Active Learning methods rely on static strategies for sampling unlabeled point(s). These strategies range from uncertainty
sampling and density estimation to multi-factor methods with learn-once-use-always model parameters. This paper proposes a
dynamic approach, called DUAL, where the strategy selection parameters are adaptively updated based on estimated future residual
error reduction after each actively sampled point. The objective of dual is to outperform static strategies over a large operating
range: from very few to very many labeled points. Empirical results over six datasets demonstrate that DUAL outperforms several
state-of-the-art methods on most datasets.