Fast and Reliable Parameter Estimation from Nonlinear Observations
Oymak, Samet, Soltanolkotabi, Mahdi
In this paper we study the problem of recovering a structured but unknown parameter ${\bf{\theta}}^*$ from $n$ nonlinear observations of the form $y_i=f(\langle {\bf{x}}_i,{\bf{\theta}}^*\rangle)$ for $i=1,2,\ldots,n$. We develop a framework for characterizing time-data tradeoffs for a variety of parameter estimation algorithms when the nonlinear function $f$ is unknown. This framework includes many popular heuristics such as projected/proximal gradient descent and stochastic schemes. For example, we show that a projected gradient descent scheme converges at a linear rate to a reliable solution with a near minimal number of samples. We provide a sharp characterization of the convergence rate of such algorithms as a function of sample size, amount of a-prior knowledge available about the parameter and a measure of the nonlinearity of the function $f$. These results provide a precise understanding of the various tradeoffs involved between statistical and computational resources as well as a-prior side information available for such nonlinear parameter estimation problems.
Oct-22-2016
- Country:
- Europe > Spain
- Catalonia > Barcelona Province > Barcelona (0.04)
- North America > United States
- California
- Los Angeles County > Los Angeles (0.28)
- Santa Clara County > Mountain View (0.04)
- California
- Europe > Spain
- Genre:
- Research Report > New Finding (0.47)
- Technology: