Active Learning for Function Approximation

Neural Information Processing Systems 

In function approximation, example-based learning can be formulated as synthesiz(cid:173) ing an approximation function for data sampled from an unknown target function (Poggio and Girosi, 1990). Active learning describes a class of example-based learning paradigms that seeks out new training examples from specific regions of the input space, instead of passively accepting examples from some data generating source.