BANA6037 Data Visualization Fall Semester 2014 (14FS) / First Half Session Section 001 S 9:00a- 12:50p Lindner 107



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BANA6037 Data Visualization Fall Semester 2014 (14FS) / First Half Session Section 001 S 9:00a- 12:50p Lindner 107 Instructors: Jeffrey A. Shaffer Vice President, IT and Analytics, Unifund JeffreyShaffer@gmail.com 513.615.0001 Eric Duell Practice Lead, Analytics and Intelligence, Clear Measures eric.duell@uc.edu 513.293.1905 Required Course Materials Text: Provided by Instructors Suggested Materials (in order) The Wall Street Journal Guide to Information Graphics: The Dos and Don ts of Presenting Data, Facts, and Figures Dona M. Wong, W. W. Norton & Company (2010) Information Dashboard Design: Displaying Data for At- a- Glance Monitoring Stephen Few, O Reilly Media (2013) Show Me the Numbers: Designing Tables and Graphs to Enlighten Stephen Few, Analytics Press (2004) Visualize This: The Flowing Data Guide to Design, Visualization, and Statistics Nathan Yau, Wiley (2011) Now You See It, Stephen Few, Analytics Press (2009) The Visual Display of Quantitative Information, Edward Tufte, Graphics Press, 2 nd Edition (2001) Suggested Feeds/Blog Subscriptions VIz of the Day by Tableau Software Flowing Data by Nathan Yau The Functional Art by Alberto Cairo Perceptual Edge by Stephen Few Summary This course provides an introduction as well as hands- on experience in data visualization. It introduces students to design principles for creating meaningful displays of quantitative and qualitative data to facilitate managerial decision- making. Course Objectives Provide an overview and brief history of the practice of data visualization Introduce students to the key design principles and techniques for visualizing data Develop an understanding of the fundamentals of communication and alignment around concepts that are required for effective data presentation Provide an overview and develop an introductory level of competency on the use of several available software tools that can be used for data visualization Allow for project- based opportunities to identify, understand, analyze, prepare, and present effective visualizations on a variety of topics Page 1 of 9

Course Prerequisites General computer skills and a familiarity with charting tools like Microsoft Excel are necessary, along with access to the Internet for research and data gathering. Direct access to a computer on which the student can install software is highly recommended (see Required Software below) An understanding of basic charting and statistical terms and practices will be helpful, but not required. Student Outcomes After taking this course, students should be able to collect and process data, create an interactive visualization, and use it to demonstrate or provide insight into a problem, situation, or phenomenon. Moreover, students should have the basic knowledge needed to critique various visualizations (good and bad), and to identify design principles that make good visualizations effective. Students should also have a basic understanding of some of the challenges present in making data understandable across a wide range of potential audiences. Finally, students will have the opportunity to demonstrate their own skills in identifying a visualization that can be improved, completing their own design and/or analysis on the underlying data, and working to publish or promote acceptance of their presentation. Course Format Students will read class material, study best and worst practices, compare and contrast real- world examples, engage in problem solving, listen to guest lectures (if scheduled) and participate in discussions related to the course material. Students will also practice applying the techniques and best practices discussed to real- world problems. Required Software A significant amount of time that students spend completing their assignments will involve the use of visualization software. Instruction will be focused and directed based on the capabilities/features of: Tableau Desktop Professional (TFT License), Student License or Tableau Public Microsoft Excel (Win 2007/Mac 2008 or Win 2010/Mac 2011 or Win 2013) These tools are relatively easy to use and students will be able to learn the basic features of one or more of these through self- directed studies or by using available resources online. The instructors are also willing to help with specific questions or techniques as needed. Students may use any technology platform for their projects, as long as work is presentable for in class review, and accessible for review by the course instructors. If there is any question about whether work can be accessed for review or presentation (e.g., if it is not created in one of the software tools listed above), you must check with the instructor prior to submitting your work. Microsoft Windows and Excel can be purchased from the University Bookstore for a nominal charge if needed. A fully licensed version of Tableau Desktop is made available to each student for the duration of the class, or if preferred, the student may use the freely available Tableau Public software. Microsoft Excel and Tableau Desktop Professional are available for both Apple Macintosh and Windows operating systems. Page 2 of 9

