Rethinking Graph Autoencoder Models for Attributed Graph Clustering
- URL: http://arxiv.org/abs/2107.08562v1
- Date: Mon, 19 Jul 2021 00:00:35 GMT
- Title: Rethinking Graph Autoencoder Models for Attributed Graph Clustering
- Authors: Nairouz Mrabah, Mohamed Bouguessa, Mohamed Fawzi Touati, Riadh
Ksantini
- Abstract summary: Graph Auto-Encoders (GAEs) have been used to perform joint clustering and embedding learning.
We study the accumulative error, inflicted by learning with noisy clustering assignments, and reconstructing the adjacency matrix.
We propose a sampling operator $Xi$ that triggers a protection mechanism against the noisy clustering assignments.
- Score: 1.2158275183241178
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Most recent graph clustering methods have resorted to Graph Auto-Encoders
(GAEs) to perform joint clustering and embedding learning. However, two
critical issues have been overlooked. First, the accumulative error, inflicted
by learning with noisy clustering assignments, degrades the effectiveness and
robustness of the clustering model. This problem is called Feature Randomness.
Second, reconstructing the adjacency matrix sets the model to learn irrelevant
similarities for the clustering task. This problem is called Feature Drift.
Interestingly, the theoretical relation between the aforementioned problems has
not yet been investigated. We study these issues from two aspects: (1) the
existence of a trade-off between Feature Randomness and Feature Drift when
clustering and reconstruction are performed at the same level, and (2) the
problem of Feature Drift is more pronounced for GAE models, compared with
vanilla auto-encoder models, due to the graph convolutional operation and the
graph decoding design. Motivated by these findings, we reformulate the
GAE-based clustering methodology. Our solution is two-fold. First, we propose a
sampling operator $\Xi$ that triggers a protection mechanism against the noisy
clustering assignments. Second, we propose an operator $\Upsilon$ that triggers
a correction mechanism against Feature Drift by gradually transforming the
reconstructed graph into a clustering-oriented one. As principal advantages,
our solution grants a considerable improvement in clustering effectiveness and
robustness and can be easily tailored to existing GAE models.
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