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      Adaptive scale-invariant online algorithms for learning linear models

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          Abstract

          We consider online learning with linear models, where the algorithm predicts on sequentially revealed instances (feature vectors), and is compared against the best linear function (comparator) in hindsight. Popular algorithms in this framework, such as Online Gradient Descent (OGD), have parameters (learning rates), which ideally should be tuned based on the scales of the features and the optimal comparator, but these quantities only become available at the end of the learning process. In this paper, we resolve the tuning problem by proposing online algorithms making predictions which are invariant under arbitrary rescaling of the features. The algorithms have no parameters to tune, do not require any prior knowledge on the scale of the instances or the comparator, and achieve regret bounds matching (up to a logarithmic factor) that of OGD with optimally tuned separate learning rates per dimension, while retaining comparable runtime performance.

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          Most cited references7

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          Online Learning and Online Convex Optimization

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            Introduction to Online Convex Optimization

            Elad Hazan (2015)
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              Exponentiated Gradient versus Gradient Descent for Linear Predictors

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                Author and article information

                Journal
                20 February 2019
                Article
                1902.07528
                54d0297a-0394-4491-a235-d8f88c44c67c

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                cs.LG stat.ML

                Machine learning,Artificial intelligence
                Machine learning, Artificial intelligence

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