With the development of blockchain technology, the cryptocurrency based on blockchain technology is becoming more and more popular. This gave birth to a huge cryptocurrency transaction network has received widespread attention. Link prediction learning structure of network is helpful to understand the mechanism of network, so it is also widely studied in cryptocurrency network. However, the dynamics of cryptocurrency transaction networks have been neglected in the past researches. We use graph regularized method to link past transaction records with future transactions. Based on this, we propose a single latent factor-dependent, non-negative, multiplicative and graph regularized-incorporated update (SLF-NMGRU) algorithm and further propose graph regularized nonnegative latent factor analysis (GrNLFA) model. Finally, experiments on a real cryptocurrency transaction network show that the proposed method improves both the accuracy and the computational efficiency
翻译:随着链式技术的发展,基于链式技术的加密货币正在变得越来越流行。这导致了一个庞大的加密货币交易网络,引起了广泛的关注。连接网络的预测学习结构有助于理解网络机制,因此也在加密货币网络中进行了广泛研究。然而,在过去的研究中,加密货币交易网络的动态已经被忽视。我们使用图表化的正规化方法将过去的交易记录与未来交易联系起来。在此基础上,我们提出一个单一的潜在要素依赖性、非否定性、多复制性和图形化的正规化公司化更新算法(SLF-NMGRU),并进一步提出图表化非负式潜在要素分析模型。最后,关于实际加密货币交易网络的实验表明,拟议的方法提高了准确性和计算效率。最后,对实际加密货币交易网络的实验表明,拟议的方法提高了准确性和计算效率。