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Navigating High-Dimensional Spaces in Model Training
This chapter explores the complexities of crafting sequences and achieving model coverage in high-dimensional spaces, emphasizing the impact of non-linearity on learning efficiency. It also delves into mathematical techniques like matrix inversion and singular value decomposition, highlighting their role in recovering information from query-response data.