
[12] Martha White - Regularized Factor Models
The Thesis Review
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Exploring Machine Learning Paradigms
This chapter examines the differences between pre-training and joint training approaches in machine learning, emphasizing the advantages of pre-training with unlabeled data. It discusses the evolution of research from unsupervised methods to supervised auto encoders within the context of semi-supervised learning and regularized factor models. Additionally, the chapter addresses the complexities of representation learning and continual learning, exploring the innovative strategies required for reinforcement learning in real-world environments.
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