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Data Mining in Scientific Data

  • Stephan Rudolph
  • Peter Hertkorn
Part of the Massive Computing book series (MACO, volume 3)

Abstract

Knowledge discovery in scientific data, i.e. the extraction of engineering knowledge in form of a mathematical model description from experimental data, is currently an important part in the industrial re-engineering effort for an improved knowledge reuse. Despite the fact that large collections of data have been acquired in expensive investigations from numerical simulations and experiments in the past, the systematic use of data mining algorithms for the purpose of knowledge extraction from data is still in its infancy.

In contrary to other data sets collected in business and finance, scientific data possess additional properties special to their domain of origin. First, the principle of cause and effect has a strong impact and implies the completeness of the parameter list of the unknown functional model more rigorous than one would assume in other domains, such as in financial credit-worthiness data or client behavior analyses. Secondly, scientific data are usually rich in physical unit information which represents an important piece of structural knowledge in the underlying model formation theory in form of dimensionally homogeneous functions.

Based on these features of scientific data, a similarity transformation using the measurement unit information of the data can be performed. This similarity transformation eliminates the scale-dependency of the numerical data values and creates a set of dimensionless similarity numbers. Together with reasoning strategies from artificial intelligence such as case-based reasoning, these similarity number may be used to estimate many engineering properties of the technical object or process under consideration. Furthermore, the employed similarity transformation usually reduces the remaining complexity of the resulting unknown similarity function which can be approximated using different techniques.

Keywords

Data Mining Scientific Data Similarity Transformation Data Mining Algorithm Dimensionless Group 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

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Copyright information

© Springer Science+Business Media Dordrecht 2001

Authors and Affiliations

  • Stephan Rudolph
    • 1
  • Peter Hertkorn
    • 1
  1. 1.Institute for Statics and Dynamics of Aerospace StructuresUniversity of StuttgartStuttgartGermany

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