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Parallel Coordinates

Parallel Coordinates. Representation of multi-dimensional data Discovery Process xmdv Visualization Tool. Ganesh K. Panchanathan Christa M. Chewar. Cartesian Vs. Parallel Coordinates. 1500. 1500. 1500. Price($). 0. 0. Speed( Mhz) 1500.

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Parallel Coordinates

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  1. Parallel Coordinates Representation of multi-dimensional data Discovery Process xmdv Visualization Tool Ganesh K. Panchanathan Christa M. Chewar

  2. Cartesian Vs. Parallel Coordinates 1500 1500 1500 Price($) 0 0 Speed( Mhz) 1500 Speed(Mhz) Price($)

  3. 473 Items, 16 Dimensions X1 Yield X2 Quality X3 - X12 Defects X13 - X16 Physical Parameters

  4. The Discovery Process • Identify and understand Objectives • Combine atomic queries to form complex queries Isolate batches with high X1 and X2 Batches with low X3 do not have high yield and quality

  5. Isolate batches with Zero Defects in 9 attributes All 9 batches have poor yield, quality Process sensitive to changes in X6 Isolate batches with Zero Defects in 8 attributes Small amounts of X3 and X6 defects necessary for high yield and quality

  6. Further Insights Higher Range of split in X15 • Low Yield • Inconsistent Quality Lower Range of split in X15 • High Yield • High Quality

  7. Conclusion To get high yield and quality : Small Ranges of defects X3 and X6 are necessary Lower range of physical parameter X15

  8. XMDV Tool

  9. Grading Data

  10. Pros • Simplicity in Representation ( x D  2 D) • Scalability ( any N) • Visual cues from items having similar properties • Uniform treatment of all variables • Finds relationships between variables • Combine atomic queries to form complex query Cons • Difficulty with large data sets

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