The problems of instrumental variation and sensor drift are receiving increasing concerns in the field of electronic noses. Because the two problems can be uniformly viewed as a variation of the data distribution in the feature space, they can be handled by algorithms such as transfer learning. In this paper, we propose a novel algorithm framework called transfer sample-based coupled task learning (TCTL). It is based on transfer learning and multi-task learning. Given labeled samples in the sour