Code for the paper "Query Embedding on Hyper-relational Knowledge Graphs"

Related tags

Deep LearningStarQE
Overview

Query Embedding on Hyper-Relational Knowledge Graphs

This repository contains the code used for the experiments in the paper

Query Embedding on Hyper-Relational Knowledge Graphs.
Dimitrios Alivanistos and Max Berrendorf and Michael Cochez and Mikhail Galkin

If you encounter any problems, or have suggestions on how to improve this code, open an issue.

Abstract: Multi-hop logical reasoning is an established problem in the field of representation learning on knowledge graphs (KGs). It subsumes both one-hop link prediction as well as other more complex types of logical queries. Existing algorithms operate only on classical, triple-based graphs, whereas modern KGs often employ a hyper-relational modeling paradigm. In this paradigm, typed edges may have several key-value pairs known as qualifiers that provide fine-grained context for facts. In queries, this context modifies the meaning of relations, and usually reduces the answer set. Hyper-relational queries are often observed in real-world KG applications, and existing approaches for approximate query answering cannot make use of qualifier pairs. In this work, we bridge this gap and extend the multi-hop reasoning problem to hyper-relational KGs allowing to tackle this new type of complex queries. Building upon recent advancements in Graph Neural Networks and query embedding techniques, we study how to embed and answer hyper-relational conjunctive queries. Besides that, we propose a method to answer such queries and demonstrate in our experiments that qualifiers improve query answering on a diverse set of query patterns.

Requirements

We developed our repository using Python 3.8.5. Other version may also work.

First, please ensure that you have properly installed

in your environment. Running experiments is possible on both CPU and GPU. On a GPU, the training should go noticeably faster. If you are using GPU, please make sure that the installed versions match your CUDA version.

We recommend the use of virtual environments, be it virtualenv or conda.

Now, clone the repository and install other dependencies using pip. After moving to the root of the repo (and with your virtual env activated) type:

pip install .

If you want to change code, we suggest to use the editable mode of the pip installation:

pip install -e .

To log results, we suggest using wandb. Instructions on installation and setting up can be found here: https://docs.wandb.ai/quickstart

Running test (optional)

You can run the tests by installing the test dependencies

pip install -e '.[test]'

and then executing them

pytest

Both from the root of the project.

It is normal that you see some skipped tests.

Running experiments

The easiest way to start experiments is via the command line interface. The command line also provides more information on the options available for each command. You can show the help it by typing

hqe --help

into a terminal within your active python environment. Some IDEs, e.g. PyCharm, require you to start from a file if you want to enable the debugger. To this end, we also provide a thin wrapper in executables, which you can start by

python executables/main.py

Downloading the data

To run experiments, we offer the preprocessed queries for download. It is also possible to run the preprocessing steps yourself, cf. the data preprocessing README, using the following command

hqe preprocess skip-and-download-binary

Training a model

There are many options are available for model training. For an overview of options, run

hqe train --help

Some examples:


Train with default settings, using 10000 reified 1hop queries with a qualifier and use 5000 reified triples from the validation set. Details on how to specify the amount of samples can be found in [src/mphrqe/data/loader.Sample](the Sample class). Note that the data loading is taking care of only using data from the correct data split.

hqe train \
    -tr /1hop/1qual:atmost10000:reify \
    -va /1hop/1qual:5000:reify

Train with the same data, but with custom parameters for the model. The example below uses target pooling to get the embedding of the query graph, uses a dropout of 0.5 in the layers, uses cosine similarity instead of the dot product to compute similarity when ranking answers to the query, and enables wandb for logging the metrics. Finally, the trained model is stored as a file training-example-model.pt which then be used in the evaluation.

hqe train \
    -tr /1hop/1qual:atmost10000:reify \
    -va /1hop/1qual:5000:reify \
    --graph-pooling TargetPooling \
    --dropout 0.5 \
    --similarity CosineSimilarity \
    --use-wandb --wandb-name "training-example" \
    --save \
    --model-path "training-example-model.pt"

By default, the model path is relative to the current working directory. Providing an absolute path to a different directory can change that.

Performing hyper parameter optimization

To find optimal parameters for a dataset, one can run a hyperparameter optimization. Under the hood this is using the optuna framework.

