A Python library for hubness reduced nearest neighbor search for the task of entity alignment with knowledge graph embeddings. The term kiez is a german word that refers to a city neighborhood.
Hubness is a phenomenon that arises in high-dimensional data and describes the fact that a couple of entities are nearest neighbors (NN) of many other entities, while a lot of entities are NN to no one. For entity alignment with knowledge graph embeddings we rely on NN search. Hubness therefore is detrimental to our matching results. This library is intended to make hubness reduction techniques available to data integration projects that rely on (knowledge graph) embeddings in their alignment process. Furthermore kiez incorporates several approximate nearest neighbor (ANN) libraries, to pair the speed advantage of approximate neighbor search with increased accuracy of hubness reduction.
You can install kiez via pip:
pip install kiez
If you have a GPU you can make kiez faster by installing faiss (if you do not already have it in your environment):
conda env create -n kiez-faiss python=3.10
conda activate kiez-faiss
conda install -c pytorch -c nvidia faiss-gpu=1.7.4 mkl=2021 blas=1.0=mkl
pip install kiez
For more information see their installation instructions.
You can also get other specific libraries with e.g.:
pip install kiez[nmslib]
Simple nearest neighbor search for source entities in target space:
from kiez import Kiez
import numpy as np
# create example data
rng = np.random.RandomState(0)
source = rng.rand(100,50)
target = rng.rand(100,50)
# fit and get neighbors
k_inst = Kiez()
k_inst.fit(source, target)
nn_dist, nn_ind = k_inst.kneighbors(5)
Using (A)NN libraries and hubness reduction methods:
from kiez import Kiez
import numpy as np
# create example data
rng = np.random.RandomState(0)
source = rng.rand(100,50)
target = rng.rand(100,50)
# prepare algorithm and hubness reduction
k_inst = Kiez(n_candidates=10, algorithm="Faiss", hubness="CSLS")
# fit and get neighbors
k_inst.fit(source, target)
nn_dist, nn_ind = k_inst.kneighbors(5)
Beginning with version 0.5.0 torch can be used, when using Faiss
as NN library:
from kiez import Kiez
import torch
source = torch.randn((100,10))
target = torch.randn((200,10))
k_inst = Kiez(algorithm="Faiss", hubness="CSLS")
k_inst.fit(source, target)
nn_dist, nn_ind = k_inst.kneighbors()
You can also utilize tensor on the GPU:
k_inst = Kiez(algorithm="Faiss", algorithm_kwargs={"use_gpu":True}, hubness="CSLS")
k_inst.fit(source.cuda(), target.cuda())
nn_dist, nn_ind = k_inst.kneighbors()
You can find more documentation on readthedocs
The results and configurations of our experiments can be found in a seperate benchmarking repository
If you find this work useful you can use the following citation:
@article{obraczka2022fast,
title={Fast Hubness-Reduced Nearest Neighbor Search for Entity Alignment in Knowledge Graphs},
author={Obraczka, Daniel and Rahm, Erhard},
journal={SN Computer Science},
volume={3},
number={6},
pages={1--19},
year={2022},
publisher={Springer},
url={https://link.springer.com/article/10.1007/s42979-022-01417-1},
doi={10.1007/s42979-022-01417-1},
}
PRs and enhancement ideas are always welcome. If you want to build kiez locally use:
git clone [email protected]:dobraczka/kiez.git
cd kiez
poetry install
To run the tests (given you are in the kiez folder):
poetry run pytest tests
Or install nox and run:
nox
which checks all the linting as well.
kiez
is licensed under the terms of the BSD-3-Clause license.
Several files were modified from scikit-hubness
,
distributed under the same license.
The respective files contain the following tag instead of the full license text.
SPDX-License-Identifier: BSD-3-Clause
This enables machine processing of license information based on the SPDX License Identifiers that are here available: https://spdx.org/licenses/