4.7 Article

Orthogonal Transfer for Multitask Optimization

Journal

IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION
Volume 27, Issue 1, Pages 185-200

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2022.3160196

Keywords

Task analysis; Optimization; Benchmark testing; Statistics; Sociology; Search problems; Transfer learning; Differential evolution (DE); evolutionary computation (EC); evolutionary multitask optimization (EMTO); knowledge transfer (KT); orthogonal experimental design (OED); orthogonal transfer (OT)

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This article proposes a novel orthogonal transfer (OT) method enabled by a cross-task mapping (CTM) strategy, which achieves high-quality knowledge transfer among heterogeneous tasks. The OT method handles task dimensionality differences and finds the best combination of different dimensions for high-quality knowledge transfer.
Knowledge transfer (KT) plays a key role in multitask optimization. However, most of the existing KT methods still face two challenges. First, the tasks may commonly have different dimensionalities (DDs), making the KT between heterogeneous search spaces very difficult. Second, the tasks may have different degrees of similarity in different dimensions, making that treating all dimensions with equal importance may be harmful to the KT process. To address these two challenges, this article proposes a novel orthogonal transfer (OT) method that is enabled by a cross-task mapping (CTM) strategy, which can achieve high-quality KT among heterogeneous tasks. For the first challenge, the CTM strategy maps the global best individual of one task from its original search space to the search space of the target task via an optimization process, which can handle the difference in task dimensionality. For the second challenge, the OT method is performed on the CTM-obtained individual and a random individual of the target task to find the best combination of different dimensions in these two individuals rather than treating all the dimensions equally, so as to achieve high-quality KT. To verify the effectiveness of the proposed OT method and the resulted OT-based multitask optimization (OTMTO) algorithm, this article not only uses the existing multitask optimization benchmark but also proposes a new benchmark test suite named multitask optimization problems (MTOPs) with DDs. Comprehensive experimental results on the existing and the proposed benchmarks show that the proposed OT method and the OTMTO algorithm are very advantageous in providing high-quality KT and in handling the heterogeneity of search space in MTOPs compared to the existing competitive evolutionary multitask optimization (EMTO) algorithms.

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