Due to the highly non-convex nature of large-scale robust parameter estimation, avoiding poor local minima is challenging in real-world applications where input data is contaminated by a large or unknown fraction of outliers. In this paper, we introduce a novel solver for robust estimation that possesses a strong ability to escape poor local minima. Our algorithm is built upon the class of traditional graduated optimization techniques, which are considered state-of-the-art local methods to solve problems having many poor minima. The novelty of our work lies in the introduction of an adaptive kernel (or residual) scaling scheme, which allows us to achieve faster convergence rates. Like other existing methods that aim to return good local min...
In this paper, we propose a computationally tractable and provably convergent algorithm for robust o...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
International audienceThis paper deals with robust regression and subspace estimation and more preci...
Robust cost optimization is the task of fitting parameters to data points containing outliers. In pa...
Data sets with millions of observations occur nowadays in different areas. An insurance company or a...
Optimization applications often depend upon a huge number of uncertain parameters. In many contexts...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
An important application of adaptive filters is in sys-tem identification. Robustness of the adaptiv...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
International audienceRobust cost optimization is the challenging task of fitting a large number of ...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
We herein propose a new robust estimation method based on random pro-jections that is adaptive and, ...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
We consider optimization problems whose parameters are known only approximately, based on noisy samp...
In this paper, we propose a computationally tractable and provably convergent algorithm for robust o...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
International audienceThis paper deals with robust regression and subspace estimation and more preci...
Robust cost optimization is the task of fitting parameters to data points containing outliers. In pa...
Data sets with millions of observations occur nowadays in different areas. An insurance company or a...
Optimization applications often depend upon a huge number of uncertain parameters. In many contexts...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
An important application of adaptive filters is in sys-tem identification. Robustness of the adaptiv...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
International audienceRobust cost optimization is the challenging task of fitting a large number of ...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
We herein propose a new robust estimation method based on random pro-jections that is adaptive and, ...
The popular least-mean-squares (LMS) algorithm for adaptive filtering is nonrobust against impulsive...
We consider optimization problems whose parameters are known only approximately, based on noisy samp...
In this paper, we propose a computationally tractable and provably convergent algorithm for robust o...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
International audienceThis paper deals with robust regression and subspace estimation and more preci...