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Episode 91: The Critical Rationalist Case For Induction!?

The Theory of Anything

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Inductive Bias and Machine Learning

This chapter discusses the limitations of hypothesis spaces in machine learning, particularly distinguishing between conjunctions and disjunctions of attributes. It emphasizes the necessity of inductive bias for algorithms to generalize effectively and critiques the overly expressive hypothesis spaces that hinder performance. Additionally, it explores the intersection of critical rationalism and machine learning, advocating for a synthesis of ideas to enhance understanding within the field.

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