We study the problem of sequential prediction and online minimax regret with stochastically generated features under a general loss function. We introduce a notion of expected worst case minimax regret that generalizes and encompasses prior known minimax regrets. For such minimax regrets we establish tight upper bounds via a novel concept of stochastic global sequential covering. We show that for a hypothesis class of VC-dimension $\mathsf{VC}$ and $i.i.d.$ generated features of length $T$, the cardinality of the stochastic global sequential covering can be upper bounded with high probability (whp) by $e^{O(\mathsf{VC} \cdot \log^2 T)}$. We then improve this bound by introducing a new complexity measure called the Star-Littlestone dimension, and show that classes with Star-Littlestone dimension $\mathsf{SL}$ admit a stochastic global sequential covering of order $e^{O(\mathsf{SL} \cdot \log T)}$. We further establish upper bounds for real valued classes with finite fat-shattering numbers. Finally, by applying information-theoretic tools of the fixed design minimax regrets, we provide lower bounds for the expected worst case minimax regret. We demonstrate the effectiveness of our approach by establishing tight bounds on the expected worst case minimax regrets for logarithmic loss and general mixable losses.
翻译:我们用一般损失功能下生成的外观特性来研究连续预测和在线微缩最大遗憾的问题。 我们引入了预期最坏的外观微缩最大遗憾的概念, 其效果一般化并包含先前已知的微缩最大遗憾。 对于这种微缩最大遗憾, 我们通过全球连续覆盖的外观新概念来建立紧紧的上界。 我们显示, 对于一个假设等级的 VC- dicension $\ mathsf{VC} 和 $i. i. d. 生成的长于 $T$ 的外观特性, 全球相序覆盖的顶端最坏的缩缩缩缩缩缩缩缩缩缩缩缩缩微缩缩缩缩缩缩微缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩略微缩缩缩缩缩缩微缩缩缩缩缩微缩微缩缩微缩缩微缩缩微缩缩缩缩缩缩缩缩缩略图。