利用GARCH和ARCH模型预测加密货币波动

Amadeo Christopher, K. Deniswara, B. Handoko
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引用次数: 3

摘要

本研究旨在分析2018年1月1日至2021年4月1日期间比特币、以太坊、币安币、Dashcoin和莱特币五种加密货币产品波动阶段的计算,其中包括计算每种加密货币产品的波动率。研究方法是通过Investing.com的数据进行定量分析。然后,利用自回归条件异方差(ARCH)和广义自回归条件异方差(GARCH)模型对数据进行分析。本研究旨在了解ARCH和GARCH模型是否适用于现场的日常生活情况。结果表明,ARCH和GARCH模型的数据不适合日常数据。进一步的研究应该使用差异化的GARCH模型来计算加密货币产品,如GJR-GARCH或GARCH- midas。每年计算加密货币产品的波动性也更好。根据一些理论,加密货币产品的波动率更适合按年计算,而不是按日计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Cryptocurrency Volatility Using GARCH and ARCH Model
This research aims to analyze the calculation of volatility stage from five cryptocurrency products, which are Bitcoin, Ethereum, Binance Coin, Dashcoin, and Litecoin from 1st January 2018 to 1st April 2021 where it consists of calculation of each of the cryptocurrency products' volatility. The research method is a quantitative method by gaining data from Investing.com. Then, analyzing the data using Autoregressive Conditional Heteroscedasticity (ARCH) and Generalized Autoregressive Conditional Heteroscedasticity (GARCH) models. This research aims to know whether ARCH and GARCH models apply to daily life situations in the field. The result shows that the data from ARCH and GARCH models are not suitable on daily basis. Further research should calculate cryptocurrency products to use differentiated GARCH models, such as GJR-GARCH or GARCH-MIDAS. It is also better to calculate the volatility of cryptocurrency products annually. According to some thesis, the volatility cryptocurrency products are more suitable to calculate annually than daily.
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