Theoretical Analysis of Stochastic Search Algorithms

09/04/2017
by   Per Kristian Lehre, et al.
0

Theoretical analyses of stochastic search algorithms, albeit few, have always existed since these algorithms became popular. Starting in the nineties a systematic approach to analyse the performance of stochastic search heuristics has been put in place. This quickly increasing basis of results allows, nowadays, the analysis of sophisticated algorithms such as population-based evolutionary algorithms, ant colony optimisation and artificial immune systems. Results are available concerning problems from various domains including classical combinatorial and continuous optimisation, single and multi-objective optimisation, and noisy and dynamic optimisation. This chapter introduces the mathematical techniques that are most commonly used in the runtime analysis of stochastic search heuristics. Careful attention is given to the very popular artificial fitness levels and drift analyses techniques for which several variants are presented. To aid the reader's comprehension of the presented mathematical methods, these are applied to the analysis of simple evolutionary algorithms for artificial example functions. The chapter is concluded by providing references to more complex applications and further extensions of the techniques for the obtainment of advanced results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/04/2017

Drift Analysis

Drift analysis is one of the major tools for analysing evolutionary algo...
research
01/25/2021

A Survey On (Stochastic Fractal Search) Algorithm

Evolutionary Algorithms are naturally inspired approximation optimisatio...
research
04/17/2018

Memetic Algorithms Beat Evolutionary Algorithms on the Class of Hurdle Problems

Memetic algorithms are popular hybrid search heuristics that integrate l...
research
01/31/2023

A Proof that Using Crossover Can Guarantee Exponential Speed-Ups in Evolutionary Multi-Objective Optimisation

Evolutionary algorithms are popular algorithms for multiobjective optimi...
research
06/07/2023

Analysing the Robustness of NSGA-II under Noise

Runtime analysis has produced many results on the efficiency of simple e...
research
12/29/2019

Multi-Objective Optimisation of Damper Placement for Improved Seismic Response in Dynamically Similar Adjacent Buildings

Multi-objective optimisation of damper placement in dynamically symmetri...

Please sign up or login with your details

Forgot password? Click here to reset