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Created page with "We are interested in the asymptotic behavior of the cumulative distribution <math>P(E)</math> in the left tail <math>E\to -\infty</math>, since the minimum is controlled by the regime where <math>M P(E)=O(1)</math>. Starting from the Gaussian distribution with zero mean and variance <math>\sigma^2</math>, we write the cumulative as <center><math> P(E) = \int_{-\infty}^E \frac{dx}{\sqrt{2\pi\sigma^2}} \, e^{-x^2/2\sigma^2}. </math></center> Using integration by parts (o..."
 
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= Exercises: Extreme Value Statistics =
== Exercise 1: Gaussian tails and Gumbel scaling ==
We are interested in the asymptotic behavior of the cumulative distribution
We are interested in the asymptotic behavior of the cumulative distribution
<math>P(E)</math> in the left tail <math>E\to -\infty</math>,
<math>P(E)</math> in the left tail <math>E\to -\infty</math>,
Line 36: Line 39:


which is the expression used in the course to derive the scaling form of the minimum.
which is the expression used in the course to derive the scaling form of the minimum.
Using Gaussian variables, we analyzed a situation where the minimum is controlled
by the far left tail of the distribution.
As a consequence, the natural centering constant was the typical minimum
<math>a_M = E_{\min}^{\mathrm{typ}}</math>.
We now consider a qualitatively different case, where the random variables are bounded from below.
In this situation, the minimum is controlled by the behavior of the distribution
close to the edge of its support.
This will lead to a different choice of scaling parameters:
the centering constant is fixed by the lower bound of the support,
while the scale of fluctuations is set by the typical minimum itself.
= Exercise 2: Weakest-link statistics and the Weibull law =
In this exercise, we consider a situation that is qualitatively different from the Gaussian case.
Here, the random variables are bounded from below, and the minimum is controlled by the behavior
of the distribution close to the edge of its support.
This will naturally lead to a different choice of scaling parameters
<math>a_M</math> and <math>b_M</math>.
Consider a chain of length <math>L</math> subjected to a tensile force <math>F</math>.
The chain breaks when its weakest link breaks.
We denote by <math>F_c</math> the force required to break the chain.
Let <math>x_1, x_2, \ldots, x_L</math> be the breaking strengths of the individual links.
Assume that they are independent, identically distributed, and strictly positive random variables.
Throughout the exercise, we work in the limit of large <math>L</math>.
The strength of each link is drawn from a Gamma distribution with shape parameter
<math>\alpha > 0</math>:
<center><math>
p(x) = \frac{x^{\alpha - 1}}{\Gamma(\alpha)}\, e^{-x},
\qquad x \ge 0.
</math></center>
'''Questions:'''
* Compute the typical breaking force <math>F_c^{\mathrm{typ}}</math>
  of the chain and determine its dependence on <math>L</math>.
  (Hint: use the condition <math>L\,P(x)=O(1)</math>.)
* The breaking force of the chain is equal to the minimum of the <math>L</math> random variables.
  According to extreme value statistics, its distribution satisfies
  <center><math>
  Q_L(x) \equiv \mathrm{Prob}(F_c > x)
  \sim \exp\!\left[-L P(x)\right],
  \qquad
  P(x)=\int_0^x p(t)\,dt.
  </math></center>
  Show that the appropriate scaling form is obtained by introducing
  <math>a_L = 0</math> and <math>b_L = F_c^{\mathrm{typ}}</math>,
  and defining the rescaled variable
  <center><math>
  z = \frac{x-a_L}{b_L}.
  </math></center>
  Determine the limiting, <math>L</math>-independent distribution of <math>z</math>,
  and identify the corresponding universality class.

Revision as of 14:37, 18 January 2026

Exercises: Extreme Value Statistics

Exercise 1: Gaussian tails and Gumbel scaling

We are interested in the asymptotic behavior of the cumulative distribution P(E) in the left tail E, since the minimum is controlled by the regime where MP(E)=O(1).

Starting from the Gaussian distribution with zero mean and variance σ2, we write the cumulative as

P(E)=Edx2πσ2ex2/2σ2.

Using integration by parts (or equivalently the change of variable t=x2/2σ2), one finds

P(E)=σ2π|E|eE2/2σ214πE2/2σ2dttet.

For E, the second term is subleading, and the cumulative admits the asymptotic expansion

P(E)=σ2π|E|eE2/2σ2[1+O(1E2)].

This result can be written in the form

P(E)=exp(A(E)),A(E)=E22σ2log(2π|E|σ)+,

which is the expression used in the course to derive the scaling form of the minimum.


Using Gaussian variables, we analyzed a situation where the minimum is controlled by the far left tail of the distribution. As a consequence, the natural centering constant was the typical minimum aM=Emintyp.

We now consider a qualitatively different case, where the random variables are bounded from below. In this situation, the minimum is controlled by the behavior of the distribution close to the edge of its support.

This will lead to a different choice of scaling parameters: the centering constant is fixed by the lower bound of the support, while the scale of fluctuations is set by the typical minimum itself.

Exercise 2: Weakest-link statistics and the Weibull law

In this exercise, we consider a situation that is qualitatively different from the Gaussian case. Here, the random variables are bounded from below, and the minimum is controlled by the behavior of the distribution close to the edge of its support.

This will naturally lead to a different choice of scaling parameters aM and bM.

Consider a chain of length L subjected to a tensile force F. The chain breaks when its weakest link breaks. We denote by Fc the force required to break the chain.

Let x1,x2,,xL be the breaking strengths of the individual links. Assume that they are independent, identically distributed, and strictly positive random variables.

Throughout the exercise, we work in the limit of large L.

The strength of each link is drawn from a Gamma distribution with shape parameter α>0:

p(x)=xα1Γ(α)ex,x0.

Questions:

  • Compute the typical breaking force Fctyp
 of the chain and determine its dependence on L.
 (Hint: use the condition LP(x)=O(1).)
  • The breaking force of the chain is equal to the minimum of the L random variables.
 According to extreme value statistics, its distribution satisfies
QL(x)Prob(Fc>x)exp[LP(x)],P(x)=0xp(t)dt.
 Show that the appropriate scaling form is obtained by introducing
 aL=0 and bL=Fctyp,
 and defining the rescaled variable
z=xaLbL.
 Determine the limiting, L-independent distribution of z,
 and identify the corresponding universality class.