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Statistical theory / Data analysis / Resampling / Bootstrapping / Bootstrap aggregating / Confidence interval / Cross-validation / Sampling distribution / Maximum likelihood / Statistics / Statistical inference / Computational statistics
Date: 2004-08-04 04:00:19
Statistical theory
Data analysis
Resampling
Bootstrapping
Bootstrap aggregating
Confidence interval
Cross-validation
Sampling distribution
Maximum likelihood
Statistics
Statistical inference
Computational statistics

Measuring Confidence Intervals in Link Discovery: A Bootstrap Approach Jafar Adibi, Paul R. Cohen and Clayton T. Morrison Center for Research on Unexpected Events (CRUE) USC Information Sciences Institute 4676 Admiralty

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