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Clement Bonnet - Can Latent Program Networks Solve Abstract Reasoning?

Machine Learning Street Talk (MLST)

CHAPTER

Transduction vs. Induction in Machine Learning

This chapter explores the differences between transduction and induction in machine learning, discussing how transduction derives predictions from input data while induction generalizes from training data. It highlights the importance of efficient algorithmic representation and delves into linear regression, latent program networks, and the optimization processes for abstract reasoning tasks.

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