Predictability is an emerging metric that quantifies the highest possible prediction accuracy for a given time series, being widely utilized in assessing known prediction algorithms and characterizing intrinsic regularities in human behaviors. Lately, increasing criticisms aim at the inaccuracy of the estimated predictability, caused by the original entropy-based method. In this brief report, we strictly prove that the time series predictability is equivalent to a seemingly unrelated metric called Bayes error rate that explores the lowest error rate unavoidable in classification. This proof bridges two independently developed fields, and thus each can immediately benefit from the other. For example, based on three theoretical models with known and controllable upper bounds of prediction accuracy, we show that the estimation based on Bayes error rate can largely solve the inaccuracy problem of predictability.
翻译:可预测性是一个新兴指标,它量化了特定时间序列最高可能的预测准确性,广泛用于评估已知的预测算法和描述人类行为固有的规律性。最近,越来越多的批评旨在纠正最初的基于银本的方法造成的估计可预测性的不准确性。在这个简短的报告中,我们严格地证明时间序列的可预测性相当于一个似乎无关紧要的称为贝耶斯错误率的指标,它探索了在分类中不可避免的最低误差率。这个证据连接了两个独立开发的领域,因此每个领域都可以立即从另一个领域获益。例如,根据三个具有已知和可控制的预测准确性上限的理论模型,我们表明基于拜耶斯错误率的估计可以在很大程度上解决不准确的可预测性问题。