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ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved SpiderCluster © Analysis All Organizations... Marketing, Finance, Medical, Science, Law, Business, describe problems and define opportunities using many independent data types (multi=variable) As an example, Coffee Beans are multi-variable data types! Let’s look at (multi-variable) Coffee Bean ‘spider’ graphs... BTW, you’ve seen ‘spider’ graphs in many fields... purchasing agents use them to rate vendors... On-Time Delivery, Pricing, Quality, Reliability, etc.... is a new, multi-variable data analysis tool

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved --- Spider ( Web ) Graph --- A mild coffee like this Island-profile type will typically have fewer "points" on the blue Flavor Quality graph, and they are lower in intensity and/or very subtle in quality so the overall blue Web will be smaller/tighter to the center. A very bold coffee with a lot of complexity, and many flavor descriptors, will have more "points" on the Flavor Quality graph, and will span farther out from the center, meaning these qualities have greater intensity. Web "roundness“, or lack thereof, does not communicate any lack of quality, but might mean that one dimension of the coffee is missing, i.e., body. dimension 7 Spokes ( 7- Dimensions )10 Spokes ( 10- Dimensions ) Scarce Ideas converts each Spider to a Single Point in a High-Dimensional space Thus... Similar Spiders appear as Clustered Points in that High-Dim space Such SpiderClusters © reveal the hidden Order among Spiders

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved 7 Spokes ( 7- Dimensions ) A Single (3D) Point Let’s plot Jamaica Blue Mountain... in 3 Dimensions Any 3 (of the 7) Jamaica Blue Mountain Spokes... can plot as a Single (3D) Point QUESTION: What about the remaining 4 Spokes ( 4-Dimensions ) of the Jamaica Blue Mountain Spider?

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved 7 Spokes ( 7- Dimensions ) A Single 3D Point Let’s Plot 3 Dimensions of Jamaican Blue Mountain You’ll need your Imagination since:... no one can see 7-Dimensions ! However (mathematically), we can create a Single, 7D point ! Imagine plotting ALL 7-Dimensions A Single, 7D Point

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved 7 Spokes ( 7- Dimensions ) A Single 3D Point Let’s Plot 3 Dimensions of Jamaican Blue Mountain You will need your Imagination since:... No one can “see” 7- Dimensions ! However (mathematically), we can create a Single, 7D point ! Now, Imagine plotting ALL 7- Dimensions A Single 7D Point Jamaica Blue Mountain beans from several vendors might cluster in 7-Dims When they do, this is called a SpiderCluster © SpiderClusters © reveal (detect) similar Spiders... allowing multi-vendor sourcing of Coffee Beans SpiderCluster ©

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved What do higher dimensions reveal ? and What do SpiderClusters © “look like” ?

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved Higher Dimensions (beyond the 2 nd dimension) … Why? … What do they mean? Higher Dimensions can UnKnot Lower Dimensional Data Patterns … i.e., … a Data KNOT may display Patterns in Higher Dimensions … i.e., … a Data KNOT may display Patterns in Higher Dimensions Example... UnKnotting via the 3rd Dim

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved 3,000 Random Points 300 ORDERED (Clustered) Points Data Cluster A Data Pattern The 3-Dim Sphere … 3-Dim Data / Patterns

ScarceIdeas.com Copyright © 2007 Scarce Ideas, LLC. - All rights reserved If you would like Scarce Ideas, LLC to apply SpiderCluster © Analysis in your organization, visit us at... ScarceIdeas.com or, contact us at... Direct: If you would like Scarce Ideas, LLC to apply SpiderCluster © Analysis in your organization, visit us at... ScarceIdeas.com or, contact us at... Direct: