Title :
Visualization of data structures and machine learning of rules
Author_Institution :
Case Western Reserve Univ., Cleveland, OH, USA
Abstract :
Intelligent task performing machines need to be able to benefit from experience and continue to improve its own task performance capabilities progressively. Towards that end, a machine capable of learning needs to be able to abstract bodies of complex high-dimensional data into manageable groupings and be able to discern and articulate relationships between such data items. This discussion describes how 2D depictions of multivariate data can support such machine learning activities. A new dimension-reduction procedure is described schematically. It seems to generate mappings which have useful `topologically correct´ characteristics. Previous related data abstraction schemes are discussed briefly for comparison purposes. In the case of interrelated tasks and corresponding bodies of 2D maps, the latter can facilitate the recognition of associations and the inference of rules, important components of machine learning
Keywords :
data structures; data visualisation; inference mechanisms; learning (artificial intelligence); 2D multivariate data depictions; association recognition; complex high-dimensional data; data abstraction schemes; data item relationships; data structure visualization; dimension-reduction procedure; intelligent task performing machines; machine learning; rule inference; rules; topologically correct characteristics; Artificial intelligence; Character generation; Data structures; Data visualization; Learning systems; Machine learning; Multidimensional systems; Robustness; Shape; Unsupervised learning;
Conference_Titel :
Intelligent Information Systems, 1997. IIS '97. Proceedings
Conference_Location :
Grand Bahama Island
Print_ISBN :
0-8186-8218-3
DOI :
10.1109/IIS.1997.645203