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《Memetic Computing》杂志封面

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《Memetic Computing》中科院JCR分区

  • 2025年3月升级版:
  • 大类小类学科Top综述期刊
    计算机科学 3区
    COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
    计算机:人工智能
    3区
    OPERATIONS RESEARCH & MANAGEMENT SCIENCE
    运筹学与管理科学
    3区

  • 2023年12月升级版:
  • 大类小类学科Top综述期刊
    计算机科学 2区
    COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
    计算机:人工智能
    2区
    OPERATIONS RESEARCH & MANAGEMENT SCIENCE
    运筹学与管理科学
    2区

    《Memetic Computing》期刊简介:

    Memes have been defined as basic units of transferrable information that reside in the brain and are propagated across populations through the process of imitation. From an algorithmic point of view, memes have come to be regarded as building-blocks of prior knowledge, expressed in arbitrary computational representations (e.g., local search heuristics, fuzzy rules, neural models, etc.), that have been acquired through experience by a human or machine, and can be imitated (i.e., reused) across problems.

    The Memetic Computing journal welcomes papers incorporating the aforementioned socio-cultural notion of memes into artificial systems, with particular emphasis on enhancing the efficacy of computational and artificial intelligence techniques for search, optimization, and machine learning through explicit prior knowledge incorporation. The goal of the journal is to thus be an outlet for high quality theoretical and applied research on hybrid, knowledge-driven computational approaches that may be characterized under any of the following categories of memetics:

    Type 1: General-purpose algorithms integrated with human-crafted heuristics that capture some form of prior domain knowledge; e.g., traditional memetic algorithms hybridizing evolutionary global search with a problem-specific local search.
    Type 2: Algorithms with the ability to automatically select, adapt, and reuse the most appropriate heuristics from a diverse pool of available choices; e.g., learning a mapping between global search operators and multiple local search schemes, given an optimization problem at hand.
    Type 3: Algorithms that autonomously learn with experience, adaptively reusing data and/or machine learning models drawn from related problems as prior knowledge in new target tasks of interest; examples include, but are not limited to, transfer learning and optimization, multi-task learning and optimization, or any other multi-X evolutionary learning and optimization methodologies.

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    《Memetic Computing》评估说明

      《Memetic Computing》发布于爱科学网,并永久归类相关SCI期刊导航类别中,本站只是硬性分析 "《MEMET COMPUT》" 杂志的可信度。学术期刊真正的价值在于它是否能为科技进步及社会发展带来积极促进作用。"《MEMET COMPUT》" 的价值还取决于各种因素的综合分析。

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