The General Framework A motivating example in finance Convergence Rate Scheme of the proof TCL for truncating Stochastic Algorithms
A Central Limit Theorem for Truncating Stochastic Algorithms
J´ erˆ
- me Lelong
http://cermics.enpc.fr/∼lelong
Tuesday September 5, 2006
J´ erˆ
- me Lelong (CERMICS)
Tuesday September 5, 2006 1 / 32 The General Framework A motivating example in finance Convergence Rate Scheme of the proof TCL for truncating Stochastic Algorithms
Outline
1 The General Framework
A standard stochastic algorithm Truncating Algorithm: Chen’s technique
2 A motivating example in finance
An adaptive Importance Sampling Technique
3 Convergence Rate
Already known results New Results
4 Scheme of the proof
J´ erˆ
- me Lelong (CERMICS)
Tuesday September 5, 2006 2 / 32 The General Framework A motivating example in finance Convergence Rate Scheme of the proof TCL for truncating Stochastic Algorithms The General Framework
1 The General Framework
A standard stochastic algorithm Truncating Algorithm: Chen’s technique
2 A motivating example in finance
An adaptive Importance Sampling Technique
3 Convergence Rate
Already known results New Results
4 Scheme of the proof
J´ erˆ
- me Lelong (CERMICS)
Tuesday September 5, 2006 3 / 32 The General Framework A motivating example in finance Convergence Rate Scheme of the proof TCL for truncating Stochastic Algorithms The General Framework
General Framework
Let u: θ ∈ Rd − → u(θ) ∈ Rd, be a continuous function defined as an expectation on a probability space (Ω, A, P). u : Rd − → Rd θ − → E[U(θ, Z)]. Z is a r.v. in Rm and U a measurable function defined on Rd × Rm.
Hypothesis 1 (convexity)
∃! θ⋆ ∈ Rd, u(θ⋆) = 0 and ∀θ ∈ Rd, θ = θ⋆, (θ − θ⋆|u(θ)) > 0. Remark: if u is the gradient of a strictly convex function, then u satisfies Hypothesis 1. Problem: How to find the root of u ?
J´ erˆ
- me Lelong (CERMICS)
Tuesday September 5, 2006 4 / 32