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Online Inference with Multi-modal Likelihood Functions

Abstract

Let (Yt)t1(Y_t)_{t\geq 1} be a sequence of i.i.d.\ observations and {fθ,θRd}\{f_\theta,\theta\in \mathbb{R}^d\} be a parametric model. We introduce a new online algorithm for computing a sequence (θ^t)t1(\hat{\theta}_t)_{t\geq 1} which is shown to converge almost surely to argmaxθRdE[logfθ(Y1)]\text{argmax}_{\theta\in \mathbb{R}^d}\mathbb{E}[\log f_\theta(Y_1)] at rate O(log(t)(1+ε)/2t1/2) \mathcal{O}(\log (t)^{(1+\varepsilon)/2}t^{-1/2}), with ε>0\varepsilon>0 a user specified parameter. This convergence result is obtained under standard conditions on the statistical model and, most notably, we allow the mapping θE[logfθ(Y1)]\theta\mapsto \mathbb{E}[\log f_\theta(Y_1)] to be multi-modal. However, the computational cost to process each observation grows exponentially with the dimension of θ\theta, which makes the proposed approach applicable to low or moderate dimensional problems only. We also derive a version of the estimator θ^t\hat{\theta}_t which is well suited to Student-t linear regression models. The corresponding estimator of the regression coefficients is robust to the presence of outliers, as shown by experiments on simulated and real data, and thus, as a by-product of this work, we obtain a new online and adaptive robust estimation method for linear regression models.

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