Graph Memory Learning: Imitating Lifelong Remembering and Forgetting of Brain Networks
July 27, 2024 ยท Declared Dead ยท ๐ IEEE Transactions on Pattern Analysis and Machine Intelligence
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Authors
Jiaxing Miao, Liang Hu, Qi Zhang, Longbing Cao
arXiv ID
2407.19183
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.NE
Citations
4
Venue
IEEE Transactions on Pattern Analysis and Machine Intelligence
Last Checked
4 months ago
Abstract
Graph data in real-world scenarios undergo rapid and frequent changes, making it challenging for existing graph models to effectively handle the continuous influx of new data and accommodate data withdrawal requests. The approach to frequently retraining graph models is resource intensive and impractical. To address this pressing challenge, this paper introduces a new concept of graph memory learning. Its core idea is to enable a graph model to selectively remember new knowledge but forget old knowledge. Building on this approach, the paper presents a novel graph memory learning framework - Brain-inspired Graph Memory Learning (BGML), inspired by brain network dynamics and function-structure coupling strategies. BGML incorporates a multi-granular hierarchical progressive learning mechanism rooted in feature graph grain learning to mitigate potential conflict between memorization and forgetting in graph memory learning. This mechanism allows for a comprehensive and multi-level perception of local details within evolving graphs. In addition, to tackle the issue of unreliable structures in newly added incremental information, the paper introduces an information self-assessment ownership mechanism. This mechanism not only facilitates the propagation of incremental information within the model but also effectively preserves the integrity of past experiences. We design five types of graph memory learning tasks: regular, memory, unlearning, data-incremental, and class-incremental to evaluate BGML. Its excellent performance is confirmed through extensive experiments on multiple real-world node classification datasets.
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