Difference between revisions of "SMHS SciVisualization"

From SOCR
Jump to: navigation, search
(SOCR, Excel and R Charts)
Line 32: Line 32:
 
http://www.socr.umich.edu/CSCD/html/Cores/Macore2/SciViz.html
 
http://www.socr.umich.edu/CSCD/html/Cores/Macore2/SciViz.html
  
===[[SMHS_SciVisualization_SOCR_Excel_R_Charts|SOCR, Excel and R Charts]]===
+
==[[SMHS_SciVisualization_SOCR_Excel_R_Charts|SOCR, Excel and R Charts]]==
  
 
===[[SMHS_SciVisualization_NetworkViz|Complex Network Visualization]]===
 
===[[SMHS_SciVisualization_NetworkViz|Complex Network Visualization]]===

Revision as of 08:52, 19 May 2016

Scientific Methods for Health Sciences - Scientific Visualization

Questions

  • How and why should we “look” at data?
  • What data characteristics are important for exploratory data analytics (EDAs)?
  • Scientific Data-driven or Simulation-driven visualization methods may be classified in many alternative ways. Visualization techniques can be classified according to many criteria:

    SMHS SciVisualization1.png

    • Data Type: structured/unstructured, small/large, complete/incomplete, time/space, ascii/binary, Euclidean/non-Euclidean, etc.

    • Task type: Task type is one of the aspects considered in classification of visualization techniques, which provides means of interaction between the researcher, the data and the display software/platform

    • Scalability: Visualization techniques are subject to some limitations, such as the amount of data that a particular technique can exhibit

    • Dimensionality: Visualization techniques can also be classified according to the number of attributes

    • Positioning and Attributes: the distribution of attributes on the chart may affect the interpretation of the display representation, e.g., correlation analysis, where the relative distance among the plotted attributes is relevant for observation

    • Investigative Need: the specific scientific question or exploratory interest may also determine the type of visualization:

    o Examining the composition of the data

    o Exploring the distribution of the data

    o Contrasting or comparing several data elements, relations, association

    o Unsupervised exploratory data mining

    http://www.socr.umich.edu/CSCD/html/Cores/Macore2/SciViz.html

    SOCR, Excel and R Charts

    Complex Network Visualization




    Translate this page:

    (default)
    Uk flag.gif

    Deutsch
    De flag.gif

    Español
    Es flag.gif

    Français
    Fr flag.gif

    Italiano
    It flag.gif

    Português
    Pt flag.gif

    日本語
    Jp flag.gif

    България
    Bg flag.gif

    الامارات العربية المتحدة
    Ae flag.gif

    Suomi
    Fi flag.gif

    इस भाषा में
    In flag.gif

    Norge
    No flag.png

    한국어
    Kr flag.gif

    中文
    Cn flag.gif

    繁体中文
    Cn flag.gif

    Русский
    Ru flag.gif

    Nederlands
    Nl flag.gif

    Ελληνικά
    Gr flag.gif

    Hrvatska
    Hr flag.gif

    Česká republika
    Cz flag.gif

    Danmark
    Dk flag.gif

    Polska
    Pl flag.png

    România
    Ro flag.png

    Sverige
    Se flag.gif