A Bayesian Boosting Model
classification
📊 stat.ML
keywords
adaboostbayesianmodelalgorithmbinaryboostingboosting-likebound
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We offer a novel view of AdaBoost in a statistical setting. We propose a Bayesian model for binary classification in which label noise is modeled hierarchically. Using variational inference to optimize a dynamic evidence lower bound, we derive a new boosting-like algorithm called VIBoost. We show its close connections to AdaBoost and give experimental results from four datasets.
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