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Things Bayes Can't Do

机译:贝叶斯做不到的事情

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摘要

The problem of forecasting conditional probabilities of the next event given the past is considered in a general probabilistic setting. Given an arbitrary (large, uncountable) set C of predictors, we would like to construct a single predictor that performs asymptotically as well as the best predictor in C, on any data. Here we show that there are sets C for which such predictors exist, but none of them is a Bayesian predictor with a prior concentrated on C. In other words, there is a predictor with sublinear regret, but every Bayesian predictor must have a linear regret. This negative finding is in sharp contrast with previous results that establish the opposite for the case when one of the predictors in C achieves asymptotically vanishing error. In such a case, if there is a predictor that achieves asymptotically vanishing error for any measure in C, then there is a Bayesian predictor that also has this property, and whose prior is concentrated on (a countable subset of) C.
机译:在一般概率环境中考虑了在给定过去的情况下预测下一个事件的条件概率的问题。给定任意(大型,不可数)的预测变量集C,我们希望构造一个渐近执行的预测变量,并且在任何数据上都表现出C中的最佳预测变量。在这里,我们显示存在这样的预测变量的集合C,但是它们都不是先验集中在C上的贝叶斯预测变量。换句话说,有一个具有次线性后悔的预测变量,但是每个贝叶斯预测变量都必须具有线性后悔。这个否定的发现与先前的结果形成鲜明对比,先前的结果与C中的一个预测变量达到渐近消失的误差的情况相反。在这种情况下,如果存在一个对于C中的任何度量都达到渐近消失误差的预测变量,则存在一个贝叶斯预测变量也具有此属性,并且其先验集中于C的可计数子集。

著录项

  • 来源
    《Algorithmic learning theory》|2016年|253-260|共8页
  • 会议地点 Bari(IT)
  • 作者

    Daniil Ryabko;

  • 作者单位

    Inria, Villeneuve-d'Ascq, France;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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