‘Externalizing Abstract Mathematical Models’ Lisa Tweedie,Robert Spence, Huw Dawkes and Hua Su Department of Electrical Engineering, Imperial College Of.

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Presentation transcript:

‘Externalizing Abstract Mathematical Models’ Lisa Tweedie,Robert Spence, Huw Dawkes and Hua Su Department of Electrical Engineering, Imperial College Of Science,Technology and Medicine London,UK. Conference proceedings on Human factors in computing systems, 1996, Page 406

Data Interactive Visualization Artifacts{IVAs} - Environments for problem solving Visualization of precalculated or generated data from abstract mathematical models. Not Raw Data

Application Domain - Engineering Design Mantra - Multiple ways of interactively linking simple graphs

Mission Optimize the Performance values by specifying the tolerance range of the Parameter variables. Overall Design Objective Parameters, Performances

The Influence Explorer Population of 600 precalculated light bulb designs Performances -- Horizontal Histograms to the Left Parameters -- Vertical Histograms to the Right

The Prosection Matrix Projection of a section of parameter space Alternative Perspective of the same precalculated data Scatter plots arranged in a matrix Each scatter plot corresponds to a pair of possible parameter combination All combinations { 4C 2 } of 4 parameters represented

Projection of a section of parameter space

Visualization when the parameters are set

High yield and Wider tolerances

Formative evaluation Number of tests at different development stages Ten pairs of participants Tested first with Influence Explorer then with Prosection Matrix and then with Both Each pair could complete a tolerance task in 30 min

Lessons Maximize directness of interactivity Seek crucial information and give it a simple and pertinent representation Trade off between amount of information, accuracy and simplicity

Merits Initial Qualitative Understanding Performance Trade offs known with lesser effort Quantitative Detail becomes clear by the color coding. Parameter tolerance ranges defined with ease

Demerits Specific Requirements are hard to be visualized by color coded points Hard to use without proper training Designer’s experience is not enhanced

HCI Metrics User Performance **** Error recovery **** User satisfaction ? Learning Time * Retention ****