1. Introduction
In digital finance, the econometric study of cryptocurrency price series is experiencing an unprecedented boom.
Liu and Tsyvinski (
2021) document a significant time-series momentum phenomenon in the cryptocurrency market and show that high investor attention predicts high future returns over the one- to six-week horizons. Bitcoin, in particular, has been the subject of much questioning. Following the methodology by
Hasbrouck (
1995),
Baur and Dimpfl (
2019) analyze the trading volume and trading hours of the globally distributed Bitcoin spot market, compared to that of the US-based CBOE/CME futures contracts introduced in December 2017.
Entrop et al. (
2019) find that medium-sized trades and news-based Bitcoin sentiment contain the most information regarding price discovery on spot and futures markets.
Alexander et al. (
2020) examine the price discovery and hedging effectiveness of the unregulated derivatives exchange BitMEX. Using minute-by-minute data, the authors demonstrate that BitMEX derivatives lead prices on major Bitcoin spot exchanges by looking primarily at inter-exchange spreads and relative trading volumes. The tumultuous evolution of its market value exemplifies a general trend in cryptocurrency: Bitcoin has the highest financial valuation. Its price has risen sharply in recent years, mainly due to quantitative easing measures adopted by major central banks to address the consequences of the COVID-19 crisis.
Mahdi and Al-Abdulla (
2022) study such impacts of pandemic news on cryptocurrency prices based on quantile-on-quantile regression analysis. The unpredictability and consequent volatility of cryptocurrencies is attracting more and more short-term investors. To address this problem,
Xie (
2019) proposes Bitcoin forecasting tools based on least squares model averaging. Nevertheless, central bank presidents continue to declare that cryptocurrencies are ‘worthless’ and that only a digital currency with the central bank as a guarantor would have a fundamental role in money creation.
1This paper seeks to exploit a multiplicative decomposition of the CAPM beta into hourly, daily, and weekly frequencies as a direct extension of previous works by
Cenesizoglu and Reeves (
2018) and
González et al. (
2018) with an original application to the two most liquid and largest cryptos by market capitalization (i.e., Bitcoin and Ethereum). The sample includes intraday data from 15 May 2018 until 17 January 2023. This period allows us to explore for the first time the effect of the FTX exchange crash.
2 We document that the microstructure noise for BTC/ETH is strongly autocorrelated up to 446 ticks. Visually, the decay occurs after four minutes, which makes our choice of a 60 min sampling frequency in our paper unlikely to be contaminated by the presence of microstructure noise for either BTC or ETH. In particular, the scientific interest of this article consists in tracking at the highest frequency available the ‘pure’ CAPM systematic risk of Bitcoin and Ethereum within the methodological framework of
Hansen et al. (
2014)’s realized betas. We identify the realized GARCH as a very attractive model for capturing volatility persistence better than the GARCH framework and delivering superior predictive ability (especially at a shorter horizon). As robustness checks, we further document the level of risk of Bitcoin and Ethereum should portfolio managers use cryptocurrencies as a diversification tool.
The literature on realized betas was first introduced by
Bollerslev and Zhang (
2003).
Andersen et al. (
2006) analyze the dynamics in realized betas, vis-à-vis the dynamics in the underlying realized market variance and individual equity covariances with the market. They highlight the potential for using high-frequency intraday data to capture the continuous evolution in realized betas.
Barndorff-Nielsen and Shephard (
2004) provide a new asymptotic distribution theory for the realized beta. Further works, such as
Bandi and Russell (
2005) and
Patton and Verardo (
2012), confirm that extracting information from high-frequency data is very beneficial in time-varying conditional CAPM, compared to the relatively ‘weak’ volatility signal captured by closing returns.
Hollstein et al. (
2020) also document that high-frequency betas provide more accurate predictions of future betas than those based on daily data.
Hansen et al. (
2014) jointly modeled stock returns and realized measures of their volatility and coined this ‘realized GARCH’ (RGARCH). This multivariate volatility model incorporates both GARCH effects and realized measures of variances and covariances. Such a model enables us to consider the price and return information available at intra-day frequency. As individual returns are constructed conditionally based on past and contemporary market variables, extracting the realized betas between the market and the single asset in a dynamic version of the CAPM becomes possible. Indeed, with the realized market variance and realized covariance between the market and the individual stocks in hand, it becomes possible to define and empirically construct the individual equity ‘realized’ betas.
Alexeev et al. (
2016) explored the stability of systematic risk in portfolios of assets on the S&P 500 based on such a decomposition of time-varying betas using high-frequency data.
