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Powerset Convolutional Neural Networks

机译:Powerset卷积神经网络

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摘要

We present a novel class of convolutional neural networks (CNNs) for set functions, i.e., data indexed with the powerset of a finite set. The convolutions are derived as linear, shift-equivariant functions for various notions of shifts on set functions. The framework is fundamentally different from graph convolutions based on the Laplacian, as it provides not one but several basic shifts, one for each element in the ground set. Prototypical experiments with several set function classification tasks on synthetic datasets and on datasets derived from real-world hypergraphs demonstrate the potential of our new powerset CNNs.
机译:我们为集合函数提供了一类小型卷积神经网络(CNNS),即,使用有限集的Powerset索引数据索引。 卷积派生为设置功能上的各种概念的线性,移位的函数。 该框架与基于Laplacian的图形卷积根本不同,因为它提供不是一个但是几个基本班次,一个用于地面集中的每个元素。 具有多个SETCHINED数据集的函数分类任务的原型实验和来自现实世界超图的数据集展示了我们新的Powerset CNNS的潜力。

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