资源论文Efficient Sublinear-Regret Algorithms for Online Sparse Linear Regression with Limited Observation

Efficient Sublinear-Regret Algorithms for Online Sparse Linear Regression with Limited Observation

2020-02-10 | |  48 |   38 |   0

Abstract 

Online sparse linear regression is the task of applying linear regression analysis to examples arriving sequentially subject to a resource constraint that a limited number of features of examples can be observed. Despite its importance in many practical applications, it has been recently shown that there is no polynomialtime sublinear-regret algorithm unless NP?BPP, and only an exponential-time sublinear-regret algorithm has been found. In this paper, we introduce mild assumptions to solve the problem. Under these assumptions, we present polynomialtime sublinear-regret algorithms for the online sparse linear regression. In addition, thorough experiments with publicly available data demonstrate that our algorithms outperform other known algorithms.

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