It is worth noting other attempts to utilize information from realized measures: the GARCH-X (
Engle 2002) to explain the variation in the realized measures, the multiplicative error model (MEM,
Engle and Gallo 2006) to account for additional latent volatility processes for each realized measure, the HEAVY model (
Shephard and Sheppard 2010) nested with multiple latent volatility processes, and the HYBRID model (
Chen et al. 2011) to capture intra-daily periodic patterns. Last but not least,
Brownlees and Gallo (
2010) estimate a restricted MEM model that is closely related to the realized GARCH with the linear specification.
Given the recent advances in collecting information on financial markets (e.g., the potentially heavy burden on the servers to store tick-by-tick data), the exploitation of granular information in high-frequency data constitutes the strongest signal available of latent volatility (
Andersen et al. 2003). As a consequence, the RGARCH model will be able to capture the dependency over the very short term, which should lead to improvements in the empirical fit (as measured by log-likelihood or information criteria) and also be relevant for forecasting. Applications of the realized GARCH include, to cite a few examples,
Watanabe (
2012)’s quantile forecasts of financial returns,
Tian and Hamori (
2015)’s modeling of interest rate volatility,
Contino and Gerlach (
2017)’s Bayesian tail-risk forecasting, and
Bonato (
2019)’s work on agricultural commodity markets. Another recent application can be found by
Doan et al. (
2022) for the DJIA and SPDR ETF.
According to
Almeida and Gonçalves (
2022)’s bibliometric study, cryptocurrencies do not exhibit adequate hedging ability for the stock market, given that the correlation between stock and cryptocurrency pairs turns out to be positive in most cases.
Charfeddine et al. (
2020) have also evaluated low levels of hedging effectiveness for Bitcoin and Ethereum. Regarding diversification properties, adding cryptocurrencies such as Bitcoin or Ethereum to an equity portfolio offers diversification benefits for investors compared to a solo equity portfolio (
Matkovskyy et al. 2021;
Mensi et al. 2020). To our knowledge, the diversification properties of Ethereum still need to be assessed in greater depth. During market turbulence, the safe-haven property from gold, Bitcoin, and Ethereum is also inconclusive (
Będowska-Sójka and Kliber 2021). All these considerations lead us to investigate the CAPM betas of Bitcoin and Ethereum with intraday data, which is supposed, in theory, to bring a better measurement of the financial transactions than daily data.
On financial markets, ‘risk’ refers only to the possibility of an unwelcome outcome and is traditionally coined as ‘downside risk’. In insurance, ‘pure risks’ are all downside (such as the burst of a financial crisis). However, their crucial characteristic is that they remain insurable, which means that investors can transfer the risk to a counterparty (at a cost). As the workhorse portfolio model, the CAPM hypothesizes that unsystematic risk has already been diversified and that the beta is the only remaining measure of systematic risk for a given asset. As an original contribution, this article aims at tracking the ‘pure’ systematic risk of Bitcoin and Ethereum thanks to the availability of high-frequency tick data and the measurement of so-called ‘realized’ betas. An optimal beta calibration appears to be crucial for asset managers to decide whether to hold or rebalance portfolios, and it can trigger several trading orders to unwind a position. In theory, higher-frequency information should yield more precise estimates (
Andersen 2000;
Bollerslev and Wright 2001). Shorter intervals can also prove more valuable than daily data, particularly when investors need to rebalance their portfolio in the wake of crypto-market crashes such as the recent FTX exchange fallout.
To preview the gist of our results, we report rolling betas inferior to one (on average, 0.80 for Bitcoin and 0.65 for Ethereum) with respect to the CRIX market index, which could help reduce the volatility within this investment universe. Three-dimensional plots reveal a higher dispersion of rolling betas at the weekly frequency. The statistical computation of tracking errors confirms that the two most accurate frequencies are typically found at the hourly and daily levels. Although estimation accuracy varies across assets and timescales, we highlight for Ethereum, in particular, that the availability of high-frequency data tends to produce, on average, a more reliable inference. To ascertain the pivotal role of hedging in risk management (i.e., in the hedge fund or investment bank), we also calculate hedging ratios as proposed by
Kroner and Sultan (
1993), which seem cheaper overall for Ethereum than for Bitcoin. Last but not least, we compute optimal portfolio holdings and hedging effectiveness.
