银行转账网络中的动态链接和流量预测

Shu Takahashi, Kento Yamamoto, Shumpei Kobayashi, Ryoma Kondo, Ryohei Hisano
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引用次数: 0

摘要

随着复杂网络的不断发展,预测未来时间点网络链接的存在和权重至关重要。传统方法,如向量自回归和因子模型,已被应用于小型、密集的网络,但对于大规模、稀疏和复杂的网络,在计算上变得不切实际。一些机器学习模型可用于动态链接预测,但很少有模型可同时预测链接的存在和权重。因此,我们引入了一种新型模型,通过将任务分为两个子任务来动态预测链接的存在和权重:预测汇款比率和预测汇款总量。我们使用结合了时间-拓扑邻域特征的自我关注机制来预测汇款比率,并使用单独的模型来预测汇款总量。我们通过将这些模型的输出相乘来实现最终预测。我们使用两个真实世界数据集验证了我们的方法:加密货币网络和银行转账网络。
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Dynamic Link and Flow Prediction in Bank Transfer Networks
The prediction of both the existence and weight of network links at future time points is essential as complex networks evolve over time. Traditional methods, such as vector autoregression and factor models, have been applied to small, dense networks, but become computationally impractical for large-scale, sparse, and complex networks. Some machine learning models address dynamic link prediction, but few address the simultaneous prediction of both link presence and weight. Therefore, we introduce a novel model that dynamically predicts link presence and weight by dividing the task into two sub-tasks: predicting remittance ratios and forecasting the total remittance volume. We use a self-attention mechanism that combines temporal-topological neighborhood features to predict remittance ratios and use a separate model to forecast the total remittance volume. We achieve the final prediction by multiplying the outputs of these models. We validated our approach using two real-world datasets: a cryptocurrency network and bank transfer network.
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