Quasi-Newton Steps for Efficient Online Exp-Concave Optimization
Zakaria Mhammedi, Khashayar Gatmiry

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Abstract
The aim of this paper is to design computationally-efficient and optimal algorithms for the online and stochastic exp-concave optimization settings. Typical algorithms for these settings, such as the Online Newton Step (ONS), can guarantee a bound on their regret after rounds, where is the dimension of the feasible set. However, such algorithms perform so-called generalized projections whenever their iterates step outside the feasible set. Such generalized projections require arithmetic operations even for simple sets such a Euclidean ball, making the total runtime of ONS of order after rounds, in the worst-case. In this paper, we side-step generalized projections by using a self-concordant barrier as a regularizer to compute the Newton steps. This ensures that the iterates are always within the feasible set without requiring projections.…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Sparse and Compressive Sensing Techniques · Advanced Bandit Algorithms Research