When dealing with cryptocurrencies, there is indeed high volatility that typically worsens the asset manager’s performance. On average, a USD 1 long position in the CRIX can be hedged by going short USD 0.9 on BTC (USD 0.6 on ETH). Optimal weights of cryptocurrencies in the investor portfolio range from 60% to 120% for Bitcoin (−20% to 45% for ETH). Hedging effectiveness is measured by the variance decrease for any hedged portfolio (BTC or ETH) compared with the unhedged portfolio (CRIX). Such a hedging strategy suggests that the inclusion of BTC in the CRIX portfolio ensures, on average, 37% variance reduction. To minimize the risk while keeping the same expected returns, we find that the investor should hold more Bitcoin than Ethereum. Higher portfolio holdings towards Bitcoin and Ethereum is validated by Binance’s CEO’s latest decision to convert emergency funds into BTC, ETH, and BNB in the wake of the USDC’s de-peg, as well as Silvergate Capital’s, First Republic Bank’s, and Silicon Valley Bank’s collapse. Robustness checks include jump tests in high-frequency BTC/ETH data (up to 25%), as well as the subsequent estimation of jump-robust estimators of realized volatility for BTC and ETH. For jumps, as visible from the graphs, we showed similarities in all the jump-robust estimators. In particular, it is worth noticing that the lowest tracking errors are recorded for realized quadpower volatility (QPRV,
Andersen et al. 2012).
Regarding the potential interest in detecting co-jumps, it would have been ideal to have the intraday CRIX to compare with Bitcoin’s and Ethereum’s high-frequency data. However, as the S&P Royalton CRIX does not distribute intraday data for the market index, this task is impossible to implement. Therefore, the results only concern BTC and ETH, which are analyzed in parallel in the paper.
The remainder of the article is structured as follows.
Section 2 describes the data used and the models estimated.
Section 3 contains the main results.
Section 4 provides applications in the form of risk-hedging strategies.
Section 5 contains additional results.
Section 6 briefly concludes.
3. Results
Standard CAPM theory predicts that cryptocurrency returns (e.g., Bitcoin or Ethereum) must be related to the return on the market portfolio (e.g., the CRIX). Preliminary computational steps typically involve the correlation between the return on the market portfolio and the cryptocurrency returns, on the one hand, and the standard deviations of returns on Bitcoin, Ethereum, and the CRIX, on the other hand.
For the asset under consideration, the beta is simply the measure of the dependence of the cryptocurrency returns on the market’s overall return. It is referred to as systematic risk. In this section, we inspect whether the availability of high-frequency data improves our understanding of the systematic risk for Bitcoin and Ethereum, as postulated by the theory.
Notice that the non-systematic risk can be eliminated for investors through diversification. That is why we focus exclusively on the key risk of investing in Bitcoin and Ethereum, which is the portfolio’s systematic risk.
3.1. Rolling Betas at Hourly vs. Daily vs. Weekly Frequencies
The rolling window procedure is detailed in
Section 2.5. In
Figure 4, we display the corresponding BTC and ETH rolling betas.
On the left- (right-) hand side, the reader will find the rolling betas for Bitcoin (Ethereum). The hourly (also known as realized), daily, and weekly rolling betas are plotted from top to bottom.
What is striking at first is the similarity between the intraday (1 h) and daily (1-day) rolling betas in the first two rows. This visual impression will be confirmed later by the calculation of tracking errors. Only the weekly (5-day) rolling betas differ substantially from the two others in the last row. For investors, this already hints at lower informational content regarding the betas computed with a rolling window of five days.
Across assets, the plots are pretty much the same, although some fluctuations in rolling betas persist between Bitcoin and Ethereum, given their respective market fundamentals. Bitcoin’s market dominance (defined as the ratio of its market cap to the cumulative market cap of cryptocurrencies), which can be viewed live on Trading View
4, hit 43% at the time of writing. This reflects the potential of Bitcoin to serve as a decentralized means of exchange and store for value, in direct competition with modern central banks such as the Federal Reserve, the Bank of England, the European Central Bank, the Bank of Japan, or the People’s Bank of China. By contrast, Ethereum prides itself on anchoring a next-gen platform of decentralized contracts (e.g., as a pioneer ecosystem for a new breed of the net economy).
In portfolio analysis, the risk–reward trade-off is plotted as the expected return on a portfolio of risky assets against the risk itself, measured as the standard deviation of the portfolio return. When a risk-free asset is included in the portfolio mix (typically the 13-week U.S. Treasury bill), the market portfolio becomes a unique point on the efficient frontier of all the investments represented in the market, each held in proportion to their total market capitalization.
Regarding an investment in the market portfolio (recall that the CRIX periodically updates the number and constituents of cryptocurrency assets it contains), whenever
, the rolling betas displayed in
Figure 4 also allow us to uncover reasons to invest either in Bitcoin or Ethereum during specific periods.