Expectations of Students Students are expected to prepare and participate by: 1. Reading scheduled assignments each week 2. Participating in class discussions, projects, and exams 3. Completing the assigned homework projects by the due date Students are expected to complete each test, exam, homework, and all other assignments independently. The student s submissions must represent his or her individual work, and citations must be provided where content from other sources is referenced. At the discretion of the instructors, students may be allowed to form groups for the purpose of completing specific assignments. These will be announced if and when they occur. If multiple group projects are allowed, you must have a completely different set of group members for each project (i.e., any student that you serve with on one group cannot be a member of another group in which you later participate). Also, you may not re- use a data set from one project to another; you must start with a completely new data set each time. Academic Integrity If there is a question about the academic integrity of a submission, or if it is believed that a submission does not fully represent the unique work of the student or approved group members, the instructors will take all appropriate action in accordance with the university policy on Academic Misconduct and Plagiarism (http://www.uc.edu/conduct/academic_integrity.html). This includes issuance of an F grade for the course. Group projects should be collaborative only within your group and not shared between groups. Performance Evaluation Course grades will be determined as follows: % Points 1) Homework Halloween Chart (Individual) 10% 100 pts 2) Homework Data Model Creation (Individual) 3) Test on Fundamentals (Individual) 10% 20% 100 pts 200 pts 4) In- class Lab (Group) and Presentation 10% 100 pts 5) Project 1 (Group or Individual) 10% 100 pts 6) Project 2 - Final Interactive Data Visualization and Presentation (Group) 40% 400 pts Total: 100% 1,000 pts Extra credit (one opportunity allowed for extra credit per student, see below) Up to 3% Up to 30 pts Grading Scale 93% - 100% A Please see the Grading Rubric for information on how points 90% - 92.9% A- will be awarded for visualization, project, and lab assignments. 87% - 89.9% B+ Points for Data Model Creation (#2) and Test on Fundamentals (#3) 83% - 86.9% B will be awarded as marked on the assignment. 80% - 82.9% B - Below 80% C Below 70% F All students have the same opportunity to earn points in the course. Any questions regarding grading must be addressed within one week of return of the graded assignment, quiz or exam to the student. Page 3 of 9

Group Member Feedback and Grading For group projects, the instructors may allow for members to provide feedback on contributions and work effort of other group members. This feedback may be taken into account in issuing individualized grades for group projects. In other words, the input of your group members may positively or negatively affect your grade on these projects. If group feedback will be considered as part of the grading schema for a specific project, the instructors will inform the class prior to the start of the project. Extra Credit Assignment Each student has an opportunity to earn extra credit by completing one additional assignment. The subject / topic and data set used must be approved by the instructors, and work on the extra credit assignment must be by individual only (no group extra credit assignments). Students may select one of the two options below for their extra credit assignment. Please note that you must complete all requirements of the assignment to be eligible for full credit: 1) Redesign an existing chart or visualization BLOG ENTRY a. Identify an existing visualization and/or dataset (for example, information about schools performance in Ohio, economic reports, government or corporate report, etc.) that you feel could be better analyzed or visualized to tell a more compelling, interesting, or more complete story. b. Redesign or create one or more new charts/visualizations c. Write a blog article explaining your redesign, showing before and after examples, and include what you believe to be the benefits of your approach d. Publish the article yourself on your own blog, or have your article published on an industry- related blog or site. 2) Create an Infographic a. Identify a dataset (for example, information about schools performance in Ohio, economic reports, government or corporate report, etc.) that would make a good infographic b. Redesign or create an infographic using the dataset you found c. Write a blog article explaining your graphic and what you believe to be the benefits of your approach d. Publish the article yourself on your own blog, or have your article published on an industry- related blog or site. Tests and Exams The tests and exams will be cumulative covering all concepts covered during classes. Students will be expected to apply the course learning to real- world data, create appropriate visualizations for the data, critique and recreate visualizations and be able to identify not- so- best practices and redesign and present with best practices. Tests and exams must be taken and on the date specified in the course calendar unless the instructor grants approval of a make- up exam PRIOR to that date. Without prior approval, make- up opportunities are limited to documented emergencies. Instructor discretion is used in determining whether a situation constitutes an emergency. Page 4 of 9

Projects Through a variety of projects, we will analyze best practices and compare and contrast with not- so- best practices. Students will learn to critique good and bad data visualizations and will be required to create and recreate various data visualizations using various sets of data. The final project will be interactive in nature and not simply a static chart. Points will be deducted for final projects that are not interactive. Homework Homework assignments will be given in this class and are due by the date and time indicated in the syllabus or as indicated by the instructors. Submission of Homework and Project Deliverables Students must submit all required assignments and supporting work via Blackboard. The submission time listed in Blackboard will be used to determine whether an assignment is on time or late. If multiple submissions are received, the final submission will be considered for grading (along with determining if the assignment was submitted on time). For group projects, the designated spokesperson is responsible for submitting all materials on behalf of the group. Late Assignments Late assignments will receive a deduction of 5% per day, beginning with a 5% deduction for assignments turned in past the date and time due. Assignments more than 3 days late will not be accepted. Adjustments to Assignments, Schedule, and Syllabus The scope, timing, and due date/time of any assignments, projects, homework, exams, or any other required work may be adjusted by the instructors as needed to maximize learning opportunities for students and/or better serve the goals of the course. The syllabus may likewise be modified at the discretion of the instructors. Any adjustments will be communicated to students in class and on Blackboard with as much advance notice as possible. Page 5 of 9