How do we perceive the predictability of functions? We
derive a rational measure of a function's predictabil-
ity based on Gaussian process learning curves. Using
this measure, we show that the smoothness of a func-
tion can be more important to predictability judgments
than the variance of additive noise or the number of
samples. These patterns can be captured well by the
learning curve for Gaussian process regression, which in
turn crucially depends on the eigenvalue spectrum of
the covariance function. Using approximate bounds on
the learning curve, we model participants' predictabil-
ity judgments about sampled functions and ?nd that
smoothness is indeed a better predictor for perceived
predictability than both the variance and the sample
size. This means that it can sometimes be preferable
to learn about noisy but smooth functions instead of
deterministic complex ones.