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    Area of Science:

    • Machine Learning
    • Optimization Algorithms
    • Artificial Intelligence

    Background:

    • Sequential Transfer Optimization (STO) is gaining interest, but lacks standardized benchmarks.
    • Existing STO test problems are often manually configured, limiting scalability and leading to biased algorithm performance.
    • A systematic comparison of STO algorithms is hindered by the absence of comprehensive, scalable evaluation tools.

    Purpose of the Study:

    • To introduce a novel benchmark suite for systematically evaluating Sequential Transfer Optimization (STO) algorithms.
    • To address the limitations of existing STO test problems, including manual configuration and lack of scalability.
    • To provide a platform for uncovering nuanced algorithm behaviors through diverse and customizable task relationships.

    Main Methods:

    • Introduced four concepts for characterizing STO problems (STOPs).
    • Defined 'similarity distribution' to quantitatively assess relationships between source and target task optimal solutions.
    • Developed a scalable problem generator with a novel inverse strategy for customizing similarity distributions.

    Main Results:

    • Created a benchmark suite of 12 STOPs with customized similarity relationships.
    • The new benchmark revealed findings like biased transferability representation and performance improvements unrelated to search experience, previously undetected.
    • Demonstrated the generator's scalability and ability to capture diverse, real-world similarity relationships.

    Conclusions:

    • The developed benchmark suite offers a robust platform for evaluating STO algorithms.
    • The novel problem generator and similarity distribution metric enable more reliable and generalizable STO research.
    • This work facilitates deeper understanding of STO algorithm behavior and performance across varied task scenarios.