Research on neural networks has gained significant momentum over the past few years. Because training is a resource-intensive process and training data cannot always be made available to everyone, there has been a trend to reuse pre-trained neural networks. As such, neural networks themselves have become research data. In this paper, we first present the neural network ontology FAIRnets Ontology, an ontology to make existing neural network models findable, accessible, interoperable, and reusable according to the FAIR principles. Our ontology allows us to model neural networks on a meta-level in a structured way, including the representation of all network layers and their characteristics. Secondly, we have modeled over 18,400 neural networks from GitHub based on this ontology, which we provide to the public as a knowledge graph called FAIRnets, ready to be used for recommending suitable neural networks to data scientists.
翻译:过去几年来,神经网络研究取得了巨大的势头。由于培训是一个资源密集型过程,培训数据不能总是向每个人提供,因此出现了重新利用培训前神经网络的趋势。因此,神经网络本身已成为研究数据。在本文件中,我们首先介绍了神经网络肿瘤网络FAIRnets Ontology, 一种根据FAIR原则使现有神经网络模型可以找到、可访问、可互操作和可再使用的本体学。我们的本体学使我们能够以结构化的方式在元层次上模拟神经网络,包括所有网络层及其特征的代表性。第二,我们根据这个理论,从GitHub建立了18,400多个神经网络的模型,我们作为称为FAIRnets的知识图表向公众提供,准备用来推荐合适的神经网络供数据科学家使用。