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{{short description|Solving multiple machine learning tasks at the same time}}
'''Multi-task learning''' (MTL) is a subfield of [[machine learning]] in which multiple learning tasks are solved at the same time, while exploiting commonalities and differences across tasks. This can result in improved learning efficiency and prediction accuracy for the task-specific models, when compared to training the models separately.<ref>Baxter, J. (2000). A model of inductive bias learning" ''Journal of Artificial Intelligence Research'' 12:149--198, [http://www-2.cs.cmu.edu/afs/cs/project/jair/pub/volume12/baxter00a.pdf On-line paper]</ref><ref>[[Sebastian Thrun|Thrun, S.]] (1996). Is learning the n-th thing any easier than learning the first?. In Advances in Neural Information Processing Systems 8, pp. 640--646. MIT Press. [http://citeseer.ist.psu.edu/thrun96is.html Paper at Citeseer]</ref><ref name=":2">{{Cite journal|url =
Inherently, Multi-task learning is a [[multi-objective optimization]] problem having [[trade-off]]s between different tasks.<ref>Multi-Task Learning as Multi-Objective Optimization
Part of Advances in Neural Information Processing Systems 31 (NeurIPS 2018), https://proceedings.neurips.cc/paper/2018/hash/432aca3a1e345e339f35a30c8f65edce-Abstract.html</ref>
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==== Evolutionary multi-tasking ====
'''Evolutionary multi-tasking''' has been explored as a means of exploiting the [[implicit parallelism]] of population-based search algorithms to simultaneously progress multiple distinct optimization tasks. By mapping all tasks to a unified search space, the evolving population of candidate solutions can harness the hidden relationships between them through continuous genetic transfer. This is induced when solutions associated with different tasks crossover.<ref name=mfo/><ref name=cognitive>Ong, Y. S., & Gupta, A. (2016). [http://www.cil.ntu.edu.sg/mfo/downloads/MultitaskOptimization_manuscript.pdf Evolutionary multitasking: a computer science view of cognitive multitasking]. Cognitive Computation, 8(2), 125-142.</ref> Recently, modes of knowledge transfer that are different from direct solution [[Crossover (genetic algorithm)|crossover]] have been explored.<ref>{{cite journal | doi=10.1109/TCYB.2018.2845361 | title=Evolutionary Multitasking via Explicit Autoencoding | year=2019 | last1=Feng | first1=Liang | last2=Zhou | first2=Lei | last3=Zhong | first3=Jinghui | last4=Gupta | first4=Abhishek | last5=Ong | first5=Yew-Soon | last6=Tan | first6=Kay-Chen | last7=Qin | first7=A. K. | journal=IEEE Transactions on Cybernetics | volume=49 | issue=9 | pages=3457–3470 | pmid=29994415 | s2cid=51613697 }}</ref><ref>{{Cite journal |last1=Jiang |first1=Yi |last2=Zhan |first2=Zhi-Hui |last3=Tan |first3=Kay Chen |last4=Zhang |first4=Jun |date=January 2024 |title=Block-Level Knowledge Transfer for Evolutionary Multitask Optimization
==== Game-theoretic optimization ====
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