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Random decision forests

Published: 14 August 1995 Publication History
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  • Abstract

    Decision trees are attractive classifiers due to their high execution speed. But trees derived with traditional methods often cannot be grown to arbitrary complexity for possible loss of generalization accuracy on unseen data. The limitation on complexity usually means suboptimal accuracy on training data. Following the principles of stochastic modeling, we propose a method to construct tree-based classifiers whose capacity can be arbitrarily expanded for increases in accuracy for both training and unseen data. The essence of the method is to build multiple trees in randomly selected subspaces of the feature space. Trees in, different subspaces generalize their classification in complementary ways, and their combined classification can be monotonically improved. The validity of the method is demonstrated through experiments on the recognition of handwritten digits.

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    Published In

    cover image Guide Proceedings
    ICDAR '95: Proceedings of the Third International Conference on Document Analysis and Recognition (Volume 1) - Volume 1
    August 1995
    ISBN:0818671289

    Publisher

    IEEE Computer Society

    United States

    Publication History

    Published: 14 August 1995

    Author Tags

    1. complexity
    2. decision theory
    3. decision trees
    4. generalization accuracy
    5. handwriting recognition
    6. handwritten digits
    7. optical character recognition
    8. random decision forests
    9. stochastic modeling
    10. suboptimal accuracy
    11. tree-based classifiers

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    • (2024)On the Effectiveness of Machine Learning-based Call Graph Pruning: An Empirical StudyProceedings of the 21st International Conference on Mining Software Repositories10.1145/3643991.3644897(457-468)Online publication date: 15-Apr-2024
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