Insights on transfer optimization : because experience is the best teacher
Traditional optimization solvers tend to start the search from scratch by assuming zero prior knowledge about the task at hand. Generally speaking, the capabilities of solvers do not automatically grow with experience. In contrast, however, humans routinely make use of a pool of knowledge drawn from...
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sg-ntu-dr.10356-1479802021-04-16T02:31:13Z Insights on transfer optimization : because experience is the best teacher Gupta, Abhishek Ong, Yew-Soon Feng, Liang School of Computer Science and Engineering Data Science and Artificial Intelligence Research Centre Engineering::Computer science and engineering Transfer Multitasking Traditional optimization solvers tend to start the search from scratch by assuming zero prior knowledge about the task at hand. Generally speaking, the capabilities of solvers do not automatically grow with experience. In contrast, however, humans routinely make use of a pool of knowledge drawn from past experiences whenever faced with a new task. This is often an effective approach in practice as real-world problems seldom exist in isolation. Similarly, practically useful artificial systems are expected to face a large number of problems in their lifetime, many of which will either be repetitive or share domain-specific similarities. This view naturally motivates advanced optimizers that mimic human cognitive capabilities; leveraging on what has been seen before to accelerate the search toward optimal solutions of never before seen tasks. With this in mind, this paper sheds light on recent research advances in the field of global black-box optimization that champion the theme of automatic knowledge transfer across problems. We introduce a general formalization of transfer optimization, based on which the conceptual realizations of the paradigm are classified into three distinct categories, namely sequential transfer, multitasking, and multiform optimization. In addition, we carry out a survey of different methodological perspectives spanning Bayesian optimization and nature-inspired computational intelligence procedures for efficient encoding and transfer of knowledge building blocks. Finally, real-world applications of the techniques are identified, demonstrating the future impact of optimization engines that evolve as better problem-solvers over time by learning from the past and from one another. Nanyang Technological University Accepted version This work was supported in part by the Data Science and Artificial Intelligence Research Centre, and in part by the School of Computer Science and Engineering at Nanyang Technological University. 2021-04-16T02:31:13Z 2021-04-16T02:31:13Z 2017 Journal Article Gupta, A., Ong, Y. & Feng, L. (2017). Insights on transfer optimization : because experience is the best teacher. IEEE Transactions On Emerging Topics in Computational Intelligence, 2(1), 51-64. https://dx.doi.org/10.1109/TETCI.2017.2769104 2471-285X 0000-0002-6080-855X 0000-0002-4480-169X 0000-0002-8356-7242 https://hdl.handle.net/10356/147980 10.1109/TETCI.2017.2769104 2-s2.0-85059079700 1 2 51 64 en IEEE Transactions on Emerging Topics in Computational Intelligence © 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. The published version is available at: https://doi.org/10.1109/TETCI.2017.2769104. application/pdf |
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Engineering::Computer science and engineering Transfer Multitasking Gupta, Abhishek Ong, Yew-Soon Feng, Liang Insights on transfer optimization : because experience is the best teacher |
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Traditional optimization solvers tend to start the search from scratch by assuming zero prior knowledge about the task at hand. Generally speaking, the capabilities of solvers do not automatically grow with experience. In contrast, however, humans routinely make use of a pool of knowledge drawn from past experiences whenever faced with a new task. This is often an effective approach in practice as real-world problems seldom exist in isolation. Similarly, practically useful artificial systems are expected to face a large number of problems in their lifetime, many of which will either be repetitive or share domain-specific similarities. This view naturally motivates advanced optimizers that mimic human cognitive capabilities; leveraging on what has been seen before to accelerate the search toward optimal solutions of never before seen tasks. With this in mind, this paper sheds light on recent research advances in the field of global black-box optimization that champion the theme of automatic knowledge transfer across problems. We introduce a general formalization of transfer optimization, based on which the conceptual realizations of the paradigm are classified into three distinct categories, namely sequential transfer, multitasking, and multiform optimization. In addition, we carry out a survey of different methodological perspectives spanning Bayesian optimization and nature-inspired computational intelligence procedures for efficient encoding and transfer of knowledge building blocks. Finally, real-world applications of the techniques are identified, demonstrating the future impact of optimization engines that evolve as better problem-solvers over time by learning from the past and from one another. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Gupta, Abhishek Ong, Yew-Soon Feng, Liang |
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Gupta, Abhishek Ong, Yew-Soon Feng, Liang |
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Gupta, Abhishek |
title |
Insights on transfer optimization : because experience is the best teacher |
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Insights on transfer optimization : because experience is the best teacher |
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Insights on transfer optimization : because experience is the best teacher |
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Insights on transfer optimization : because experience is the best teacher |
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Insights on transfer optimization : because experience is the best teacher |
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insights on transfer optimization : because experience is the best teacher |
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2021 |
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https://hdl.handle.net/10356/147980 |
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