All options for the hyperparameter optimization can be seen with

hqe optimize --help

Some examples:


Run hyper-parameter optimization. This will result in a set of runs with different hyper-parameters from which the user can pick the best.

hqe optimize \
    -tr "/1hop/1qual-per-triple:*" \
    -tr "/2i/1qual-per-triple:atmost40000" \
    -tr "/2hop/1qual-per-triple:40000" \
    -tr "/3hop/1qual-per-triple:40000" \
    -tr "/3i/1qual-per-triple:40000" \
    -va "/1hop/1qual-per-triple:atmost3500" \
    -va "/2i/1qual-per-triple:atmost3500" \
    -va "/2hop/1qual-per-triple:atmost3500" \
    -va "/3hop/1qual-per-triple:atmost3500" \
    -va "/3i/1qual-per-triple:atmost3500" \
    --use-wandb \
    --wandb-name "hpo-query2box-style"

Evaluating model performance

To evaluate a model's performance on the test set, we provide an example below:

hqe evaluate \
    --test-data "/1hop/1qual:5000:reify" \
    --use-wandb \
    --wandb-name "test-example" \
    --model-path "training-example-model.pt"

Citation

If you find this work useful, please consider citing

@misc{alivanistos2021query,
      title={Query Embedding on Hyper-relational Knowledge Graphs}, 
      author={Dimitrios Alivanistos and Max Berrendorf and Michael Cochez and Mikhail Galkin},
      year={2021},
      eprint={2106.08166},
      archivePrefix={arXiv},
      primaryClass={cs.AI}
}
You might also like...
Code for the paper Learning the Predictability of the Future

Learning the Predictability of the Future Code from the paper Learning the Predictability of the Future. Website of the project in hyperfuture.cs.colu

PyTorch code for the paper: FeatMatch: Feature-Based Augmentation for Semi-Supervised Learning
PyTorch code for the paper: FeatMatch: Feature-Based Augmentation for Semi-Supervised Learning

FeatMatch: Feature-Based Augmentation for Semi-Supervised Learning This is the PyTorch implementation of our paper: FeatMatch: Feature-Based Augmentat

Code for the paper A Theoretical Analysis of the Repetition Problem in Text Generation
Code for the paper A Theoretical Analysis of the Repetition Problem in Text Generation

A Theoretical Analysis of the Repetition Problem in Text Generation This repository share the code for the paper "A Theoretical Analysis of the Repeti

Code for our ICASSP 2021 paper: SA-Net: Shuffle Attention for Deep Convolutional Neural Networks
Code for our ICASSP 2021 paper: SA-Net: Shuffle Attention for Deep Convolutional Neural Networks

SA-Net: Shuffle Attention for Deep Convolutional Neural Networks (paper) By Qing-Long Zhang and Yu-Bin Yang [State Key Laboratory for Novel Software T

Open source repository for the code accompanying the paper 'Non-Rigid Neural Radiance Fields Reconstruction and Novel View Synthesis of a Deforming Scene from Monocular Video'.
Open source repository for the code accompanying the paper 'Non-Rigid Neural Radiance Fields Reconstruction and Novel View Synthesis of a Deforming Scene from Monocular Video'.

Non-Rigid Neural Radiance Fields This is the official repository for the project "Non-Rigid Neural Radiance Fields: Reconstruction and Novel View Synt

Code for the Shortformer model, from the paper by Ofir Press, Noah A. Smith and Mike Lewis.

Shortformer This repository contains the code and the final checkpoint of the Shortformer model. This file explains how to run our experiments on the

PyTorch code for ICLR 2021 paper Unbiased Teacher for Semi-Supervised Object Detection
PyTorch code for ICLR 2021 paper Unbiased Teacher for Semi-Supervised Object Detection

Unbiased Teacher for Semi-Supervised Object Detection This is the PyTorch implementation of our paper: Unbiased Teacher for Semi-Supervised Object Detection

Official code for paper "Optimization for Oriented Object Detection via Representation Invariance Loss".

Optimization for Oriented Object Detection via Representation Invariance Loss By Qi Ming, Zhiqiang Zhou, Lingjuan Miao, Xue Yang, and Yunpeng Dong. Th

Code for our CVPR 2021 paper
Code for our CVPR 2021 paper "MetaCam+DSCE"

Joint Noise-Tolerant Learning and Meta Camera Shift Adaptation for Unsupervised Person Re-Identification (CVPR'21) Introduction Code for our CVPR 2021

Comments
  • bug in SPARQL for 1hop-2i/0qual

    bug in SPARQL for 1hop-2i/0qual

    It looks like the SPARQL is not executable. should line 37 in test/validation and line 22 in train: FILTER ((?s1 != ?o2_s0) || (?s1 = ?o2_s0 && str(?p0)< str(?1) )) be FILTER ((?s1 != ?o2_s0) || (?s1 = ?o2_s0 && str(?p0)< str(?p1) )) ?

    opened by Kelaproth 2
Releases(v1.0.0-iclr)
Owner
DimitrisAlivas
Researcher. Data scientist. Passionate about Tech & AI
DimitrisAlivas
An Approach to Explore Logistic Regression Models

User-centered Regression An Approach to Explore Logistic Regression Models This tool applies the potential of Attribute-RadViz in identifying correlat

0 Nov 12, 2021
Repositorio de los Laboratorios de Análisis Numérico / Análisis Numérico I de FAMAF, UNC.

Repositorio de los Laboratorios de Análisis Numérico / Análisis Numérico I de FAMAF, UNC. Para los Laboratorios de la materia, vamos a utilizar el len

