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Estimating the Fundamental Limits is Easier Than Achieving the Fundamental Limits

机译:估计基本极限比实现基本极限容易

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摘要

We show through case studies that it is easier to estimate the fundamental limits of data processing than to construct the explicit algorithms to achieve those limits. Focusing on binary classification, data compression, and prediction under logarithmic loss, we show that in the finite space setting, when it is possible to construct an estimator of the limits with vanishing error with n samples, it may require at least n ln n samples to construct an explicit algorithm to achieve the limits.
机译:我们通过案例研究表明,估计数据处理的基本限制要比构造显式算法来实现这些限制要容易得多。着重于二进制分类,数据压缩和对数损失下的预测,我们表明在有限空间设置中,当有可能使用n个样本构造具有消失误差的极限估计量时,可能至少需要n ln n个样本构造一个明确的算法来达到极限。

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