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_The existence and uniqueness of the Haar measure is a theorem in compact lie group theory. For this research topic, we will not prove it._
### Random sampling on the $CP^n$
### Random sampling on the $\mathbb{C}P^n$
Note that the space of pure state in bipartite system
## Statement

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# Math 401 Paper 1, Side note 3: Levy's concentration theorem
Our goal is to prove the generalized version of Levy's concentration theorem used in Hayden's work for $\eta$-Lipschitz functions.
Let $f:S^{n-1}\to \mathbb{R}$ be a $\eta$-Lipschitz function. Let $M_f$ denote the median of $f$ and $\langle f\rangle$ denote the mean of $f$. (Note this can be generalized to many other manifolds.)
Select a random point $x\in S^{n-1}$ with $n>2$ according to the uniform measure (Haar measure). Then the probability of observing a value of $f$ much different from the reference value is exponentially small.
$$
\operatorname{Pr}[|f(x)-M_f|>\epsilon]\leq \exp(-\frac{n\epsilon^2}{2\eta^2})
$$
$$
\operatorname{Pr}[|f(x)-\langle f\rangle|>\epsilon]\leq 2\exp(-\frac{(n-1)\epsilon^2}{2\eta^2})
$$
> This version of Levy's concentration theorem can be found in [Geometry of Quantum states](https://www.cambridge.org/core/books/geometry-of-quantum-states/46B62FE3F9DA6E0B4EDDAE653F61ED8C) 15.84 and 15.85.
## Basic definitions
### Lipschitz function
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The goal is the same as the Gromov's version, first we bound the probability of the sub-level set of $f$ by the $\kappa_n(\epsilon)$ function by Levy's isoperimetric inequality. Then we claim that the $\kappa_n(\epsilon)$ function is bounded by the Gaussian distribution.
Note, this section is not rigorous enough in sense of mathematics and the author should add sections about Levy family and observable diameter to make the proof more rigorous and understandable.
<details>
<summary>Proof</summary>
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\operatorname{vol}_{n-k}(\pi_{n,k}^{-1}(\epsilon))\leq \operatorname{vol}_{n-k}(\pi_{n,k}^{-1}(\Omega_+))+\operatorname{vol}_{n-k}(\pi_{n,k}^{-1}(\Omega_-))
$$
We define $\kappa_n(\epsilon)$ as the following:
$$
@@ -240,8 +255,41 @@ $$
Not very edible for undergraduates.
## Crash course on Riemannian manifolds
> This part might be extended to a separate note, let's check how far we can go from this part.
>
> References:
>
> - [Riemannian Geometry by John M. Lee](https://www.amazon.com/Introduction-Riemannian-Manifolds-Graduate-Mathematics/dp/3319917544?dib=eyJ2IjoiMSJ9.88u0uIXulwPpi3IjFn9EdOviJvyuse9V5K5wZxQEd6Rto5sCIowzEJSstE0JtQDW.QeajvjQEbsDmnEMfPzaKrfVR9F5BtWE8wFscYjCAR24&dib_tag=se&keywords=riemannian+manifold+by+john+m+lee&qid=1753238983&sr=8-1)
### Riemannian manifolds
A Riemannian manifold is a smooth manifold equipped with a **Riemannian metric**, which is a smooth assignment of an inner product to each tangent space $T_pM$ of the manifold.
An example of Riemannian manifold is the sphere $\mathbb{C}P^n$.
### Riemannian metric
A Riemannian metric is a smooth assignment of an inner product to each tangent space $T_pM$ of the manifold.
An example of Riemannian metric is the Euclidean metric on $\mathbb{R}^n$.
### Notion of Connection
A connection is a way to define the directional derivative of a vector field along a curve on a Riemannian manifold.
For every $p\in M$, where $M$ denote the manifold, suppose $M=\mathbb{R}^n$, then let $X=(f_1,\cdots,f_n)$ be a vector field on $M$. The directional derivative of $X$ along the point $p$ is defined as
$$
D_VX=\lim_{h\to 0}\frac{X(p+h)-X(p)}{h}
$$
### Nabla notation and Levi-Civita connection
### Ricci curvature
## References