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Online Allocation with Risk Information

机译:带有风险信息的在线分配

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摘要

We consider the problem of dynamically apportioning resources among a set of options in a worst-case online framework. The model we investigate is a generalization of the well studied online learning model. In particular, we allow the learner to see as additional information how high the risk of each option is. This assumption is natural in many applications like horse-race betting, where gamblers know odds for all options before placing bets. We apply the Aggregating Algorithm to this problem and give a tight performance bound. The results support our intuition that we should bet more on low-risk options. Surprisingly, however, the Hedge Algorithm without seeing risk information performs nearly as well as the Aggregating Algorithm. So the risk information does not help much. Moreover, the loss bound does not depend on the values of relatively small risks.
机译:我们考虑在最坏情况的在线框架中在一组选项之间动态分配资源的问题。我们调查的模型是经过充分研究的在线学习模型的概括。特别是,我们允许学习者将每个选项的风险有多少作为附加信息。这种假设在许多应用中很自然,例如赛马投注,在这种情况下,赌徒在下注之前就知道所有选项的赔率。我们将聚合算法应用于此问题,并给出严格的性能界限。结果支持我们的直觉,即我们应该更多地投注于低风险期​​权。但是,令人惊讶的是,在没有看到风险信息的情况下,对冲算法的表现几乎与汇总算法一样好。因此,风险信息无济于事。而且,损失范围不取决于相对较小风险的价值。

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