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arxiv: 1307.1192 · v1 · pith:D33XRV4Fnew · submitted 2013-07-04 · 📊 stat.ML · cs.LG· math.OC

AdaBoost and Forward Stagewise Regression are First-Order Convex Optimization Methods

classification 📊 stat.ML cs.LGmath.OC
keywords methodsadaboostboostingcomputationalconnectionsconvexfirst-orderforward
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Boosting methods are highly popular and effective supervised learning methods which combine weak learners into a single accurate model with good statistical performance. In this paper, we analyze two well-known boosting methods, AdaBoost and Incremental Forward Stagewise Regression (FS$_\varepsilon$), by establishing their precise connections to the Mirror Descent algorithm, which is a first-order method in convex optimization. As a consequence of these connections we obtain novel computational guarantees for these boosting methods. In particular, we characterize convergence bounds of AdaBoost, related to both the margin and log-exponential loss function, for any step-size sequence. Furthermore, this paper presents, for the first time, precise computational complexity results for FS$_\varepsilon$.

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