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Lecture 7: Langevin equations II: geometric Brownian motion and perturbation theory
Outline: Geometric Brownian motion, Stratonovich and Ito models Ito calculus method small noise correlation time method (Stratonovich only) solution using Fokker-Planck equation Perturbation theory for nonlinear Langevin equations diagrammatic expansion self-consistent approximations
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form:
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with F = log x(t) is normally distributed with mean (r – ½σ2)t and variance σ2t
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with F = log x(t) is normally distributed with mean (r – ½σ2)t and variance σ2t => x(t) is log-normally distributed:
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“Geometric Brownian motion” (GBM) with Ito calculus and Ito convention
model of share prices Start with equation in differential form: Apply Ito’s lemma with F = log x(t) is normally distributed with mean (r – ½σ2)t and variance σ2t => x(t) is log-normally distributed:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma:
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma: in particular,
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma: in particular,
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma: in particular,
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moments of x(t) can get moments of x(t) from this or directly from the SDE and Ito’s lemma: in particular,
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation same as for Ito convention except r -> r + ½σ2
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation same as for Ito convention except r -> r + ½σ2
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation same as for Ito convention except r -> r + ½σ2
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation same as for Ito convention except r -> r + ½σ2 moments:
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geometric Brownian motion, Ito calculus with Stratonovich convention
Recall extra drift in our current notation same as for Ito convention except r -> r + ½σ2 moments:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model.
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t):
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t): use identity for Gaussian variables:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t): use identity for Gaussian variables:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t): use identity for Gaussian variables:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t): use identity for Gaussian variables:
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GBM with Stratonovich, finite-τ noise
This was based on the “midpoint prescription”. I claimed that this prescription was equivalent to giving the noise a finite correlation time τ and letting τ -> 0 in the end. Here I show this for this model. give y a small correlation time: solve for x(t): use identity for Gaussian variables: as we got before
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GBM, Stratonovich, with Fokker-Planck
recall the FP equation with Stratonovich convention can be written
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GBM, Stratonovich, with Fokker-Planck
recall the FP equation with Stratonovich convention can be written
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GBM, Stratonovich, with Fokker-Planck
recall the FP equation with Stratonovich convention can be written change variables:
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GBM, Stratonovich, with Fokker-Planck
recall the FP equation with Stratonovich convention can be written change variables: y(t) is Gaussian with
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GBM, Stratonovich, with Fokker-Planck
recall the FP equation with Stratonovich convention can be written change variables: y(t) is Gaussian with as obtained from working with differentials and using Ito’s lemma
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GBM, Ito convention, using Fokker-Planck
(Finally), the FP equation for the Ito convention
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GBM, Ito convention, using Fokker-Planck
(Finally), the FP equation for the Ito convention can be written
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GBM, Ito convention, using Fokker-Planck
(Finally), the FP equation for the Ito convention can be written Here:
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GBM, Ito convention, using Fokker-Planck
(Finally), the FP equation for the Ito convention can be written Here: But this is just the same equation as in the Stratonovich case, excpt for a reduced drift r - ½σ2, in agreement with what we found using differentials and the Ito lemma.
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Summary: Both ways of treating the problem with the Ito convention
(differentials + Ito’s lemma, FP) agree with each other.
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Summary: Both ways of treating the problem with the Ito convention
(differentials + Ito’s lemma, FP) agree with each other. All ways of treating the problem with the Stratonovich convention (differentials + midpoint correction + Ito’s lemma, finite-τ noise, FP) agree with each other.
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Summary: Both ways of treating the problem with the Ito convention
(differentials + Ito’s lemma, FP) agree with each other. All ways of treating the problem with the Stratonovich convention (differentials + midpoint correction + Ito’s lemma, finite-τ noise, FP) agree with each other. Ito and Stratonovich problems are different (Stratonovich has a drift rate larger by ½σ2).
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Summary: Both ways of treating the problem with the Ito convention
(differentials + Ito’s lemma, FP) agree with each other. All ways of treating the problem with the Stratonovich convention (differentials + midpoint correction + Ito’s lemma, finite-τ noise, FP) agree with each other. Ito and Stratonovich problems are different (Stratonovich has a drift rate larger by ½σ2). I have shown this here for GBM, but it is true in general (except for constant G(x), in which case Stratonovich and Ito are equivalent).