Indeed, with reference to the CRIX market index, if Bitcoin or Ethereum exhibits a beta above (below) one, it indicates that its return moves more (less) than 1-to-1 with the return of the market portfolio, on average. Except during very brief periods for BTC around June 2019 for hourly/daily rolling betas or closer to the present time for weekly rolling betas (never for ETH), we obtain rolling betas < 1 for Bitcoin and Ethereum. In terms of actual values observed, the BTC rolling betas evolve around a mean of 0.80, whereas the ETH rolling betas evolve around 0.60. The BTC rolling betas are the lowest (below 0.70) from May 2020 to May 2021 for hourly and daily data (slightly before May 2020 for weekly data). The ETH rolling betas are also the lowest (below 0.50) during the same period.
This finding implies that holding these two major cryptos could help institutional investors tame the wild volatility and market fluctuations that impact the unregulated cryptocurrency marketplaces, either peer-to-peer or through lightly regulated exchanges in OECD countries (mostly unregulated in tax havens such as the Bahamas). Institutional investors may as well access derivative markets (futures, options) on the Chicago Mercantile Exchange
5, or Exchange Traded Funds (ETFs)
6, in order to achieve exposition to Bitcoin and Ethereum. This can be especially important against the background of the FTX exchange bankruptcy, where price crashes have been visible for most cryptos.
7With rolling betas inferior to one, holding Bitcoin or Ethereum could also enhance the diversification of a 60/40 allocation portfolio in stocks and bonds of the typical investor in U.S. or total world markets (although it also means it could be detrimental to the objective of maximizing returns; in that case, holding the CRIX itself or an ETF on the CRIX would be better suited).
3.2. 3D Graph of Realized vs. Daily vs. Weekly Betas
Having documented new features of the rolling betas for Bitcoin and Ethereum (e.g., their ability to dampen the CRIX fluctuations), we focus in this section on the impact of the frequency at which the data is observed when we compute them.
For this purpose, we visualize three-dimensional plots of hourly vs. daily vs. weekly portfolio betas in
Figure 5 and
Figure 6 for, respectively, BTC and ETH.
Vertically speaking, we witness a variance escalation between the dark red coloring when
(rarely) and the dark blue coloring where the lowest rolling betas are recorded. This phenomenon was documented in previous CAPM studies dedicated to classic financial assets (see, for instance,
Armitage and Brzeszczynski 2011).
Horizontally speaking, we observe a ‘plateau’ in the area of green coloring when the rolling betas enter their median values on each plot (respectively, 0.85 for BTC and 0.60 for ETH). This adds to our understanding of the two-dimensional graphs contained in
Figure 4.
Regarding the frequency of the data feed, the dispersion of rolling betas is higher for the weekly frequency and is concentrated towards values of > 0.8 for BTC ( > 0.65 for ETH). This result would argue against using weekly betas in terms of accurate measurement. Values of < 0.75 for BTC ( < 0.55 for ETH) also show some hourly and daily series dispersion. In order to provide a statistical indicator of which data frequency is most crucial to investors, we turn in the next section to the computation of tracking errors.
3.3. Tracking Errors
The periodic tracking error,
, is derived from the standard deviation of differences between the cryptocurrency returns (e.g., Bitcoin or Ethereum) and the benchmark (CRIX), as shown below:
where
N is equal to the total number of periods examined based on the number of observations of the rolling window specifications (in order to have the same metrics for the realized and conditional betas);
is the beta of Bitcoin or Ethereum;
is the return for the Bitcoin or the Ethereum; and
is the return on the CRIX.
As mentioned in
Agrrawal et al. (
2022), the predictive ability of the various calculated betas is gauged for their effectiveness in explaining subsequent hourly, daily, and weekly returns. Moreover, we use the tracking error of forward-looking return estimates to measure the explanatory power of the various beta coefficients.
There are three forward-looking time periods for which the tracking errors are calculated (1 hour, 1 day, and 1 week) with three specifications (rolling windows, realized volatility, and conditional volatility). At the same time, the last two are used for robustness purposes.
Table 5 depicts the tracking error for each cryptocurrency at the hourly, daily, and weekly frequencies. In the first row dedicated to rolling windows, we achieve the lowest tracking errors at the hourly and daily frequencies (which are nearly identical). The weekly frequency is thus revealed as being less precise to capture the pure systematic risk for Bitcoin and Ethereum. We infer the same information while inspecting the third row, dedicated to conditional volatility. Only the second row, dedicated to the realized volatility, seems to contradict this finding for Bitcoin (whereas it still holds for Ethereum), which leads us to further investigation in the next section. Jump-robust estimators appear below the naive RV and are commented upon in
Section 5.3.
