Presentation is loading. Please wait.

Presentation is loading. Please wait.

cs5984: Information Visualization Chris North

Similar presentations


Presentation on theme: "cs5984: Information Visualization Chris North"— Presentation transcript:

1 cs5984: Information Visualization Chris North
Trees cs5984: Information Visualization Chris North

2 Review Data space: Interaction strategies: Design guidelines
Multi-dimensional 1-D space 2-D space Interaction strategies: Dynamic Queries Multiple views, brushing & linking Visual overviews Zooming, overview+detail, focus+context Design guidelines Empirical Evaluation

3 Next Data space: Workspaces Theory … 3-D Trees Networks
Document collections Workspaces Theory

4 Trees (Hierarchies) What is a tree? Examples Tasks Items + structure
Add parent pointer attribute Examples Family trees, Directories, Org charts, biology taxonomy, menus Tasks All previous tasks plus structure-based tasks: Find descendants, ancestors, siblings, cousins Overall structure, height, breadth, dense/sparse areas

5 Tree Visualization Example: Outliner Why is tree visualization hard?
Structure AND items Structure harder, consumes more space Data size grows very quickly (exponential) #nodes = bheight

6 2 Approaches Connection (node & link) Containment (node in node)
Structure vs. attributes Attributes only (multi-dimensional viz) Structure only (1 attribute, e.g. name) Structure + attributes A B C A B C

7 Outliner Good for directed search tasks
Not good for learning structure No attributes Apx 50 items visible Lose path to root for deep nodes

8 Mac Finder Branching factor: Small large

9 Today Rao, “Hyperbolic Tree”, book pg 382 Joy, maulik

10 Nifty site of the day: X-Files

11 ConeTree / CamTree Video CHI’91

12 WebTOC Website map: Outliner + size attributes

13 PDQ Trees Overview+Detail of 2D layout
Dynamic Queries on each level for pruning

14 PDQ Trees

15 Assignment Read for Thurs Homework #2 due Thurs Spring Break!
Johnson, “Treemaps”, book pg 152 Stasko, “Sunburst”, web Marcus, marty Homework #2 due Thurs Spring Break! Read for Tues (Mar 13) Beaudoin, “Cheops”, web Satya, sumithra Furnas, “Fisheye View”, book pg 311

16 Scenario: Visualizing Biotech Data
Database of experiments on DNA 1000 experiments? DNA = long sequence of letters A,C,T,G 100,000 – 1,000,000 letters Experiment = data values for set of sub-sequences 1000 sub-sequences, letters / sub-sequence Tasks: Find experiments given criteria Find patterns between known set of experiments Find related experiments Find trends in experimentation DNA: AAGTGTTCCGAAATGCAAAAATAGACCCAAAGA… Experiment: (5-50)=1.4, (72-112)=0.2, …


Download ppt "cs5984: Information Visualization Chris North"

Similar presentations


Ads by Google