Node-level Graph Regression with Deep Gaussian Process Models

Overview

Node-level Graph Regression with Deep Gaussian Process Models

Prerequests

our implementation is mainly based on tensorflow 1.x and gpflow 1.x:

python 3.x (3.7 tested)
conda install tensorflow-gpu==1.15
pip install keras==2.3.1
pip install gpflow==1.5
pip install gpuinfo

Besides, some basic packages like numpy are also needed. It's maybe easy to wrap the codes for TF2.0 and GPflow2, but it's not tested yet.

Specification

Source code and experiment result are both provided. Unzip two archive files before using experiment notebooks.

Files

  • dgp_graph/: cores codes of the DGPG model.
    • impl_parallel.py: a fast node-level computation parallelized implementation, invoked by all experiments.
    • my_op.py: some custom tensorflow operations used in the implementation.
    • impl.py: a basic loop-based implementation, easy to understand but not practical, leaving just for calibration.
  • data/: datasets.
  • doubly_stochastic_dgp/: codes from repository DGP
  • compatible/: codes to make the DGP source codes compatible with gpflow1.5.
  • gpflow_monitor/: monitoring tool for gpflow models, from this repo.
  • GRN inference: code and data for the GRN inference experiment.
  • demo_city45.ipynb: jupyter notebooks for city45 dataset experiment.
  • experiments.zip: jupyter notebooks for other experiments.
  • results.zip: contains original jupyter notebooks results. (exported as HTML files for archive)
  • run_toy.sh: shell script to run additional experiment.
  • toy_main.py: code for additional experiment (Traditional ML methods and DGPG with linear kernel).
  • ER-0.1.ipynb: example script for analyzing time-varying graph structures.

Experiments

The experiments are based on python src files and demonstrated by jupyter notebooks. The source of an experiment is under directory src/experiments.zip and the corresponding result is exported as a static HTML file stored in the directory results.zip. They are organized by dataset names:

  1. Synthetic Datasets

For theoretical analysis.

  • demo_toy_run1.ipynb

  • demo_toy_run2.ipynb

  • demo_toy_run3.ipynb

  • demo_toy_run4.ipynb

  • demo_toy_run5.ipynb

For graph signal analysis on time-varying graphs.

  • ER-0.05.ipynb

  • ER-0.2.ipynb

  • RWP-0.1.ipynb

  • RWP-0.2.ipynb

  • RWP-0.3.ipynb

  1. Small Datasets
  • demo_city45.ipynb
  • demo_city45_linear.ipynb (linear kernel)
  • demo_city45_baseline.ipynb (traditional regression methods)
  • demo_etex.ipynb
  • demo_etex_linear.ipynb
  • demo_etex_baseline.ipynb
  • demo_fmri.ipynb
  • demo_fmri_linear.ipynb
  • demo_fmri_baseline.ipynb
  1. Large Datasets (traffic flow prediction)
  • LA
    • demo_la_15min.ipynb
    • demo_la_30min.ipynb
    • demo_la_60min.ipynb
  • BAY
    • demo_bay_15min.ipynb
    • demo_bay_30min.ipynb
    • demo_bay_60min.ipynb
Self-Supervised Monocular DepthEstimation with Internal Feature Fusion(arXiv), BMVC2021

DIFFNet This repo is for Self-Supervised Monocular DepthEstimation with Internal Feature Fusion(arXiv), BMVC2021 A new backbone for self-supervised de

Hang 94 Dec 25, 2022
A general framework for inferring CNNs efficiently. Reduce the inference latency of MobileNet-V3 by 1.3x on an iPhone XS Max without sacrificing accuracy.

GFNet-Pytorch (NeurIPS 2020) This repo contains the official code and pre-trained models for the glance and focus network (GFNet). Glance and Focus: a

Rainforest Wang 169 Oct 28, 2022
The code of Zero-shot learning for low-light image enhancement based on dual iteration

Zero-shot-dual-iter-LLE The code of Zero-shot learning for low-light image enhancement based on dual iteration. You can get the real night image tests

1 Mar 18, 2022
Answer a series of contextually-dependent questions like they may occur in natural human-to-human conversations.

