Journal Article10.1109/tcyb.2022.3222101
Domain Adaptation Multitask Optimization
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TL;DR: In this article , a domain adaptation-based mapping strategy was proposed to reduce the difference across solution domains and find more genetic traits to improve the effectiveness of information interactions in multi-task optimization.
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Abstract: Multitask optimization (MTO) is a new optimization paradigm that leverages useful information contained in multiple tasks to help solve each other. It attracts increasing attention in recent years and gains significant performance improvements. However, the solutions of distinct tasks usually obey different distributions. To avoid that individuals after intertask learning are not suitable for the original task due to the distribution differences and even impede overall solution efficiency, we propose a novel multitask evolutionary framework that enables knowledge aggregation and online learning among distinct tasks to solve MTO problems. Our proposal designs a domain adaptation-based mapping strategy to reduce the difference across solution domains and find more genetic traits to improve the effectiveness of information interactions. To further improve the algorithm performance, we propose a smart way to divide initial population into different subpopulations and choose suitable individuals to learn. By ranking individuals in target subpopulation, worse-performing individuals can learn from other tasks. The significant advantage of our proposed paradigm over the state of the art is verified via a series of MTO benchmark studies.
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Citations
Block-Level Knowledge Transfer for Evolutionary Multitask Optimization
01 Jan 2023
TL;DR: The block-level knowledge transfer (BLKT) framework as mentioned in this paper divides the individuals of all the tasks into multiple blocks to obtain a block-based population, where each block corresponds to several consecutive dimensions.
Principal Component-Based Semi-Supervised Extreme Learning Machine for Soft Sensing
TL;DR: Zhang et al. as mentioned in this paper proposed a semi-supervised extreme learning machine (PCSELM) model for extracting latent features and learning nonlinear input-output relationship simultaneously.
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Location Agnostic Source-Free Domain Adaptive Learning to Predict Solar Power Generation
Md Shazid Islam,A S M Jahid Hasan,Md Saydur Rahman,Jubair Yusuf,Md Saiful Islam Sajol,Farhana Akter Tumpa +5 more
- 03 Dec 2023
TL;DR: A domain adaptive deep learning-based framework is proposed to estimate solar power generation using weather features that can solve the aforementioned challenges by utilizing a feed-forward deep convolutional network model to predict the solar power of an unknown location later.
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Robust Learning-based Model Predictive Control for Intelligent Vehicles with Unknown Dynamics and Unbounded Disturbances
Hanqiu Bao,Qiu Kang,Xudong Shi,Lingfei Xiao,Jing An +4 more
TL;DR: This paper proposes a Linear-Bayesian-Regression-based Model Predictive Control method for intelligent vehicles with unknown dynamics and unbounded disturbances, providing safety guarantees and recursive feasibility through posterior distribution-based uncertainty estimation and dynamic feedback gain.
3
An MCTS-Based Solution Approach to Solve Large-Scale Airline Crew Pairing Problems
TL;DR: In this paper , a novel iterative optimization framework based on monte carlo tree search (MCTS) is proposed to solve large-scale airline crew pairing problems efficiently, thus, the speed of pairing generation and solution accuracy can be improved.
3
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