TBan-I: Difference between revisions

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Consider the <math>M</math> energies <math>E_1, \dots, E_M</math> as independent and identically distributed (i.i.d.) random variables drawn from a distribution <math>p(E)</math>. It is useful to introduce the cumulative probability of finding an energy smaller than ''E''
Consider the <math>M</math> energies <math>E_1, \dots, E_M</math> as independent and identically distributed (i.i.d.) random variables drawn from a distribution <math>p(E)</math>. It is useful to introduce the cumulative probability of finding an energy smaller than ''E''
<center> <math>P(E) = \int_{-\infty}^E dx \, p(x)</math> </center>
We define:
<center> <math>E_{\min} = \min(E_1, \dots, E_M)</math> </center>
Our goal is to compute the cumulative distribution:
<center> <math>Q_M(E) \equiv \text{Prob}(E_{\min} > E)</math> </center>
for large <math>M</math>. To achieve this, we rely on three key relations:
*  '''First relation''':
    <center> <math>Q_M(E) = (1-P(E))^M</math> </center>
This relation is exact but depends on ''M'' and the precise form of <math>p(E)</math>. However, in the large ''M'' limit, a universal behavior emerges.
*    '''Second relation''': 
<center> <math>P(E_{\min}^{\text{typ}}) = 1/M</math> </center>
This is an estimation of the typical value of the minimum. It is a crucial relation that will be used frequently in this context.
* '''Third relation'''
<center> <math>Q_M(E) = e^{M \log(1 - P(E))} \sim \exp\left(-M P(E)\right)</math> </center>
This is an approximation valid  for large ''M'' and around the typical value of the minimum energy.

Latest revision as of 16:39, 6 August 2025

Detour: Extreme Value Statistics

Consider the energies as independent and identically distributed (i.i.d.) random variables drawn from a distribution . It is useful to introduce the cumulative probability of finding an energy smaller than E

We define:

Our goal is to compute the cumulative distribution:

for large . To achieve this, we rely on three key relations:

  • First relation:

This relation is exact but depends on M and the precise form of . However, in the large M limit, a universal behavior emerges.

  • Second relation:

This is an estimation of the typical value of the minimum. It is a crucial relation that will be used frequently in this context.

  • Third relation

This is an approximation valid for large M and around the typical value of the minimum energy.