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Think globally and solve locally: secondary memory-based network learning for automated multi-species function prediction

机译:放眼全球并在本地解决:基于二级内存的网络学习可自动进行多种功能预测

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摘要

BackgroundNetwork-based learning algorithms for automated function prediction (AFP) are negatively affected by the limited coverage of experimental data and limited a priori known functional annotations. As a consequence their application to model organisms is often restricted to well characterized biological processes and pathways, and their effectiveness with poorly annotated species is relatively limited. A possible solution to this problem might consist in the construction of big networks including multiple species, but this in turn poses challenging computational problems, due to the scalability limitations of existing algorithms and the main memory requirements induced by the construction of big networks. Distributed computation or the usage of big computers could in principle respond to these issues, but raises further algorithmic problems and require resources not satisfiable with simple off-the-shelf computers.
机译:背景技术基于网络的用于自动功能预测(AFP)的学习算法受到实验数据覆盖范围有限和先验已知功能注释的负面影响。因此,它们在模型生物中的应用通常仅限于特征明确的生物学过程和途径,并且它们对注释较差的物种的有效性相对有限。该问题的可能解决方案可能包括构建包含多个物种的大型网络,但是由于现有算法的可伸缩性限制以及大型网络的构建引起的主内存需求,这又带来了具有挑战性的计算问题。分布式计算或大型计算机的使用原则上可以解决这些问题,但会引发其他算法问题,并且需要简单的现成计算机无法满足的资源。

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