Data depth and core-based trend detection on blockchain transaction networks

Jason Zhu, Arijit Khan, C. Akcora
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引用次数: 0

Abstract

Blockchains are significantly easing trade finance, with billions of dollars worth of assets being transacted daily. However, analyzing these networks remains challenging due to the sheer volume and complexity of the data. We introduce a method named InnerCore that detects market manipulators within blockchain-based networks and offers a sentiment indicator for these networks. This is achieved through data depth-based core decomposition and centered motif discovery, ensuring scalability. InnerCore is a computationally efficient, unsupervised approach suitable for analyzing large temporal graphs. We demonstrate its effectiveness by analyzing and detecting three recent real-world incidents from our datasets: the catastrophic collapse of LunaTerra, the Proof-of-Stake switch of Ethereum, and the temporary peg loss of USDC–while also verifying our results against external ground truth. Our experiments show that InnerCore can match the qualified analysis accurately without human involvement, automating blockchain analysis in a scalable manner, while being more effective and efficient than baselines and state-of-the-art attributed change detection approach in dynamic graphs.
区块链交易网络的数据深度和基于核心的趋势检测
区块链大大缓解了贸易融资问题,每天都有价值数十亿美元的资产进行交易。然而,由于数据量大且复杂,对这些网络进行分析仍具有挑战性。我们介绍了一种名为 InnerCore 的方法,它可以在基于区块链的网络中检测市场操纵者,并为这些网络提供情绪指标。这是通过基于数据深度的核心分解和中心图案发现实现的,确保了可扩展性。InnerCore 是一种计算高效的无监督方法,适用于分析大型时序图。我们通过分析和检测数据集中最近发生的三起真实事件来证明它的有效性:LunaTerra 的灾难性坍塌、以太坊的 "认购证明 "切换和 USDC 的临时挂钩损失,同时还根据外部基本事实验证了我们的结果。我们的实验表明,InnerCore 可以在无需人工参与的情况下准确匹配合格的分析结果,以可扩展的方式自动进行区块链分析,同时在动态图中比基线和最先进的归因变化检测方法更加有效和高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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