使用基于集成的读出函数的图形级表示

Jakub Binkowski, Albert Sawczyn, Denis Janiak, Piotr Bielak, Tomasz Kajdanowicz
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引用次数: 0

摘要

图机器学习模型已经成功地部署在各种应用领域。最突出的模型类型之一-图神经网络(gnn) -提供了一种优雅的方法来提取具有表现力的节点级表示向量,可用于解决与节点相关的问题,例如在社交网络中对用户进行分类。然而,许多任务需要在整个图的水平上表示,例如,分子应用。为了将节点级表示转换为图级向量,必须应用所谓的读出函数。在这项工作中,我们研究了现有的读出方法,包括简单的不可训练的方法,以及复杂的参数化模型。我们引入了基于集成的读出函数的概念,该函数结合了表示或预测。我们的实验表明,这样的集成允许比简单的单个读出更好的性能或类似的性能,复杂的,参数化的,但在模型复杂性的一小部分。
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Graph-level representations using ensemble-based readout functions
Graph machine learning models have been successfully deployed in a variety of application areas. One of the most prominent types of models - Graph Neural Networks (GNNs) - provides an elegant way of extracting expressive node-level representation vectors, which can be used to solve node-related problems, such as classifying users in a social network. However, many tasks require representations at the level of the whole graph, e.g., molecular applications. In order to convert node-level representations into a graph-level vector, a so-called readout function must be applied. In this work, we study existing readout methods, including simple non-trainable ones, as well as complex, parametrized models. We introduce a concept of ensemble-based readout functions that combine either representations or predictions. Our experiments show that such ensembles allow for better performance than simple single readouts or similar performance as the complex, parametrized ones, but at a fraction of the model complexity.
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