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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.
This book aims to explore the development model of Great Bay Area
(GBA) of China as economic engine under the context of open policy.
Based on comprehensive research, both theoretically and
practically, on the leading free ports in the world and the
regional development of well-known bay areas, it analyzes the
challenges and opportunities of GBA synergetic free ports. A series
of initiatives on the development of GBA synergetic free ports are
proposed, including the synergy of space, industry, finance,
technological innovation, institution, social governance, and
personnel. Also, it ends with a system dynamic model to simulate
the regional impact on GBA synergetic free ports, which indicates
that economic development, trade, government finance, and
population agglomeration would be improved significantly, in the
GBA synergetic free ports scenario.
This book provides readers the recent algorithmic advances towards
realizing the notion of optinformatics in evolutionary learning and
optimization. The book also provides readers a variety of practical
applications, including inter-domain learning in vehicle route
planning, data-driven techniques for feature engineering in
automated machine learning, as well as evolutionary transfer
reinforcement learning. Through reading this book, the readers will
understand the concept of optinformatics, recent research
progresses in this direction, as well as particular algorithm
designs and application of optinformatics. Evolutionary algorithms
(EAs) are adaptive search approaches that take inspiration from the
principles of natural selection and genetics. Due to their efficacy
of global search and ease of usage, EAs have been widely deployed
to address complex optimization problems occurring in a plethora of
real-world domains, including image processing, automation of
machine learning, neural architecture search, urban logistics
planning, etc. Despite the success enjoyed by EAs, it is worth
noting that most existing EA optimizers conduct the evolutionary
search process from scratch, ignoring the data that may have been
accumulated from different problems solved in the past. However,
today, it is well established that real-world problems seldom exist
in isolation, such that harnessing the available data from related
problems could yield useful information for more efficient
problem-solving. Therefore, in recent years, there is an increasing
research trend in conducting knowledge learning and data processing
along the course of an optimization process, with the goal of
achieving accelerated search in conjunction with better solution
quality. To this end, the term optinformatics has been coined in
the literature as the incorporation of information processing and
data mining (i.e., informatics) techniques into the optimization
process. The primary market of this book is researchers from both
academia and industry, who are working on computational
intelligence methods and their applications. This book is also
written to be used as a textbook for a postgraduate course in
computational intelligence emphasizing methodologies at the
intersection of optimization and machine learning.
This book aims to explore the development model of Great Bay Area
(GBA) of China as economic engine under the context of
open policy. Based on comprehensive research, both theoretically
and practically, on the leading free ports in the world and the
regional development of well-known bay areas, it analyzes the
challenges and opportunities of GBA synergetic free ports. A series
of initiatives on the development of GBA synergetic free ports are
proposed, including the synergy of space, industry, finance,
technological innovation, institution, social governance, and
personnel. Also, it ends with a system dynamic model to simulate
the regional impact on GBA synergetic free ports, which indicates
that economic development, trade, government finance, and
population agglomeration would be improved significantly, in the
GBA synergetic free ports scenario.
This book provides readers the recent algorithmic advances towards
realizing the notion of optinformatics in evolutionary learning and
optimization. The book also provides readers a variety of practical
applications, including inter-domain learning in vehicle route
planning, data-driven techniques for feature engineering in
automated machine learning, as well as evolutionary transfer
reinforcement learning. Through reading this book, the readers will
understand the concept of optinformatics, recent research
progresses in this direction, as well as particular algorithm
designs and application of optinformatics. Evolutionary algorithms
(EAs) are adaptive search approaches that take inspiration from the
principles of natural selection and genetics. Due to their efficacy
of global search and ease of usage, EAs have been widely deployed
to address complex optimization problems occurring in a plethora of
real-world domains, including image processing, automation of
machine learning, neural architecture search, urban logistics
planning, etc. Despite the success enjoyed by EAs, it is worth
noting that most existing EA optimizers conduct the evolutionary
search process from scratch, ignoring the data that may have been
accumulated from different problems solved in the past. However,
today, it is well established that real-world problems seldom exist
in isolation, such that harnessing the available data from related
problems could yield useful information for more efficient
problem-solving. Therefore, in recent years, there is an increasing
research trend in conducting knowledge learning and data processing
along the course of an optimization process, with the goal of
achieving accelerated search in conjunction with better solution
quality. To this end, the term optinformatics has been coined in
the literature as the incorporation of information processing and
data mining (i.e., informatics) techniques into the optimization
process. The primary market of this book is researchers from both
academia and industry, who are working on computational
intelligence methods and their applications. This book is also
written to be used as a textbook for a postgraduate course in
computational intelligence emphasizing methodologies at the
intersection of optimization and machine learning.
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