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Toward Less Constrained Macro-Neural Architecture Search.

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    Less constrained macro-neural architecture search (LCMNAS) enables automated discovery of high-performing neural networks. This method explores broader search spaces without human heuristics, achieving state-of-the-art results efficiently.

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    Area of Science:

    • Artificial Intelligence
    • Machine Learning
    • Computer Vision

    Background:

    • Neural Architecture Search (NAS) methods often rely on human-defined constraints, limiting the exploration of novel network architectures.
    • Existing NAS approaches typically focus on cell-based search spaces, restricting the design of entire network structures (macro-search).

    Purpose of the Study:

    • To introduce Less Constrained Macro-Neural Architecture Search (LCMNAS) for broader architectural exploration.
    • To develop a NAS method that performs macro-search without predefined heuristics or bounded search spaces.
    • To achieve state-of-the-art performance with reduced computational cost.

    Main Methods:

    • LCMNAS utilizes weighted directed graphs (WDGs) to autonomously generate complex, less constrained search spaces informed by existing architectures.
    • An evolutionary search strategy generates complete architectures from scratch.
    • A mixed-performance estimation approach combines initial architecture information with low-fidelity estimates to predict performance.

    Main Results:

    • LCMNAS successfully generated both cell-based and macro-based architectures across 14 diverse datasets.
    • The method achieved state-of-the-art results with minimal GPU computation.
    • Extensive studies validated the effectiveness of LCMNAS components in both cell and macro search settings.

    Conclusions:

    • LCMNAS significantly advances NAS by enabling unconstrained macro-search, leading to novel and high-performing neural network architectures.
    • The proposed method offers an efficient and automated approach to discovering complex architectures, outperforming human-designed networks.