arXiv: Disordered Systems and Neural Networks | 2019

Self-planting: digging holes in rough landscapes

 
 
 
 

Abstract


Motivated by a potential application in economics, we investigate a simple dynamical scheme to produce planted solutions in optimization problems with continuous variables. We consider the perceptron model as a prototypical model. Starting from random input patterns and perceptron weights, we find a locally optimal assignment of weights by gradient descent; we then remove misclassified patterns (if any), and replace them by new, randomly extracted patterns. This remove and replace procedure is iterated until perfect classification is achieved. We call this procedure self-planting because the planted state is not pre-assigned but results from a co-evolution of weights and patterns. We find an algorithmic phase transition separating a region in which self-planting is efficiently achieved from a region in which it takes exponential time in the system size. We conjecture that this transition might exist in a broad class of similar problems.

Volume None
Pages None
DOI 10.1088/1742-5468/ab4800
Language English
Journal arXiv: Disordered Systems and Neural Networks

Full Text