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首页> 外文期刊>Journal of machine learning research >ML-Flex: A Flexible Toolbox for Performing Classification Analyses In Parallel
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ML-Flex: A Flexible Toolbox for Performing Classification Analyses In Parallel

机译:ML-Flex:一种用于并行执行分类分析的灵活工具箱

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Motivated by a need to classify high-dimensional, heterogeneous data from the bioinformatics domain, we developed ML-Flex, a machine-learning toolbox that enables users to perform two-class and multi-class classification analyses in a systematic yet flexible manner. ML-Flex was written in Java but is capable of interfacing with third-party packages written in other programming languages. It can handle multiple input-data formats and supports a variety of customizations. ML-Flex provides implementations of various validation strategies, which can be executed in parallel across multiple computing cores, processors, and nodes. Additionally, ML-Flex supports aggregating evidence across multiple algorithms and data sets via ensemble learning. This open-source software package is freely available from http://mlflex.sourceforge.net. color="gray">
机译:出于对来自生物信息学领域的高维度,异构数据进行分类的需求,我们开发了ML-Flex,这是一种机器学习工具箱,使用户能够以系统而灵活的方式执行两类和多类分类分析。 ML-Flex是用Java编写的,但是能够与用其他编程语言编写的第三方程序包接口。它可以处理多种输入数据格式,并支持各种自定义。 ML-Flex提供了各种验证策略的实现,可以在多个计算核心,处理器和节点之间并行执行。此外,ML-Flex还支持通过集成学习跨多种算法和数据集汇总证据。该开源软件包可从http://mlflex.sourceforge.net免费获得。 color =“ gray”>

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