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Towards open machine learning: Mloss.org and mldata.org

机译:走向开放式机器学习:Mloss.org和mldata.org

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摘要

Machine Learning (ML) is a scientific field comprised of both theoretical and empirical results. For methodological advances, one key aspect of reproducible research is the ability to compare a proposed approach with the current state of the art. Such a comparison can be theoretical in nature, but often a detailed theoretical analysis is not possible or may not tell the whole story. In such cases, an empirical comparison is necessary. To produce reproducible machine learning research, there are three main required components that need to be easily available: - The paper describing the method clearly and comprehensively. - The data on which the results are computed. - Software (possibly source code) that implements the method and produces the figures and tables of results in the paper. We share our experiences about mloss.org and mldata.org, community efforts towards encouraging open source software and open data in machine learning.
机译:机器学习(ML)是一个科学领域,由理论和经验两个方面组成。对于方法学的进步,可重复性研究的一个关键方面是能够将提议的方法与当前技术水平进行比较。这种比较本质上可以是理论上的,但通常不可能进行详细的理论分析,也可能无法说明全部内容。在这种情况下,必须进行经验比较。为了进行可重复的机器学习研究,需要轻松获取三个主要必需组件:-清晰,全面地描述该方法的论文。 -计算结果所依据的数据。 -实现该方法并在论文中生成结果图和表格的软件(可能是源代码)。我们分享有关mloss.org和mldata.org的经验,以及社区在鼓励开源软件和机器学习中的开放数据方面的努力。

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