Code to accompany the paper "Finding Bipartite Components in Hypergraphs", which is published in NeurIPS'21.

Overview

Finding Bipartite Components in Hypergraphs

This repository contains code to accompany the paper "Finding Bipartite Components in Hypergraphs", published in NeurIPS 2021. It provides an implementation of the proposed algorithm based on the new hypergraph diffusion process, as well as the baseline algorithm based on the clique reduction.

Below, you can find instructions for running the code which will reproduce the results reported in the paper.

Feel free to contact me with any questions or comments at [email protected].

Set-up

The code was written to work with Python 3.6, although other versions of Python 3 should also work. We recommend that you run inside a virtual environment.

To install the dependencies of this project, run

pip install -r requirements.txt

Viewing the visualisation

In order to demonstrate our algorithm, you can view the visualisation of the 2-graph constructed at each step by running

python show_visualisation.py

This example was used to create Figure 1 in the paper.

Experiments

In this section, we give instructions for running the experiments reported in the paper.

Penn Treebank Preprocessing

We are unfortunately not able to share the data used for the Penn Treebank experiment, and so we give instructions here for how to preprocess this data for use with our code. You will need to have your own access to the Penn Treebank corpus.

Follow the instructions in this repository, passing the --task pos command line option to generate the files train.tsv, test.tsv, and dev.tsv. Copy these three files to the data/nlp/penn-treebank directory.

Running the real-world experiments

To run the experiments on real-world data, you should run

python run_experiment.py {experiment_name}

where {experiment_name} is one of 'ptb', 'dblp', 'imdb', or 'wikipedia' to run the Penn Treebank, DBLP, IMDB and Wikipedia experiments respectively.

Running the synthetic experiments

To run an experiment on a single synthetic hypergraph, run

python run_experiment_synthetic.py {n} {r} {p} {q}

where {n} is the number of vertices in the hypergraph, {r} is the rank of the hypergraph, {p} is the probability of an edge inside a cluster, and {q} is the probability of an edge between clusters. Be careful not to set p or q to be too large. See the main paper for more information about the random hypergraph model. This will construct the hypergraph if needed, and report the performance of the diffusion algorithm and the clique algorithm on the constructed hypergraph.

Results

The full results from our experiments on synthetic hypergraphs are provided in the data/sbm/results directory, along with a Mathematica notebook for viewing them, and plotting the figures shown in the paper.

Owner
Peter Macgregor
Computer Science PhD Student, University of Edinburgh.
Peter Macgregor
Official implementation for the paper "Attentive Prototypes for Source-free Unsupervised Domain Adaptive 3D Object Detection"

Attentive Prototypes for Source-free Unsupervised Domain Adaptive 3D Object Detection PyTorch code release of the paper "Attentive Prototypes for Sour

Deepti Hegde 23 Oct 17, 2022
Additional code for Stable-baselines3 to load and upload models from the Hub.

Hugging Face x Stable-baselines3 A library to load and upload Stable-baselines3 models from the Hub. Installation With pip Examples [Todo: add colab t

Hugging Face 34 Dec 10, 2022
deep_image_prior_extension

Code for "Is Deep Image Prior in Need of a Good Education?" Project page: https://jleuschn.github.io/docs.educated_deep_image_prior/. Supplementary Ma

riccardo barbano 7 Jan 09, 2022
Deep Illuminator is a data augmentation tool designed for image relighting. It can be used to easily and efficiently generate a wide range of illumination variants of a single image.

Deep Illuminator Deep Illuminator is a data augmentation tool designed for image relighting. It can be used to easily and efficiently generate a wide

George Chogovadze 52 Nov 29, 2022
Relative Human dataset, CVPR 2022

Relative Human (RH) contains multi-person in-the-wild RGB images with rich human annotations, including: Depth layers (DLs): relative depth relationsh

Yu Sun 112 Dec 02, 2022
MACE is a deep learning inference framework optimized for mobile heterogeneous computing platforms.

Documentation | FAQ | Release Notes | Roadmap | MACE Model Zoo | Demo | Join Us | 中文 Mobile AI Compute Engine (or MACE for short) is a deep learning i

Xiaomi 4.7k Dec 29, 2022
Python Single Object Tracking Evaluation

pysot-toolkit The purpose of this repo is to provide evaluation API of Current Single Object Tracking Dataset, including VOT2016 VOT2018 VOT2018-LT OT

348 Dec 22, 2022
Code for the paper "Functional Regularization for Reinforcement Learning via Learned Fourier Features"

Reinforcement Learning with Learned Fourier Features State-space Soft Actor-Critic Experiments Move to the state-SAC-LFF repository. cd state-SAC-LFF

Alex Li 10 Nov 11, 2022
Official Repsoitory for "Activate or Not: Learning Customized Activation." [CVPR 2021]

CVPR 2021 | Activate or Not: Learning Customized Activation. This repository contains the official Pytorch implementation of the paper Activate or Not

184 Dec 27, 2022
A DCGAN to generate anime faces using custom mined dataset

Anime-Face-GAN-Keras A DCGAN to generate anime faces using custom dataset in Keras. Dataset The dataset is created by crawling anime database websites

Pavitrakumar P 190 Jan 03, 2023
LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs

LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs This is the code for the LERP. Dataset The dataset used is MI

5 Jun 18, 2022
Gradient representations in ReLU networks as similarity functions

Gradient representations in ReLU networks as similarity functions by Dániel Rácz and Bálint Daróczy. This repo contains the python code related to our

1 Oct 08, 2021
Gray Zone Assessment

Gray Zone Assessment Get started Clone github repository git clone https://github.com/andreanne-lemay/gray_zone_assessment.git Build docker image dock

1 Jan 08, 2022
An Artificial Intelligence trying to drive a car by itself on a user created map

An Artificial Intelligence trying to drive a car by itself on a user created map

Akhil Sahukaru 17 Jan 13, 2022
Tooling for the Common Objects In 3D dataset.

CO3D: Common Objects In 3D This repository contains a set of tools for working with the Common Objects in 3D (CO3D) dataset. Download the dataset The

Facebook Research 724 Jan 06, 2023
This is a five-step framework for the development of intrusion detection systems (IDS) using machine learning (ML) considering model realization, and performance evaluation.

AB-TRAP: building invisibility shields to protect network devices The AB-TRAP framework is applicable to the development of Network Intrusion Detectio

Lab-C2DC - Laboratory of Command and Control and Cyber-security 17 Jan 04, 2023
Code for PhySG: Inverse Rendering with Spherical Gaussians for Physics-based Relighting and Material Editing

PhySG: Inverse Rendering with Spherical Gaussians for Physics-based Relighting and Material Editing CVPR 2021. Project page: https://kai-46.github.io/

Kai Zhang 141 Dec 14, 2022
On Evaluation Metrics for Graph Generative Models

On Evaluation Metrics for Graph Generative Models Authors: Rylee Thompson, Boris Knyazev, Elahe Ghalebi, Jungtaek Kim, Graham Taylor This is the offic

13 Jan 07, 2023
Code and data form the paper BERT Got a Date: Introducing Transformers to Temporal Tagging

BERT Got a Date: Introducing Transformers to Temporal Tagging Satya Almasian*, Dennis Aumiller*, and Michael Gertz Heidelberg University Contact us vi

54 Dec 04, 2022
The fastest way to visualize GradCAM with your Keras models.

VizGradCAM VizGradCam is the fastest way to visualize GradCAM in Keras models. GradCAM helps with providing visual explainability of trained models an

58 Nov 19, 2022