Visual cognitive algorithms for high-dimensional data and super-intelligence challenges |
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Affiliation: | 1. Faculty of Electrical Engineering, Mathematics and Computer Science, TU Delft, Mekelweg 4, 2628 CD Delft, Netherlands;2. TNO, Kampweg 5, 3769 DE Soesterberg, Netherlands;3. CINOP, Stationsplein 14, 5211 AP Den Bosch, Netherlands;4. ECBO, Stationsplein 14, 5211 AP Den Bosch, Netherlands;1. University of Texas at Austin, United States;2. University of Texas at Arlington, United States;1. Petru Maior University of Tirgu Mures, Romania;2. Tampere University of Technology, Finland;3. Istanbul University, Turkey |
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Abstract: | ![]() In the long run the cognitive algorithms intend to make super-intelligent machines and super-intelligent humans. This paper presents a technical process to reach specific aspects of super-intelligence that are out of the current human cognitive abilities. These aspects are inabilities to discover patterns in large numeric multidimensional data with a naked eye. This is a long-standing problem in Data Science and Modeling in general. The major obstacle is in human inability to see n-D data by a naked eye and our needs in visualization means to represent n-D data in 2-D losslessly. While these means exist their number and abilities are limited. This paper expands the class of such lossless visual methods, by further developing a new concept of Generalized Shifted Paired Coordinates. It shows the advantages of proposed reversible lossless technique by representing real data and by proving mathematical properties. |
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Keywords: | Cognitive algorithms High-dimensional data Visualization Machine learning, generalized coordinates, super-intelligence |
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