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arxiv: 1712.01897 · v1 · pith:Y2LDJS4Knew · submitted 2017-12-05 · 💻 cs.LG · cs.IT· math.IT

Online Learning with Gated Linear Networks

classification 💻 cs.LG cs.ITmath.IT
keywords learningarchitecturesonlineunderapproachbecauseborel-measurablebounded
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This paper describes a family of probabilistic architectures designed for online learning under the logarithmic loss. Rather than relying on non-linear transfer functions, our method gains representational power by the use of data conditioning. We state under general conditions a learnable capacity theorem that shows this approach can in principle learn any bounded Borel-measurable function on a compact subset of euclidean space; the result is stronger than many universality results for connectionist architectures because we provide both the model and the learning procedure for which convergence is guaranteed.

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