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Natural language processing / Model selection / Information retrieval / Statistical classification / Support vector machines / Text Retrieval Conference / Kernel methods / Cross-validation / Perceptron / Machine learning / Statistics / Artificial intelligence
Date: 2003-02-13 11:56:14
Natural language processing
Model selection
Information retrieval
Statistical classification
Support vector machines
Text Retrieval Conference
Kernel methods
Cross-validation
Perceptron
Machine learning
Statistics
Artificial intelligence

CLARIT Experiments in Batch Filtering: Term Selection and Threshold Optimization in IR and SVM Filters David A. Evans, James Shanahan, Norbert Roma, Jeffrey Bennett, Victor Sheftel, Emilia Stoica, Jesse Montgomery, David

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