研究加密货币投资

IF 1.4 Q3 ECONOMICS
J. Liew, R. Li, T. Budavári, Avinash Sharma
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引用次数: 32

摘要

在这项工作中,我们研究了2015年至2018年初期间最大的100个加密货币回报系列。我们将分析集中在日收益上,并发现了几个有趣的程式化事实。首先,主成分分析揭示了一个复杂的收益生成过程。当我们检查最近一年的数据时,我们发现令人惊讶的是,不止一个主成分似乎可以解释收益率的横截面变化。其次,与对冲基金的回报类似,加密货币的回报也存在“尾部贝塔”(beta-in- tail)隐性风险。第三,我们发现用机器学习和人工智能算法预测加密货币的走势在每个加密货币的可预测能力变化的情况下是有吸引力的。第四,波动性较低的加密货币比波动性较大的加密货币更具可预测性。第五,有证据表明,不同信息集的有效性因机器学习算法而异,这表明,给定一组机器学习算法,可预测性可能要复杂得多。最后,短期可预测性非常微弱,这表明短期加密货币市场是半强势的,因此,日内交易加密货币可能非常具有挑战性。关键词:加密货币,区块链,机器学习,比特币,beta-in- tail,风险
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cryptocurrency Investing Examined
In this work we examine the largest 100 cryptocurrency return series ranging from 2015 to early 2018. We concentrate our analysis on daily returns and find several interesting stylized facts. First, principal components analysis reveals a complex return generating process. As we examine our data in the most recent year, we find that surprisingly more than one principal component appears to explain the cross-sectional variation in returns. Second, similar to hedge fund returns, cryptocurrency returns suffer from the “beta-in-the-tails” hidden risk. Third, we find that predicting cryptocurrency movements with machine learning and artificial intelligence algorithms is marginally attractive with variation in predictability power per cryptocurrency. Fourth, lower volatile cryptocurrencies are slightly more predictable than more volatile ones. Fifth, evidence exists that efficacy of distinct information sets varies across machine learning algorithms, showing that predictability may be much more complex given a set of machine learning algorithms. Finally, short-term predictability is very tenuous, which suggests that near-term cryptocurrency markets are semi-strong form efficient and therefore, day trading cryptocurrencies may be very challenging. Keywords: cryptocurrency, blockchain, machine learning, bitcoin, beta-in-the-tails, risks
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11
审稿时长
5 weeks
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