このページのリンク

Evolutionary Multi-Task Optimization : Foundations and Methodologies / by Liang Feng, Abhishek Gupta, Kay Chen Tan, Yew Soon Ong
(Machine Learning: Foundations, Methodologies, and Applications. ISSN:27309916)

データ種別 電子ブック
1st ed. 2023.
出版者 (Singapore : Springer Nature Singapore : Imprint: Springer)
出版年 2023
大きさ X, 219 p. 1 illus : online resource
著者標目 *Feng, Liang author
Gupta, Abhishek author
Tan, Kay Chen author
Ong, Yew Soon author
SpringerLink (Online service)

所蔵情報を非表示

URL
射水-電子 007 EB0002598 Computer Scinece R0 2005-6,2022-3

9789811956508

書誌詳細を非表示

一般注記 Chapter 1.Introduction -- Chapter 2. Overview and Application-driven Motivations of Evolutionary Multitasking -- Chapter 3.The Multi-factorial Evolutionary Algorithm -- Chapter 4. Multi-factorial Evolutionary Algorithm with Adaptive Knowledge Transfer -- Chapter 5.Explicit Evolutionary Multi-task Optimization Algorithm -- Chapter 6.Evolutionary Multi-task Optimization for Generalized Vehicle Routing Problem With Occasional Drivers -- Chapter 7. Explicit Evolutionary Multi-task Optimization for Capacitated Vehicle Routing Problem -- Chapter 8. Multi-Space Evolutionary Search for Large Scale Single-Objective Optimization -- Chapter 9.Multi-Space Evolutionary Search for Large-scale Multi-Objective Optimization
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.
HTTP:URL=https://doi.org/10.1007/978-981-19-5650-8
件 名 LCSH:Artificial intelligence
LCSH:Machine learning
LCSH:Mathematical optimization
LCSH:Computational intelligence
FREE:Artificial Intelligence
FREE:Machine Learning
FREE:Optimization
FREE:Computational Intelligence
分 類 LCC:Q334-342
LCC:TA347.A78
DC23:006.3
書誌ID EB00001986
ISBN 9789811956508

 類似資料