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Main Authors: Papanikou, Vasiliki, Pitoura, Evaggelia
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.19372
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author Papanikou, Vasiliki
Pitoura, Evaggelia
author_facet Papanikou, Vasiliki
Pitoura, Evaggelia
contents Graph representation learning has achieved notable success in encoding graph-structured data into latent vector spaces, enabling a wide range of downstream tasks. However, these node representations remain opaque and difficult to interpret. Existing explainability methods primarily focus on supervised settings or on explaining individual representation dimensions, leaving a critical gap in explaining the overall structure of node representations. In this paper, we propose TACENR (Task-Agnostic Contrastive Explanations for Node Representations), a local explanation method that identifies not only attribute features but also proximity and structural ones that contribute the most in the representation space. TACENR builds on contrastive learning, through which we learn a similarity function in the representation space, revealing which are the features that play an important role in the representation of a node. While our focus is on task-agnostic explanations, TACENR can be applied to supervised scenarios as well. Experimental results demonstrate that proximity and structural features play a significant role in shaping node representations and that our supervised variant performs comparably to existing task-specific approaches in identifying the most impactful features.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19372
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TACENR: Task-Agnostic Contrastive Explanations for Node Representations
Papanikou, Vasiliki
Pitoura, Evaggelia
Machine Learning
Artificial Intelligence
Graph representation learning has achieved notable success in encoding graph-structured data into latent vector spaces, enabling a wide range of downstream tasks. However, these node representations remain opaque and difficult to interpret. Existing explainability methods primarily focus on supervised settings or on explaining individual representation dimensions, leaving a critical gap in explaining the overall structure of node representations. In this paper, we propose TACENR (Task-Agnostic Contrastive Explanations for Node Representations), a local explanation method that identifies not only attribute features but also proximity and structural ones that contribute the most in the representation space. TACENR builds on contrastive learning, through which we learn a similarity function in the representation space, revealing which are the features that play an important role in the representation of a node. While our focus is on task-agnostic explanations, TACENR can be applied to supervised scenarios as well. Experimental results demonstrate that proximity and structural features play a significant role in shaping node representations and that our supervised variant performs comparably to existing task-specific approaches in identifying the most impactful features.
title TACENR: Task-Agnostic Contrastive Explanations for Node Representations
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2604.19372