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Transcript
Writing Intensive
Engaged Learning
Business Analytics Class
MARY MALLIARIS
LOYOLA UNIVERSITY CHICAGO
PRESENTATION FOR SEDSI 2017
Student & Class Levels
Student: junior/senior level
Type of Class:
 Counts toward IS major
 Not required (one of a number of electives),
 All students would have had Statistics and Intro to
Information Systems
 Class is capped at 24
Why Writing Intensive/Engaged Learning?

Employers are asking for more communication skills
(oral and written),

All students at Loyola are required to take at least two
writing intensive classes; one must be in their major.

The University has a requirement that all students
complete at least one engaged learning class.
Major class requirements

Analytics techniques (we used IBM’s SPSS Modeler)

Read case & write response each week

2 short presentations in class about cases

Team research project

Symposium presentation
Team Project

A practical learning experience in developing and
delivering a research project in data mining &
analytics.

Students had to decide on a problem, describe their
data collection and manipulation, analysis process,
and the potential benefits of expected findings
The Final Project Write-up Included

Question that was driving the analysis

Data selection, origin and manipulation

Technique(s) used for the analysis and why

Results from the technique

The answer or action for the initial problem addressed

Discussion of how they would judge the effect of their
solution if implemented
Weekly Template: Monday

Analytics technique and practice (class in the lab)

For example: Association Analysis, Cluster Analysis,
Decision Trees, Neural Networks, Logistic Regression,
Support Vector Machines
Weekly Template: Wednesday

Case paper using Monday’s technique

Each week: All students wrote a short criticism of the
paper, as though they were a journal editor, focusing
on both the strong and the weak points in the analysis
and writing.

These were due before class on Wednesday.
Weekly Template: Wednesday

One person was designated as lead presenter and one as
lead critic. Each gave a short overview in class.

The lead presenter: presentation of the research story and
results; emphasis on the best of the writing style

The lead critic: the weak points with emphasis on the worst
parts of the writing, research, and results.

After these, the class was opened for discussion of the paper
overall and we talked about each section’s good and bad
points.
Weekly Template: Friday
Team assignment day for work on their project
 Identify problem
 Collect data, clean, join, modify
 Collect references
 Write paper parts (abstract, introduction, literature review,
data and model, results, conclusion, recommendation for
future research)
 To discourage “free riders”, assignment was due before class
(individual) and after class (team)

Example papers:
Technique: Association Analysis
Market basket analysis of crash data from large
jurisdictions and its potential as a decision support tool
Technique: Cluster Analysis
A cluster analysis of service utilization and incarceration
among homeless youth
Example papers:
Technique: Decision Trees
Financial profiling of public hospitals
Technique: Neural Networks
Neural Networks in Basketball Scouting
Technique: Regression
Childhood and Adolescent Television Viewing and
Antisocial Behavior in Early Adulthood
Sample Student Projects:

A Neural Network Analysis of U.S. Voter Turnout Rates

Entrepreneurship and Business Success in Chicago

Association Analysis of Age, Race and Gender in
Unemployment Rates across the United States

Crime in the Windy City: A Loyola Student’s Guide to
Off‐Campus Crime
Student Responses

Enjoyed being able to criticize other’s work

Felt more empowered

Liked working on a problem that had direct implications in
the world

Thought they were more connected to Loyola after
symposium presentation
Questions?
QUESTIONS?