Skip to main content
Top

2023 | Book

Evolutionary Multi-Task Optimization

Foundations and Methodologies

Authors: Liang Feng, Abhishek Gupta, Kay Chen Tan, Yew Soon Ong

Publisher: Springer Nature Singapore

Book Series : Machine Learning: Foundations, Methodologies, and Applications

insite
SEARCH

About this book

A remarkable facet of the human brain is its ability to manage multiple tasks with apparent simultaneity. Knowledge learned from one task can then be used to enhance problem-solving in other related tasks. In machine learning, the idea of leveraging relevant information across related tasks as inductive biases to enhance learning performance has attracted significant interest. In contrast, attempts to emulate the human brain’s ability to generalize in optimization – particularly in population-based evolutionary algorithms – have received little attention to date.

Recently, a novel evolutionary search paradigm, Evolutionary Multi-Task (EMT) optimization, has been proposed in the realm of evolutionary computation. In contrast to traditional evolutionary searches, which solve a single task in a single run, evolutionary multi-tasking algorithm conducts searches concurrently on multiple search spaces corresponding to different tasks or optimization problems, each possessing a unique function landscape. By exploiting the latent synergies among distinct problems, the superior search performance of EMT optimization in terms of solution quality and convergence speed has been demonstrated in a variety of continuous, discrete, and hybrid (mixture of continuous and discrete) tasks.

This book discusses the foundations and methodologies of developing evolutionary multi-tasking algorithms for complex optimization, including in domains characterized by factors such as multiple objectives of interest, high-dimensional search spaces and NP-hardness.

Table of Contents

Frontmatter

Background

Frontmatter
Chapter 1. Introduction
Abstract
Optimization is an essential ingredient in many real-world problem solving systems and artificial intelligence (AI) algorithms.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Chapter 2. Overview and Application-Driven Motivations of Evolutionary Multitasking
Abstract
A plethora of EMT algorithms have been proposed lately. Some of these either directly or indirectly make use of the probabilistic formulation of MTO discussed in Chap. 1.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong

Evolutionary Multi-Task Optimization for Solving Continuous Optimization Problems

Frontmatter
Chapter 3. The Multi-Factorial Evolutionary Algorithm
Abstract
This chapter presents the first version of the well-known multifactorial evolutionary algorithm (MFEA).
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Chapter 4. Multi-Factorial Evolutionary Algorithm with Adaptive Knowledge Transfer
Abstract
In MFEA, the knowledge transfer across tasks is realized via the crossover between solutions that possess different skill factors.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Chapter 5. Explicit Evolutionary Multi-Task Optimization Algorithm
Abstract
Despite the success enjoyed by the EMT search paradigm, it is worth noting that the implicit EMT algorithms introduced in Chaps. 3 and 4 are designed based on the unified solution representation, and the knowledge sharing across tasks for problem-solving is realized by the implicit genetic transfer in chromosomal crossover.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong

Evolutionary Multi-Task Optimization for Solving Combinatorial Optimization Problems

Frontmatter
Chapter 6. Evolutionary Multi-Task Optimization for Generalized Vehicle Routing Problem with Occasional Drivers
Abstract
Besides solving the continuous optimization problems, this chapter introduces the evolutionary multitasking algorithm for solving the complex combinatorial optimization problems. In particular, in this chapter, we first present a generalized variant of vehicle routing problem with occasional drivers, i.e., Vehicle Routing Problem with Heterogeneous capacity, Time window and Occasional driver (VRPHTO), which is inspired by today’s “crowdshipping” and “sharing economy” in vehicle routing. Next, to further conceptualize the cloud-based optimization service that is capable of catering to multiple VRPHTOs requests at the same time, we present an evolutionary multitasking algorithm (EMA) to optimize multiple VRPHTOs simultaneously.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Chapter 7. Explicit Evolutionary Multi-Task Optimization for Capacitated Vehicle Routing Problem
Abstract
Abstract
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong

Evolutionary Multi-Task Optimization for Solving Large-Scale Optimization Problems

Frontmatter
Chapter 8. Multi-Space Evolutionary Search for Large-Scale Single-Objective Optimization
Abstract
Today, because of the exponential growth of the volume of data in big data applications, large-scale optimization problems (i.e., optimization problems with a large number of decision variables) have become ubiquitous in the real world [219, 220]. In this chapter, building on the algorithms and observations presented for solving both continuous and combinatorial optimization problems, we further present a novel multi-space evolutionary search framework based on EMT for solving large-scale single-objective optimization problem.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Chapter 9. Multi-Space Evolutionary Search for Large-Scale Multi-Objective Optimization
Abstract
Besides solving large-scale single objective optimization problems, this chapter further demonstrate the multi-space evolutionary search for large-scale multi-objective optimization by using the evolutionary multitasking paradigm of MFO, termed MOEMT. The presented MOEMT first constructs several simplified problem spaces in a multi-variation manner to assist target optimization.
Liang Feng, Abhishek Gupta, Kay Tan, Yew Ong
Backmatter
Metadata
Title
Evolutionary Multi-Task Optimization
Authors
Liang Feng
Abhishek Gupta
Kay Chen Tan
Yew Soon Ong
Copyright Year
2023
Publisher
Springer Nature Singapore
Electronic ISBN
978-981-19-5650-8
Print ISBN
978-981-19-5649-2
DOI
https://doi.org/10.1007/978-981-19-5650-8

Premium Partner