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    <title>Graph Neural Networks on Dario Arcos-Díaz, PhD</title>
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      <title>Graph Convolutional Networks for Fraud Detection of Bitcoin Transactions</title>
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      <description>Detecting fraudulent transactions is essential in keeping financial systems trustworthy. Here I illustrate an end-to-end approach of node classification by graph neural networks to identify suspicious transactions.</description>
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