OpenANE: the first Open source framework specialized in Attributed Network Embedding. The related paper was accepted by Neurocomputing. https://doi.org/10.1016/j.neucom.2020.05.080
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OpenANE: The first Open source framework specialized in Attributed Network Embedding (ANE)

We reproduce several ANE (Attributed Network Embedding) as well as PNE (Pure Network Embedding) methods in one unified framework, where they all share the same I/O and downstream tasks. We start this project based on the excellent project OpenNE that integrates several PNE methods under one unified framework.
OpenANE not only integrates those PNE methods that consider pure structural information, but also provides the state-of-the-art ANE methods that consider both structural and attribute information during embedding.

Authors: Chengbin HOU chengbin.hou10@foxmail.com & Zeyu DONG 2018

Motivation

In many real-world scenarios, a network often comes with node attributes such as paper metadata in a citation network, user profiles in a social network, and even node degrees in any pure networks. Unfortunately, PNE methods cannot make use of attribute information that may further improve the quality of node embeddings.
From engineering perspective, by offering more APIs to handle attribute information in graph.py and utils.py, OpenANE shall be very easy to use for embedding an attributed network. Except attributed networks, OpenANE can also deal with pure networks by calling PNE methods, OR by assigning node degrees (or all-ones) as node attributes and then calling ANE methods. Therefore, to some extent, ANE methods can be regarded as a generalization of PNE methods.

Methods

ABRW, SAGE-GCN, SAGE-Mean, ASNE, TADW, AANE, DeepWalk, Node2Vec, LINE, GraRep, AttrPure, AttrComb
Note: all NE methods in this framework are unsupervised, and so do NOT require any labels during embedding phase.

For more details of each method, please have a look at our paper https://arxiv.org/abs/1811.11728
And if you find ABRW or this framework is useful for your research, please consider citing it.

Usages

Requirements

pip install -r requirements.txt

Python 3.6.6 or above is required due to the new print(f' ') feature

To obtain node embeddings as well as evaluate the quality

python src/main.py --method abrw --emb-file emb/cora_abrw_emb --save-emb --task lp_and_nc

To have an intuitive feeling in node embeddings

python src/vis.py --emb-file emb/cora_abrw_emb --label-file data/cora/cora_label.txt

Testing (Cora)

Parameter Settings

In this testing, we use the default parameters

AANE_lamb AANE_maxiter AANE_rho ABRW_alpha ABRW_topk ASNE_lamb AttrComb_mode GraRep_kstep LINE_negative_ratio LINE_order Node2Vec_p Node2Vec_q TADW_lamb TADW_maxiter batch_size dim dropout epochs label_reserved learning_rate link_remove number_walks walk_length weight_decay window_size workers
0.05 10 5 0.8 30 1 concat 4 5 3 0.5 0.5 0.2 10 128 128 0.5 100 0.7 0.001 0.1 10 80 0.0001 10 24

Testing Results

method AUC Micro-F1 Macro-F1 Time
aane 0.8158 0.7263 0.6904 26.48
abrw 0.9290 0.8721 0.8603 48.94
asne 0.7842 0.6076 0.5649 69.67
attrcomb 0.9111 0.8444 0.8284 60.32
attrpure 0.7857 0.7349 0.7039 0.49
deepwalk 0.8499 0.8100 0.8021 75.15
grarep 0.8936 0.7669 0.7607 10.31
line 0.6945 0.5873 0.5645 259.02
node2vec 0.7938 0.7977 0.7858 29.42
sagegcn 0.8929 0.7780 0.7622 207.49
sagemean 0.8882 0.8057 0.7902 183.65
tadw 0.9005 0.8383 0.8255 10.73

2D Visualization task

Cora vis
Steps: Cora -> NE method -> node embeddings -> PCA -> 2D vis
The different colors indicate different ground truth labels.

Other Datasets

More well-prepared (attributed) network datasets are available at NetEmb-Datasets

Your Own Dataset

------ FILE for structural information (each row) ------
adjlist: node_id1 node_id2 node_id3
or edgelist: node_id1 node_id2 weight(optional)
------ FILE for attribute information (each row) ------
node_id1 attr1 attr2 ... attrM
------ FILE for label information (each row) ------
node_id1 label(s)

Parameter Tuning

For different dataset, one may need to search the optimal parameters instead of taking the default parameters. For the meaning and suggestion of each parameter, please see main.py.

Want to contribute

We highly welcome and appreciate your contributions on fixing bugs, reproducing new ANE methods, etc. And we hope this OpenANE framework would become influential on both academic research and industrial usage.

References

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