Traditional epistemology has it that the pursuit of knowledge is predicated on two inter-connected goals: the generation of meaningful truths and the avoidance of error. This is neatly summarized in the conventional definition of knowledge as justified true belief In the following thesis I trace the evolution of an alternative account of knowledge which is predicated not on the avoidance of error but on the capacity to learn from error. I contend that the connectionist model of artificial intelligence provides the necessary framework for an understanding of cognition in which knowledge emerges as a dynamic product of learning. Epistemic content in this alternative is not comprised of fixed representations. Instead, content is encoded within...