Assessing the Credit Risk of Crypto-Assets Using Daily Range Volatility Models

Author:

Fantazzini Dean12ORCID

Affiliation:

1. Moscow School of Economics, Moscow State University, Leninskie Gory, 1, Building 61, 119992 Moscow, Russia

2. Faculty of Economic Sciences, Higher School of Economics, 109028 Moscow, Russia

Abstract

In this paper, we analyzed a dataset of over 2000 crypto-assets to assess their credit risk by computing their probability of death using the daily range. Unlike conventional low-frequency volatility models that only utilize close-to-close prices, the daily range incorporates all the information provided in traditional daily datasets, including the open-high-low-close (OHLC) prices for each asset. We evaluated the accuracy of the probability of death estimated with the daily range against various forecasting models, including credit scoring models, machine learning models, and time-series-based models. Our study considered different definitions of “dead coins” and various forecasting horizons. Our results indicate that credit scoring models and machine learning methods incorporating lagged trading volumes and online searches were the best models for short-term horizons up to 30 days. Conversely, time-series models using the daily range were more appropriate for longer term forecasts, up to one year. Additionally, our analysis revealed that the models using the daily range signaled, far in advance, the weakened credit position of the crypto derivatives trading platform FTX, which filed for Chapter 11 bankruptcy protection in the United States on 11 November 2022.

Funder

Russian Science Foundation

Publisher

MDPI AG

Subject

Information Systems

Reference73 articles.

1. Nishant, N. (2022, December 01). Crypto firm FTX Trading’s Valuation Rises to 18 bln after 900 mln Investment. Available online: https://www.reuters.com/technology/crypto-firm-ftx-trading-raises-900-mln-18-bln-valuation-2021-07-20/.

2. Allison, I. (2022, December 01). Divisions in Sam Bankman-Fried’s Crypto Empire Blur on His Trading Titan Alameda’s Balance Sheet. Available online: https://www.coindesk.com/business/2022/11/02/divisions-in-sam-bankman-frieds-crypto-empire-blur-on-his-trading-titan-alamedas-balance-sheet/.

3. Wilson, T., and Berwick, A. (2022, December 01). Crypto Exchange FTX Saw Six bln in Withdrawals in 72 h. Available online: https://www.reuters.com/business/finance/crypto-exchange-ftx-saw-6-bln-withdrawals-72-hours-ceo-message-staff-2022-11-08/.

4. Hill, J. (2022, December 01). Bankman-Fried Resigns From FTX, Puts Empire in Bankruptcy. Available online: https://www.bloomberg.com/news/articles/2022-11-11/ftx-com-goes-bankrupt-in-stunning-reversal-for-crypto-exchange.

5. Guarino, M. (2022, December 01). FTX Crypto Collapse: Ex-CEO Sam Bankman-Fried Denies ’Improper Use’ of Customer Funds. Available online: https://www.goodmorningamerica.com/news/story/ftx-crypto-collapse-ceo-sam-bankman-fried-denies-94215046.

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