SCAI-QReCC-21 [leaderboards] [registration] [forum] [contact] [SCAI] Answer a series of contextually-dependent questions like they may occur in natura

19 Sep 28, 2022
Alphabetical Letter Recognition

DecisionTrees-Image-Classification Alphabetical Letter Recognition In these demo we are using "Decision Trees" Our database is composed by Learning Im

Mohammed Firass 4 Nov 30, 2021
这是一个facenet-pytorch的库,可以用于训练自己的人脸识别模型。

Facenet:人脸识别模型在Pytorch当中的实现 目录 性能情况 Performance 所需环境 Environment 注意事项 Attention 文件下载 Download 预测步骤 How2predict 训练步骤 How2train 参考资料 Reference 性能情况 训练数据

Bubbliiiing 210 Jan 06, 2023
SpineAI Bilsky Grading With Python

SpineAI-Bilsky-Grading SpineAI Paper with Code 📫 Contact Address correspondence to J.T.P.D.H. (e-mail: james_hallinan AT nuhs.edu.sg) Disclaimer This

<a href=[email protected]"> 2 Dec 16, 2021
Fully convolutional deep neural network to remove transparent overlays from images

Fully convolutional deep neural network to remove transparent overlays from images

Marc Belmont 1.1k Jan 06, 2023
Official PyTorch implementation of Less is More: Pay Less Attention in Vision Transformers.

Less is More: Pay Less Attention in Vision Transformers Official PyTorch implementation of Less is More: Pay Less Attention in Vision Transformers. By

73 Jan 01, 2023
The official PyTorch implementation for the paper "sMGC: A Complex-Valued Graph Convolutional Network via Magnetic Laplacian for Directed Graphs".

Magnetic Graph Convolutional Networks About The official PyTorch implementation for the paper sMGC: A Complex-Valued Graph Convolutional Network via M

3 Feb 25, 2022
Single cell current best practices tutorial case study for the paper:Luecken and Theis, "Current best practices in single-cell RNA-seq analysis: a tutorial"

Scripts for "Current best-practices in single-cell RNA-seq: a tutorial" This repository is complementary to the publication: M.D. Luecken, F.J. Theis,

Theis Lab 968 Dec 28, 2022
Official Code Release for "TIP-Adapter: Training-free clIP-Adapter for Better Vision-Language Modeling"

Official Code Release for "TIP-Adapter: Training-free clIP-Adapter for Better Vision-Language Modeling" Pipeline of Tip-Adapter Tip-Adapter can provid

peng gao 187 Dec 28, 2022
The codes and models in 'Gaze Estimation using Transformer'.

GazeTR We provide the code of GazeTR-Hybrid in "Gaze Estimation using Transformer". We recommend you to use data processing codes provided in GazeHub.

65 Dec 27, 2022
Implements an infinite sum of poisson-weighted convolutions

An infinite sum of Poisson-weighted convolutions Kyle Cranmer, Aug 2018 If viewing on GitHub, this looks better with nbviewer: click here Consider a v

Kyle Cranmer 26 Dec 07, 2022
Conditional Generative Adversarial Networks (CGAN) for Mobility Data Fusion

This code implements the paper, Kim et al. (2021). Imputing Qualitative Attributes for Trip Chains Extracted from Smart Card Data Using a Conditional Generative Adversarial Network. Transportation Re

Eui-Jin Kim 2 Feb 03, 2022
This is project is the implementation of the DeepShift: Towards Multiplication-Less Neural Networks paper

DeepShift This is project is the implementation of the DeepShift: Towards Multiplication-Less Neural Networks paper, that aims to replace multiplicati

Mostafa Elhoushi 88 Dec 23, 2022
Raindrop strategy for Irregular time series

Graph-Guided Network For Irregularly Sampled Multivariate Time Series Overview This repository contains processed datasets and implementation code for

Zitnik Lab @ Harvard 74 Jan 03, 2023
This example implements the end-to-end MLOps process using Vertex AI platform and Smart Analytics technology capabilities

MLOps with Vertex AI This example implements the end-to-end MLOps process using Vertex AI platform and Smart Analytics technology capabilities. The ex

Google Cloud Platform 238 Dec 21, 2022
SMPL-X: A new joint 3D model of the human body, face and hands together

SMPL-X: A new joint 3D model of the human body, face and hands together [Paper Page] [Paper] [Supp. Mat.] Table of Contents License Description News I

Vassilis Choutas 1k Jan 09, 2023