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Main Author: Prakash, Aditya
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.02021
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author Prakash, Aditya
author_facet Prakash, Aditya
contents Graph classification plays a pivotal role in various domains, including pathology, where images can be represented as graphs. In this domain, images can be represented as graphs, where nodes might represent individual nuclei, and edges capture the spatial or functional relationships between them. Often, the overall label of the graph, such as a cancer type or disease state, is determined by patterns within smaller, localized regions of the image. This work introduces a weakly-supervised graph classification framework leveraging two subgraph extraction techniques: (1) Sliding-window approach (2) BFS-based approach. Subgraphs are processed using a Graph Attention Network (GAT), which employs attention mechanisms to identify the most informative subgraphs for classification. Weak supervision is achieved by propagating graph-level labels to subgraphs, eliminating the need for detailed subgraph annotations.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02021
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Weakly Supervised Learning on Large Graphs
Prakash, Aditya
Machine Learning
Artificial Intelligence
Graph classification plays a pivotal role in various domains, including pathology, where images can be represented as graphs. In this domain, images can be represented as graphs, where nodes might represent individual nuclei, and edges capture the spatial or functional relationships between them. Often, the overall label of the graph, such as a cancer type or disease state, is determined by patterns within smaller, localized regions of the image. This work introduces a weakly-supervised graph classification framework leveraging two subgraph extraction techniques: (1) Sliding-window approach (2) BFS-based approach. Subgraphs are processed using a Graph Attention Network (GAT), which employs attention mechanisms to identify the most informative subgraphs for classification. Weak supervision is achieved by propagating graph-level labels to subgraphs, eliminating the need for detailed subgraph annotations.
title Weakly Supervised Learning on Large Graphs
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.02021