TL;DR
This paper introduces a scalable transfer evolutionary optimization framework capable of handling over 1000 source tasks, improving efficiency and effectiveness in large-scale, sparse, multi-source scenarios.
Contribution
It proposes a novel co-evolutionary framework with two species for joint evolution in knowledge and solution spaces, enabling scalability and online learning in big task-instances.
Findings
Efficiently handles over 1000 source tasks.
Scales well with increasing source tasks.
Effective in sparse source-target relatedness scenarios.
Abstract
In today's digital world, we are faced with an explosion of data and models produced and manipulated by numerous large-scale cloud-based applications. Under such settings, existing transfer evolutionary optimization frameworks grapple with simultaneously satisfying two important quality attributes, namely (1) scalability against a growing number of source tasks and (2) online learning agility against sparsity of relevant sources to the target task of interest. Satisfying these attributes shall facilitate practical deployment of transfer optimization to scenarios with big task-instances, while curbing the threat of negative transfer. While applications of existing algorithms are limited to tens of source tasks, in this paper, we take a quantum leap forward in enabling more than two orders of magnitude scale-up in the number of tasks; i.e., we efficiently handle scenarios beyond 1000…
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