero point
Ratios are not meaningful
Examples:
- temperature readings
- SAT scores
Data Types
10. • From an objective point of view, information
refers to date in context that conveys
meaning to an individual.
• From a subjective point of view, we could
suggest that it’s the individual’s perspective of
the data that implies meaning.
• Given these definitions what meaning do
Wikileaks, Facebook or Whatapp have?
Assane, The Conversation
Structures
11. • Structured data refers to data that can be easily represented in
textual/numeric form and stored in a database.
• Structured data is often logically organized around a data model or
data object.
• Such models permit companies to compare and aggregate data in
databases, datamarts and data warehouses.
Structures
12. • Data is considered « non-structured » if we
can’t predefine its attributes and store it in
a table or data base
• Examples of this kind of data include press
clippings, videoclips, and songs
• In reality, this data isn’t « non-structured » -
its just that its attributes involve
« complex » relationships
http://jean.marie.gouarne.online.fr/bi.html
Structures
15. • How does the author define
the “Fourth Industrial
Revolution”?
• The concept of looking
“outside-in” suggests that we
must understand the shifting
business context affects our
work, our careers and our
business. Give at least one
example.
• What are digital natives and
how do they look at business
differently?
• How are values changing in a
digitally intermediated world?How Business Can Thrive
in the Digital Economy (2016)
Revolution?