NETWORKS
Graph Convolutional Networks with EigenPooling
Ma Y., Wang S., Aggarwal C. C. and Tang J. Graph convolutional networks with eigenpooling. KDD, 2019. 概 本文提出了一种新的框架, 在前向的过程中, 可以逐步将相似的 nodes 和他们的特征聚合在 ......
论文解读《Interpolated Adversarial Training: Achieving robust neural networks without sacrificing too much accuracy》
论文信息 论文标题:Interpolated Adversarial Training: Achieving robust neural networks without sacrificing too much accuracy论文作者:Alex LambVikas VermaKenji Kawa ......
Handling Information Loss of Graph Neural Networks for Session-based Recommendation
Chen T. and Wong R. C. Handling information loss of graph neural networks for session-based recommendation. KDD, 2020. 概 作者发现图用在 Session 推荐中存在: lossy ......
Series-Parallel Networks UVA - 10253
给定 n,求有多少树满足:任意非叶子节点的儿子不少于 2 , 叶子节点个数为 n ......
EXPLORING MODEL-BASED PLANNING WITH POLICY NETWORKS
**发表时间:**2020(ICLR 2020) **文章要点:**这篇文章说现在的planning方法都是在动作空间里randomly generated,这样很不高效(其实瞎扯了,很多不是随机的方法啊)。作者提出在model based RL里用policy网络来做online planning ......
Cluster-GCN An Efficient Algorithm for Training Deep Convolution Networks
Chiang W., Liu X., Si S., Li Y., Bengio S. and Hsieh C. Cluster-GCN: An efficient algorithm for training deep and large graph convolutional networks. ......
Cycle GAN:Unpaired Image-to-Image Translation using Cycle-Consistent Adversarial Networks
paper:https://arxiv.org/pdf/1703.10593.pdf [2017] code 参考: https://github.com/junyanz/pytorch-CycleGAN-and-pix2pix https://zhuanlan.zhihu.com/p/792211 ......
Spatiotemporal Remote Sensing Image Fusion Using Multiscale Two-Stream Convolutional Neural Networks
Spatiotemporal Remote Sensing Image Fusion Using Multiscale Two-Stream Convolutional Neural Networks abstract 地表反射率图像的渐变和突变是现有STF方法的主要挑战。(Gradual and ......
Invariant and Equivariant Graph Networks
Maron H., Ben-Hamu H., Shamir N. and Lipman Y. Invariant and equivariant graph networks. ICLR, 2019. 概 有些时候, 我们希望网络具有: 不变性 (Invariant): $$ f(PX) = f(X ......
Layer-Dependent Importance Sampling for Training Deep and Large Graph Convolutional Networks
Zou D., Hu Z., Wang Y., Jiang S., Sun Y. and Gu Q. Layer-dependent importance sampling for training deep and large graph convolutional networks. NIPS, ......
Multi-View Attribute Graph Convolution Networks for Clustering
论文阅读04-Multi-View Attribute Graph Convolution Networks for Clustering:MAGCN 论文信息 论文地址:Multi-View Attribute Graph Convolution Networks for Clustering | ......
FastGCN Fast Learning with Graph Convolutional Networks via Importance Sampling
Chen J., Ma T. and Xiao C. FastGCN: fast learning with graph convolutional networks via importance sampling. ICLR, 2018. 概 一般的 GCN 每层通常需要经过所有的结点的 prop ......
Deeper Insights into Graph Convolutional Networks for Semi-Supervised Learning
Li Q., Han Z. and Wu X. Deeper insights into graph convolutional networks for semi-supervised learning. AAAI, 2018. 概 本文分析了 GCN 的实际上就是一种 Smoothing, 但是 ......
Stochastic Training of Graph Convolutional Networks with Variance Reduction
Chen J., Zhu J. and Song L. Stochastic training of graph convolutional networks with variance reduction. ICML, 2018. 概 我们都知道, GCN 虽然形式简单, 但是对于结点个数非常多的 ......
Squeeze-and-Excitation Networks(SENet)
结构和代码如下(参考:b站视频:YOLOv5 v6.1添加SE,CA,CBAM,ECA注意力机制教学,即插即用): Global pooling:每个channel上面的所有点做平均,这样每个channel都输出一个数。所以左图中,HxWxC变成了1x1xC。(参考:关于global average ......
Do you know the bitwise sum sample demonstrated in "Neural Networks and Deep Learning" by autor Michael Nielsen?
Do you know the bitwise sum sample demonstrated in "Neural Networks and Deep Learning" by autor Michael Nielsen? Yes, I am familiar with the bitwise s ......
21An efficient message-authentication scheme based on edge computing for vehicular ad hoc networks
  Abstract 脉冲神经网络(SNN)在时空信息和事件驱动信号处理的生物可编程编码中很有前途,非 ......