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Soft-Bayes: Prod for Mixtures of Experts with Log-Loss

机译:软贝叶斯:具有对数损失的专家混合产品

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We consider prediction with expert advice under the log-loss with the goal of deriving efficient and robust algorithms. We argue that existing algorithms such as exponentiated gradient, online gradient descent and online Newton step do not adequately satisfy both requirements. Our main contribution is an analysis of the Prod algorithm that is robust to any data sequence and runs in linear time relative to the number of experts in each round. Despite the unbounded nature of the log-loss, we derive a bound that is independent of the largest loss and of the largest gradient, and depends only on the number of experts and the time horizon. Furthermore we give a Bayesian interpretation of Prod and adapt the algorithm to derive a tracking regret.
机译:我们考虑在损失对数的情况下根据专家建议进行预测,以期得出高效而可靠的算法。我们认为,现有算法(例如指数梯度,在线梯度下降和在线牛顿步长)不能充分满足这两个要求。我们的主要贡献是对Prod算法的分析,该算法对任何数据序列都具有鲁棒性,并且相对于每一轮专家的数量,线性时间运行。尽管对数损失具有无限的性质,但我们得出的界限与最大的损失和最大的梯度无关,并且仅取决于专家的数量和时间范围。此外,我们给出了Prod的贝叶斯解释,并对该算法进行了修改以得出跟踪遗憾。

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