Conceptual Representation Learning
Understanding cutting-edge machine learning and deep learning theory only marks the beginning of your adventure. The knowledge you have acquired should help you become an AI visionary. Take everything you see as opportunities and see how AI can fit into your projects. Reach the limits and skydive beyond them.
This chapter focuses on decision-making through visual representations and explains the motivation that led to conceptual representation learning (CRL) and metamodels (MM), which form CRLMMs.
Concept learning is our human ability to partition the world from chaos to categories, classes, sets, and subsets. As a child and young adult, we acquire many classes of things and concepts. For example, once we understand what a "hole" is, we can apply it to anything we see that is somewhat empty: a black hole, a hole in the wall, a hole in a bank account if money is missing or overspent, and hundreds of other cases.
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