Luis Biedma 18 Dec 12, 2022
TAPEX: Table Pre-training via Learning a Neural SQL Executor

TAPEX: Table Pre-training via Learning a Neural SQL Executor The official repository which contains the code and pre-trained models for our paper TAPE

Microsoft 157 Dec 28, 2022
Tensorflow port of a full NetVLAD network

netvlad_tf The main intention of this repo is deployment of a full NetVLAD network, which was originally implemented in Matlab, in Python. We provide

Robotics and Perception Group 225 Nov 08, 2022
Efficient Speech Processing Tookit for Automatic Speaker Recognition

Sugar Efficient Speech Processing Tookit for Automatic Speaker Recognition | HuggingFace | What's New EfficientTDNN: Efficient Architecture Search for

WangRui 14 Sep 14, 2022
Supplementary code for the experiments described in the 2021 ISMIR submission: Leveraging Hierarchical Structures for Few Shot Musical Instrument Recognition.

Music Trees Supplementary code for the experiments described in the 2021 ISMIR submission: Leveraging Hierarchical Structures for Few Shot Musical Ins

Hugo Flores García 32 Nov 22, 2022
YOLOX-CondInst - Implement CondInst which is a instances segmentation method on YOLOX

YOLOX CondInst -- YOLOX 实例分割 前言 本项目是自己学习实例分割时,复现的代码. 通过自己编程,让自己对实例分割有更进一步的了解。 若想

DDGRCF 16 Nov 18, 2022
HyperSeg: Patch-wise Hypernetwork for Real-time Semantic Segmentation Official PyTorch Implementation

: We present a novel, real-time, semantic segmentation network in which the encoder both encodes and generates the parameters (weights) of the decoder. Furthermore, to allow maximal adaptivity, the w

Yuval Nirkin 182 Dec 14, 2022
Transformer - Transformer in PyTorch

Transformer 完成进度 Embeddings and PositionalEncoding with example. MultiHeadAttent

Tianyang Li 1 Jan 06, 2022
Prevent `CUDA error: out of memory` in just 1 line of code.

🐨 Koila Koila solves CUDA error: out of memory error painlessly. Fix it with just one line of code, and forget it. 🚀 Features 🙅 Prevents CUDA error

RenChu Wang 1.7k Jan 02, 2023
A script helps the user to update Linux and Mac systems through the terminal

Description This script helps the user to update Linux and Mac systems through the terminal. All the user has to install some requirements and then ru

Roxcoder 2 Jan 23, 2022
MNE: Magnetoencephalography (MEG) and Electroencephalography (EEG) in Python

MNE-Python MNE-Python software is an open-source Python package for exploring, visualizing, and analyzing human neurophysiological data such as MEG, E

MNE tools for MEG and EEG data analysis 2.1k Dec 28, 2022
PyTorch implementation of neural style transfer algorithm

neural-style-pt This is a PyTorch implementation of the paper A Neural Algorithm of Artistic Style by Leon A. Gatys, Alexander S. Ecker, and Matthias

770 Jan 02, 2023
a pytorch implementation of auto-punctuation learned character by character

Learning Auto-Punctuation by Reading Engadget Articles Link to Other of my work 🌟 Deep Learning Notes: A collection of my notes going from basic mult

Ge Yang 137 Nov 09, 2022
Official Pytorch Code for the paper TransWeather

TransWeather Official Code for the paper TransWeather, Arxiv Tech Report 2021 Paper | Website About this repo: This repo hosts the implentation code,

Jeya Maria Jose 81 Dec 30, 2022
HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep Features in Adversarial Networks

HiFiGAN Denoiser This is a Unofficial Pytorch implementation of the paper HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep F

Rishikesh (ऋषिकेश) 134 Dec 27, 2022
Tree LSTM implementation in PyTorch

Tree-Structured Long Short-Term Memory Networks This is a PyTorch implementation of Tree-LSTM as described in the paper Improved Semantic Representati

Riddhiman Dasgupta 529 Dec 10, 2022
Lex Rosetta: Transfer of Predictive Models Across Languages, Jurisdictions, and Legal Domains

Lex Rosetta: Transfer of Predictive Models Across Languages, Jurisdictions, and Legal Domains This is an accompanying repository to the ICAIL 2021 pap

4 Dec 16, 2021
Hcpy - Interface with Home Connect appliances in Python

Interface with Home Connect appliances in Python This is a very, very beta inter

Trammell Hudson 116 Dec 27, 2022
SMPLpix: Neural Avatars from 3D Human Models

subject0_validation_poses.mp4 Left: SMPL-X human mesh registered with SMPLify-X, middle: SMPLpix render, right: ground truth video. SMPLpix: Neural Av

Sergey Prokudin 292 Dec 30, 2022