Forecasting of Bitcoin Illiquidity Using High-Dimensional and Textual Features

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers Pub Date : 2024-01-09 DOI:10.3390/computers13010020
Faraz Sasani, Mohammad Moghareh Dehkordi, Zahra Ebrahimi, Hakimeh Dustmohammadloo, Parisa Bouzari, P. Ebrahimi, E. Lencsés, M. Fekete-Farkas
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Abstract

Liquidity is the ease of converting an asset (physical/digital) into cash or another asset without loss and is shown by the relationship between the time scale and the price scale of an investment. This article examines the illiquidity of Bitcoin (BTC). Bitcoin hash rate information was collected at three different time intervals; parallel to these data, textual information related to these intervals was collected from Twitter for each day. Due to the regression nature of illiquidity prediction, approaches based on recurrent networks were suggested. Seven approaches: ANN, SVM, SANN, LSTM, Simple RNN, GRU, and IndRNN, were tested on these data. To evaluate these approaches, three evaluation methods were used: random split (paper), random split (run) and linear split (run). The research results indicate that the IndRNN approach provided better results.
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利用高维和文本特征预测比特币流动性不足
流动性是指将资产(实物/数字资产)转换为现金或其他资产而不会造成损失的难易程度,它体现在投资的时间尺度和价格尺度之间的关系上。本文研究了比特币(BTC)的非流动性。我们收集了三个不同时间间隔的比特币哈希率信息;与这些数据并行的是,我们从推特上收集了每天与这些时间间隔相关的文本信息。由于非流动性预测具有回归性,因此提出了基于递归网络的方法。共有七种方法:在这些数据上测试了 ANN、SVM、SANN、LSTM、Simple RNN、GRU 和 IndRNN 七种方法。为了评估这些方法,使用了三种评估方法:随机拆分(论文)、随机拆分(运行)和线性拆分(运行)。研究结果表明,IndRNN 方法提供了更好的结果。
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来源期刊
Computers
Computers COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.40
自引率
3.60%
发文量
153
审稿时长
11 weeks
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