Novel Metric based on Walsh Coefficients for measuring problem difficulty in Estimation of Distribution Algorithms

02/24/2022
by   Saeed Ghadiri, et al.
0

Estimation of distribution algorithms are evolutionary algorithms that use extracted information from the population instead of traditional genetic operators to generate new solutions. This information is represented as a probabilistic model and the effectiveness of these algorithms is dependent on the quality of these models. However, some studies have shown that even multivariate EDAs fail to build a proper model in some problems. Usually, in these problems, there is intrinsic pairwise independence between variables. In the literature, there are few studies that investigate the difficulty and the nature of problems that can not be solved by EDAs easily. This paper proposes a new metric for measuring problem difficulty by examining the properties of model-building mechanisms in EDAs. For this purpose, we use the estimated Walsh coefficients of dependent and independent variables. The proposed metric is used to evaluate the difficulty of some well-known benchmark problems in EDAs. Different metrics like Fitness Distance Correlation (FDC) are used to compare how well the proposed metric measures problem difficulty for EDAs. Results indicate that the proposed metric can accurately predict the EDA's performance in different problems.

READ FULL TEXT
research
10/11/2012

Fitness Landscape-Based Characterisation of Nature-Inspired Algorithms

A significant challenge in nature-inspired algorithmics is the identific...
research
06/06/2023

Phylogeny-informed fitness estimation

Phylogenies (ancestry trees) depict the evolutionary history of an evolv...
research
01/11/2012

Distance-Based Bias in Model-Directed Optimization of Additively Decomposable Problems

For many optimization problems it is possible to define a distance metri...
research
05/18/2004

Efficiency Enhancement of Genetic Algorithms via Building-Block-Wise Fitness Estimation

This paper studies fitness inheritance as an efficiency enhancement tech...
research
04/05/2023

Doubly Stochastic Matrix Models for Estimation of Distribution Algorithms

Problems with solutions represented by permutations are very prominent i...
research
09/03/2014

Tunably Rugged Landscapes with Known Maximum and Minimum

We propose NM landscapes as a new class of tunably rugged benchmark prob...
research
06/09/2022

Analysis of Learner Independent Variables for Estimating Assessment Items Difficulty Level

The quality of assessment determines the quality of learning, and is cha...

Please sign up or login with your details

Forgot password? Click here to reset