- Series
- Stochastics Seminar
- Time
- Thursday, February 2, 2017 - 3:05pm for 1 hour (actually 50 minutes)
- Location
- Skiles 006
- Speaker
- Sohail Bahmani – ECE, GaTech – sohail.bahmani@ece.gatech.edu – http://users.ece.gatech.edu/sbahmani7/
- Organizer
- Christian Houdré
We propose a new convex relaxation for the problem of solving
(random) quadratic equations known as phase retrieval. The main advantage
of the proposed method is that it operates in the natural domain of the
signal. Therefore, it has significantly lower computational cost than the
existing convex methods that rely on semidefinite programming and competes
with the recent non-convex methods. In the proposed formulation the
quadratic equations are relaxed to inequalities describing a "complex
polytope". Then, using an *anchor vector* that itself can be constructed
from the observations, a simple convex program estimates the ground truth
as an (approximate) extreme point of the polytope. We show, using classic
results in statistical learning theory, that with random measurements this
convex program produces accurate estimates. I will also discuss some
preliminary results on a more general class of regression problems where we
construct accurate and computationally efficient estimators using anchor
vectors.