付费随机专家在线分类的权衡报酬与准确性

Dirk van der Hoeven, Ciara Pike-Burke, Haotian Qiu, N. Cesa-Bianchi
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引用次数: 0

摘要

我们用付费的随机专家研究在线分类。在这里,在做出预测之前,每个专家都必须得到报酬。我们支付给每个专家的金额直接影响他们预测的准确性,通过一些未知的Lipschitz“生产力”函数。在每一轮中,学习者必须决定付给每个专家多少钱,然后做出预测。他们产生的成本等于所有专家的预测误差和预付费用的加权总和。我们引入了一种在线学习算法,其在$T$轮之后的总成本超过了预先知道所有专家生产率的预测器的总成本,最多为$\mathcal{O}(K^2(\log T)\sqrt{T})$,其中$K$为专家的数量。为了达到这个结果,我们结合了Lipschitz匪徒和带代理损失的在线分类。这些工具使我们能够改进在标准Lipschitz土匪设置中获得的阶限$T^{2/3}$。我们的算法在合成数据上进行了经验评估
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Trading-Off Payments and Accuracy in Online Classification with Paid Stochastic Experts
We investigate online classification with paid stochastic experts. Here, before making their prediction, each expert must be paid. The amount that we pay each expert directly influences the accuracy of their prediction through some unknown Lipschitz"productivity"function. In each round, the learner must decide how much to pay each expert and then make a prediction. They incur a cost equal to a weighted sum of the prediction error and upfront payments for all experts. We introduce an online learning algorithm whose total cost after $T$ rounds exceeds that of a predictor which knows the productivity of all experts in advance by at most $\mathcal{O}(K^2(\log T)\sqrt{T})$ where $K$ is the number of experts. In order to achieve this result, we combine Lipschitz bandits and online classification with surrogate losses. These tools allow us to improve upon the bound of order $T^{2/3}$ one would obtain in the standard Lipschitz bandit setting. Our algorithm is empirically evaluated on synthetic data
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