论文标题
GraphHD:使用高维计算有效的图形分类
GraphHD: Efficient graph classification using hyperdimensional computing
论文作者
论文摘要
由Kanerva开发的高维计算(HDC)是一种受神经科学启发的机器学习的计算模型。 HDC利用生物神经系统的特征,例如高维,随机性和信息的全息表示,以在准确性,效率和鲁棒性之间达到良好的平衡。 HDC模型已经被证明在不同的学习应用程序中很有用,尤其是在资源有限的设置(例如越来越流行的物联网(IoT))中。在HDC上目前工作中缺少的一类学习任务是图形分类。图形是最重要的信息表示形式之一,但是,直到今天,HDC算法尚未在一般意义上应用于图形学习问题。此外,具有有限的计算功能的物联网和传感器网络中的图形学习给总体设计方法带来了挑战。在本文中,我们提出了使用HDC的GraphHd $ - $ $的基线方法。我们在现实世界图分类问题上评估GraphHD。我们的结果表明,与最先进的图形神经网络(GNNS)相比,提议的模型可以达到可比的精度,而培训和推理时间平均为14.6 $ \ times $ $和2.0美元$ \ times $ $。
Hyperdimensional Computing (HDC) developed by Kanerva is a computational model for machine learning inspired by neuroscience. HDC exploits characteristics of biological neural systems such as high-dimensionality, randomness and a holographic representation of information to achieve a good balance between accuracy, efficiency and robustness. HDC models have already been proven to be useful in different learning applications, especially in resource-limited settings such as the increasingly popular Internet of Things (IoT). One class of learning tasks that is missing from the current body of work on HDC is graph classification. Graphs are among the most important forms of information representation, yet, to this day, HDC algorithms have not been applied to the graph learning problem in a general sense. Moreover, graph learning in IoT and sensor networks, with limited compute capabilities, introduce challenges to the overall design methodology. In this paper, we present GraphHD$-$a baseline approach for graph classification with HDC. We evaluate GraphHD on real-world graph classification problems. Our results show that when compared to the state-of-the-art Graph Neural Networks (GNNs) the proposed model achieves comparable accuracy, while training and inference times are on average 14.6$\times$ and 2.0$\times$ faster, respectively.