Enhancing bitcoin transaction confirmation prediction: a hybrid model combining neural networks and XGBoost

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Abstract

With Bitcoin being universally recognized as the most popular cryptocurrency, more Bitcoin transactions are expected to be populated to the Bitcoin blockchain system. As a result, many transactions can encounter different confirmation delays. Concerned about this, it becomes vital to help a user understand (if possible) how long it may take for a transaction to be confirmed in the Bitcoin blockchain. In this work, we address the issue of predicting confirmation time within a block interval rather than pinpointing a specific timestamp. After dividing the future into a set of block intervals (i.e., classes), the prediction of a transaction’s confirmation is treated as a classification problem. To solve it, we propose a framework, Hybrid Confirmation Time Estimation Network (Hybrid-CTEN), based on neural networks and XGBoost to predict transaction confirmation time in the Bitcoin blockchain system using three different sources of information: historical transactions in the blockchain, unconfirmed transactions in the mempool, as well as the estimated transaction itself. Finally, experiments on real-world blockchain data demonstrate that, other than XGBoost excelling in the binary classification case (to predict whether a transaction will be confirmed in the next generated block), our proposed framework Hybrid-CTEN outperforms state-of-the-art methods on precision, recall and f1-score on all the multiclass classification cases (4-class, 6-class and 8-class) to predict in which future block interval a transaction will be confirmed.

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增强比特币交易确认预测:结合神经网络和 XGBoost 的混合模型
摘要 随着比特币被公认为最受欢迎的加密货币,预计会有更多的比特币交易填充到比特币区块链系统中。因此,许多交易可能会遇到不同的确认延迟。有鉴于此,帮助用户了解交易在比特币区块链中得到确认可能需要多长时间(如果可能的话)变得至关重要。在这项工作中,我们要解决的问题是预测一个区块间隔内的确认时间,而不是确定一个具体的时间戳。在将未来划分为一组区块区间(即类)后,交易确认的预测被视为一个分类问题。为了解决这个问题,我们提出了一个基于神经网络和 XGBoost 的框架--混合确认时间估算网络(Hybrid-CTEN),利用三种不同的信息来源预测比特币区块链系统中的交易确认时间:区块链中的历史交易、内存池中未确认的交易以及估计的交易本身。最后,真实区块链数据的实验表明,除了 XGBoost 在二元分类(预测交易是否会在下一个生成的区块中得到确认)情况下表现出色外,我们提出的框架 Hybrid-CTEN 在所有多类分类情况(4 类、6 类和 8 类)下的精确度、召回率和 f1 分数都优于最先进的方法,可以预测交易将在未来哪个区块区间得到确认。
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