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise)
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise) Consider equations with a steady state, nonlinear F:
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise) Consider equations with a steady state, nonlinear F:
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise) Consider equations with a steady state, nonlinear F: Here I will concentrate on the example F(x) = -γx – gx3 overdamped motion in a quartic potential, double-well potential for γ < 0 :
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise) Consider equations with a steady state, nonlinear F: Here I will concentrate on the example F(x) = -γx – gx3 overdamped motion in a quartic potential, double-well potential for γ < 0 :
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Perturbation theory for nonlinear Langevin equations
(now back to additive noise) Consider equations with a steady state, nonlinear F: Here I will concentrate on the example F(x) = -γx – gx3 overdamped motion in a quartic potential, double-well potential for γ < 0 : add an external driving force:
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some definitions and notation
Write this as
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some definitions and notation
Write this as where
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some definitions and notation
Write this as where
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some definitions and notation
Write this as where
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some definitions and notation
Write this as where multiply by G0: in time domain:
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some definitions and notation
Write this as where multiply by G0: in time domain: in frequency domain:
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some definitions and notation
Write this as where multiply by G0: in time domain: in frequency domain: notation:
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iteration of equation of motion
Define
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iteration of equation of motion
Define equation of motion:
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iteration of equation of motion
Define equation of motion:
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iteration of equation of motion
Define equation of motion:
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iteration of equation of motion
Define equation of motion: diagrammatic representation: key: : x0 = + : x : G0 : -g
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iterate diagrams: = + 3 h
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iterate diagrams: = + 3 : ξ h
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iterate diagrams: = + 3 : ξ h +9 h + …
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averaging over noise: Recall: To average products of arbitrary numbers of factors of noise, pair in all ways (Wick’s theorem)
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averaging over noise: Recall: To average products of arbitrary numbers of factors of noise, pair in all ways (Wick’s theorem) etc.
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averaging over noise: Recall: To average products of arbitrary numbers of factors of noise, pair in all ways (Wick’s theorem) etc. Define the Green’s function
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averaging over noise: Recall: To average products of arbitrary numbers of factors of noise, pair in all ways (Wick’s theorem) etc. Define the Green’s function
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averaging the diagrams:
o o: = + 3
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averaging the diagrams:
o o: = + 3 o o +9
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averaging the diagrams:
o o: = + 3 o o +9 o +18 + … o
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correlation function o
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correlation function o o
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in algebra, o = + 3 o o +9 o +18 o + …
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“self-energy” (“mass operator”)
= + + + …
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“self-energy” (“mass operator”)
= + + + … = +
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“self-energy” (“mass operator”)
= + + + … = + Dyson equation
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“self-energy” (“mass operator”)
= + + + … = + Dyson equation or
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“self-energy” (“mass operator”)
= + + + … = + Dyson equation or o o Σ = = 3 + 6 + … o
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1st-order approximation
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1st-order approximation
or, in time domain,
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1st-order approximation
or, in time domain, A simple, low-order approximation for Σ sums an infinite number of terms in the series for G.
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1st-order approximation
or, in time domain, A simple, low-order approximation for Σ sums an infinite number of terms in the series for G. lowest-order approximation for Σ:
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1st-order approximation
or, in time domain, A simple, low-order approximation for Σ sums an infinite number of terms in the series for G. lowest-order approximation for Σ:
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1st-order approximation
or, in time domain, A simple, low-order approximation for Σ sums an infinite number of terms in the series for G. lowest-order approximation for Σ: increase in damping constant:
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Hartree approximation
Replace C0 and G0 in the expression for Σ by C and G. This sums up all self-energy insertions of this form on the internal lines in the self-energy diagrams.
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Hartree approximation
Replace C0 and G0 in the expression for Σ by C and G. This sums up all self-energy insertions of this form on the internal lines in the self-energy diagrams. lowest-order approximation (Hartree):
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Hartree approximation
Replace C0 and G0 in the expression for Σ by C and G. This sums up all self-energy insertions of this form on the internal lines in the self-energy diagrams. lowest-order approximation (Hartree): Σ = + … o o o o o o o o o o
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self-consistent solution
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self-consistent solution
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self-consistent solution
self-consistent equation
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self-consistent solution
self-consistent equation solution:
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self-consistent solution
self-consistent equation solution: This solution is approximate. But it is exact if x is a vector with n components, with in the limit n -> ∞.
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