数字资产智能价格警报系统-加密货币

Sronglong Chhem, A. Anjum, Bilal Arshad
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引用次数: 1

摘要

加密货币市场非常不稳定,一些代币的交易价格可能在几分钟内突然上涨或下跌。因此,交易者很难跟随所有的交易价格变动,除非他们手动监控它们。因此,我们提出了一个实时警报系统来监控这些交易价格,如果任何目标价格匹配或异常发生,就会向用户发送通知。我们采用流媒体平台作为系统的主干。在我们的测试环境中,它可以以平均19秒的低延迟率每秒处理数千条消息。使用长短期记忆(LSTM)模型作为异常检测器。我们比较了五种不同的数据归一化方法与LSTM模型对比特币价格数据集的影响。结果表明,十进制缩放对每日价格数据的预测错误率仅为8.4%的平均绝对百分比误差(MAPE),与其他观察方法相比,这是取得的最佳性能。然而,对于一分钟价格数据集,我们的模型产生更高的预测误差,使得区分价格运动的正常点和异常点变得不切实际。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Price Alert System for Digital Assets - Cryptocurrencies
Cryptocurrency market is very volatile, trading prices for some tokens can experience a sudden spike up or downturn in a matter of minutes. As a result, traders are facing difficulty following with all the trading price movements unless they are monitoring them manually. Hence, we propose a real-time alert system for monitoring those trading prices, sending notifications to users if any target prices match or an anomaly occurs. We adopt a streaming platform as the backbone of our system. It can handle thousands of messages per second with low latency rate at an average of 19 seconds on our testing environment. Long-Short-Term-Memory (LSTM) model is used as an anomaly detector. We compare the impact of five different data normalisation approaches with LSTM model on Bitcoin price dataset. The result shows that decimal scaling produces only Mean Absolute Percentage Error (MAPE) of 8.4 per cent prediction error rate on daily price data, which is the best performance achieved compared to other observed methods. However, with one-minute price dataset, our model produces higher prediction error making it impractical to distinguish between normal and anomaly points of price movement.
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