Learning Convex Polyhedra With Margin

IEEE Transactions on Information Theory(2022)

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摘要
We present an improved algorithm for quasi-properly learning convex polyhedra in the realizable PAC setting from data with a margin. Our learning algorithm constructs a consistent polyhedron as an intersection of about t log t halfspaces with constant-size margins in time polynomial in t (where t is the number of halfspaces forming an optimal polyhedron). We also identify distinct generalizations of the notion of margin from hyperplanes to polyhedra and investigate how they relate geometrically; this result may have ramifications beyond the learning setting.
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关键词
Runtime,Complexity theory,Picture archiving and communication systems,Fats,Fasteners,Stress,Standards,Classification,polyhedra,dimensionality reduction,margin
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