Difference between revisions of "CS382:Unit-mashup"
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== Reading Assignments for Students == | == Reading Assignments for Students == | ||
+ | * Needs to be created I think | ||
== Reference Material == | == Reference Material == |
Revision as of 23:40, 24 March 2009
Data Visualization
Overview
The goal of this unit is to teach students to:
- Understand the goals of visualization.
- Know what the issues involved in visualization are.
- Be able to recognize and reason about the different types of visualization.
- Be introduced to a sampling of the tools used to visualize data.
Background Reading for Teachers and TAs
- web tool for non-programmers for making mashups
- chapter 1 of book on power of geo mashups
- Wikipedia page on Information Visualization
- Wikipedia page on Visualization
- "The Visual Display of Quanitative Information" by Edward Tufte
- "Visualizing Data" by William Cleveland
Reading Assignments for Students
- Needs to be created I think
Reference Material
Lecture Notes
- Introduction
- At this point students have already created/worked with a couple models and created basic graphs to visualize them. Talk about how even with just the simple models created so far, understanding the data is hard without having a visual representation of it.
- Visualization is a graphical representation of data for the purpose of allowing humans to understand aspects of the data.
- Couple of illustrative but basic graphs as examples.
- Tufte's aspects of visualization, just a run through (From "The Visual Display of Quanitative Information"):
- Show the data.
- Induce the viewer to think about the substance rather than about the methodology, graphic design, the technology of graphic production, or something else.
- Avoid distorting what the data have to say.
- Present many numbers in a small space.
- Make large data sets coherent.
- Encourage the eye to compare different pieces of data.
- Reveal the data at several levels of detail, from broad overview to the fine structure.
- Serve a reasonable clear purpose: description, exploration, tabulation, or decoration.
- Be closely integrated with the statistical and verbal descriptions of a data set.
- Show some more complex examples like the Napoleon one, an interesting mashup.
- Issues of visualization
- Objective. There is always a goal or objective when visualizing by which one can judge effectiveness. In this class I don't think things like marketing should be mentioned but certainly the difference between using visualization to explore data and to explain data to others.
- Data Selection. When given a set of data, often one wants to single in on a subset of that data to look at.
- Psychology. Visualization is fundamentally about how humans perceive visual information so you have to think about the ways in which you want to take advantage of human psychology.
- Systemization. While elaborate visualizations like the Napoleon one are very compelling, in Computer Science we are often more interested in visualizations that can be systematically generated.
- Go through a couple of examples of creating visualizations referring back to Tufte's list and the issues.
- Types of Visualizations (A sampling)
- Tables
- Graphs
- Charts
- Sparklines
- Time Series
- Data maps and mashups
Lab
Use online tools to generate tabular data from the U.S. Census and then use R to explore visualization.
- Use a web site for generating census tables and walked through generating a predetermined table.
- Load up R and generate simple pie charts and bar graphs using the predetermined table
- Use provided tools in R for generating other types of more complex graphs (e.g. Trellis plots), apply them to the data, and then explain the differences between them.
- Use the web site to come up with your own data sets and play around with generating different visualizations in R.
- Come up with 1 or 2 interesting examples and explain why you used the visualization you used and what you learned from the visualization.
Software
- R
Bill of Materials
Evaluation
CRS Questions
- Whats the best type of visualization for X set of data?
- XXX
- XXX
Quiz Questions
- XXX A question.
Visualizing Data - Metadata
XXX This section contains information about the goals of the unit and the approaches taken to meet them.
Scheduling
Doesn't matter.
Concepts and Techniques
XXX This is a placeholder for a list of items from the context page.
General Education Alignment
- Analytical Reasoning Requirement
- Abstract Reasoning - From the [Catalog Description] Courses qualifying for credit in Abstract Reasoning typically share these characteristics:
- They focus substantially on properties of classes of abstract models and operations that apply to them.
- XXX Analysis of this unit's support or not for this item.
- They provide experience in generalizing from specific instances to appropriate classes of abstract models.
- XXX Analysis of this unit's support or not for this item.
- They provide experience in solving concrete problems by a process of abstraction and manipulation at the abstract level. Typically this experience is provided by word problems which require students to formalize real-world problems in abstract terms, to solve them with techniques that apply at that abstract level, and to convert the solutions back into concrete results.
- XXX Analysis of this unit's support or not for this item.
- They focus substantially on properties of classes of abstract models and operations that apply to them.
- Quantitative Reasoning - From the [Catalog Description] General Education courses in Quantitative Reasoning foster students' abilities to generate, interpret and evaluate quantitative information. In particular, Quantitative Reasoning courses help students develop abilities in such areas as:
- Using and interpreting formulas, graphs and tables.
- XXX Analysis of this unit's support or not for this item.
- Representing mathematical ideas symbolically, graphically, numerically and verbally.
- XXX Analysis of this unit's support or not for this item.
- Using mathematical and statistical ideas to solve problems in a variety of contexts.
- XXX Analysis of this unit's support or not for this item.
- Using simple models such as linear dependence, exponential growth or decay, or normal distribution.
- XXX Analysis of this unit's support or not for this item.
- Understanding basic statistical ideas such as averages, variability and probability.
- XXX Analysis of this unit's support or not for this item.
- Making estimates and checking the reasonableness of answers.
- XXX Analysis of this unit's support or not for this item.
- Recognizing the limitations of mathematical and statistical methods.
- XXX Analysis of this unit's support or not for this item.
- Using and interpreting formulas, graphs and tables.
- Abstract Reasoning - From the [Catalog Description] Courses qualifying for credit in Abstract Reasoning typically share these characteristics:
- Scientific Inquiry Requirement - From the [Catalog Description] Scientific inquiry:
- Develops students' understanding of the natural world.
- XXX Analysis of this unit's support or not for this item.
- Strengthens students' knowledge of the scientific way of knowing — the use of systematic observation and experimentation to develop theories and test hypotheses.
- XXX Analysis of this unit's support or not for this item.
- Emphasizes and provides first-hand experience with both theoretical analysis and the collection of empirical data.
- XXX Analysis of this unit's support or not for this item.
- Develops students' understanding of the natural world.
Scaffolded Learning
XXX Some prose.
Inquiry Based Learning
XXX Some prose.