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Artificial intelligence / Numerical analysis / Machine learning / C4.5 algorithm / Learning Vector Quantization / Decision tree learning / Discretization / Vector quantization / Mathematics / Decision trees / Computational statistics
Date: 2009-10-09 07:20:51
Artificial intelligence
Numerical analysis
Machine learning
C4.5 algorithm
Learning Vector Quantization
Decision tree learning
Discretization
Vector quantization
Mathematics
Decision trees
Computational statistics

Multi-Interval Discretization Methods for Decision Tree Learning

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