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Apprendre The High Dimensional Regime Definitions and Consequences | Breakdown of Classical Statistics in High Dimensions
High-Dimensional Statistics

bookThe High Dimensional Regime Definitions and Consequences

In high-dimensional statistics, you often encounter the so-called high-dimensional regime, where the number of variables or features (pp) is much larger than the number of observations or samples (nn). This is commonly written as pnp \gg n. Here, nn stands for the sample size, and pp represents the dimensionality, or the number of features being measured for each sample. In classical statistics, it is usually assumed that nn is much bigger than pp, ensuring that there is enough data to reliably estimate model parameters. However, in many modern applications—such as genomics, image analysis, or finance—the number of features can be in the thousands or millions, while the number of samples remains limited. This shift to the high-dimensional regime fundamentally changes the behavior of statistical methods and requires new theoretical and practical approaches.

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Section 1. Chapitre 1

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bookThe High Dimensional Regime Definitions and Consequences

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In high-dimensional statistics, you often encounter the so-called high-dimensional regime, where the number of variables or features (pp) is much larger than the number of observations or samples (nn). This is commonly written as pnp \gg n. Here, nn stands for the sample size, and pp represents the dimensionality, or the number of features being measured for each sample. In classical statistics, it is usually assumed that nn is much bigger than pp, ensuring that there is enough data to reliably estimate model parameters. However, in many modern applications—such as genomics, image analysis, or finance—the number of features can be in the thousands or millions, while the number of samples remains limited. This shift to the high-dimensional regime fundamentally changes the behavior of statistical methods and requires new theoretical and practical approaches.

question mark

Which statement best describes the high-dimensional regime in statistics?

Select the correct answer

Tout était clair ?

Comment pouvons-nous l'améliorer ?

Merci pour vos commentaires !

Section 1. Chapitre 1
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