A visualization tool for interactive learning of large decision trees | IEEE Conference Publication | IEEE Xplore

A visualization tool for interactive learning of large decision trees


Abstract:

Decision tree induction is certainly among the most applicable learning techniques due to its power and simplicity. However learning decision trees from large datasets, p...Show More

Abstract:

Decision tree induction is certainly among the most applicable learning techniques due to its power and simplicity. However learning decision trees from large datasets, particularly in data mining, is quite different from learning from small or moderately sized datasets. When learning from large datasets, decision tree induction programs often produce very large trees. How to efficiently visualize trees in the learning process, particularly large trees, is still questionable and currently requires efficient tools. The paper presents a visualization tool for interactive learning of large decision trees, that includes a new visualization technique called T2.5D (Trees 2.5 Dimensions). After a brief discussion on requirements for tree visualizers and related work, the paper focuses on presenting developing techniques for two issues: (1) how to visualize efficiently large decision trees; and (2) how to visualize decision trees in the learning process.
Date of Conference: 15-15 November 2000
Date Added to IEEE Xplore: 06 August 2002
Print ISBN:0-7695-0909-6
Print ISSN: 1082-3409
Conference Location: Vancouver, BC, Canada

Contact IEEE to Subscribe

References

References is not available for this document.