3.4. Gauging the Precision of Realized Betas
In
Figure 7, the time-varying betas reproduced have been parameterized to lie between the 0.01 and the 0.99 percentiles. Between the theory and its empirical implementation, this plot allows us to document measurement errors in the realized betas. For Bitcoin, variability in the estimation bands is more visible at the hourly and daily frequencies (more so than at the weekly frequency). For Ethereum, the availability of high-frequency data tends to produce, on average, a more reliable inference (the deviations are more pronounced for weekly data than for hourly or daily sampling). Overall,
Figure 7 illustrates that 60 min ticks provide complementary information on the dynamics of the betas obtained at lower frequencies (e.g., daily or weekly).
4. Risk-Hedging Strategies
This section contains a sensitivity analysis of the results obtained in
Section 3 based on hedging ratios and optimal portfolio holdings.
4.1. Hedging Ratios
As proposed by
Kroner and Sultan (
1993), we implement hedging strategies and optimal portfolio decision rules. Such hedging ratios were implemented recently by
Bonato (
2019) and
Charfeddine et al. (
2020) in the context of, respectively, agricultural commodities and cryptocurencies.
In our paper, the focus is directed toward the interaction between the CRIX market index and the selected cryptocurrency returns. Consider a two-asset portfolio composed of the market index, on the one hand, and Bitcoin or Ethereum, on the other hand. In order to minimize the risk of a hedged portfolio, a long position (buying) 1$ of the market index j must be hedged by a short position (selling) of $ on the digital asset i.
Hedging ratios are derived from the bivariate full-BEKK covariance of
Engle and Kroner (
1995):
where
C,
A, and
B are
matrices;
C is upper triangular; and
is the
returns of a cryptocurrency (BTC or ETH) and the CRIX. Moreover
for all
. Then, we can compute:
as the ratio of the conditional covariance between the returns of a cryptocurrency and the CRIX,
, to the variance of BTC or the ETH returns,
, at time
t.
Hedging ratios (beta computed from a full-BEKK model) are pictured in
Figure 8. Overall, the optimal hedging ratios evolve between 0.4 and 1.7 for Bitcoin (0.2 and 1 for Ethereum). The beta BEKK oscillates quite a lot for both assets during April–May 2020, indicating a need to adjust the hedging parameters within the investment engine.
These findings can have important implications. Indeed, if low betas are observed, risk could be hedged by taking a relatively small short position in the corresponding cryptocurrency market.
For Ethereum in particular, the comparatively lower values of the optimal hedge ratio suggest that the investment risk on the market index can be hedged by taking relatively small short positions in the digital asset. On average, a USD 1 long position in the CRIX can be hedged by going short USD 0.6 on ETH. In the case of negative ratios (which seem to appear only once near April 2020), to hedge USD 1 invested in the CRIX, the investor needs to buy USD 0.2 on ETH.
On the contrary, higher betas would translate into higher hedging costs, which is the case for Bitcoin. On average, a USD 1 long position in the CRIX can be hedged by going short USD 0.9 on BTC. For both assets, the weekly calculation of hedging ratios displays less variability than at the hourly and daily frequencies, inducing less frequent rebalancing.
4.2. Optimal Portfolio Holdings
Next, we consider a portfolio that minimizes risk without lowering expected returns based on the framework by
Kroner and Ng (
1998). The typical investor wishes to protect his/her exposure to the CRIX market index by investing in either Bitcoin or Ethereum. This could be the case, for instance, when the S&P Royalton CRIX contains highly volatile crypto-assets such as Dogecoin (a ‘meme’ coin liked on social networks by the Tesla–Space X–Twitter CEO Elon Musk
8), or even worse when constituents of the CRIX find themselves at the heart of a financial panic storm such as Binance USD’s de-peg.
9 Without short-selling, the optimal weights of such a crypto-financial asset portfolio
can be computed as:
with
,
, and
, respectively, the conditional variance of the digital asset
i, the market index
j, and the conditional covariance between the digital asset and the market index. Assuming a mean-variance utility function, the optimal portfolio holdings of the digital asset
i are computed as:
Conversely, the optimal portfolio holding of the market index j is given by .
The evolution through time of the optimal weights for Bitcoin and Ethereum is given in
Figure 9. The typical optimal weights of cryptocurrencies in the investor portfolio range from 60% to 120% for BTC (−20% to 45% for ETH). It can therefore be optimal to overweigh the portfolio in Bitcoin, and underweigh it with respect to Ethereum. This risk management practice mimics the Bitcoin dominance already evoked in
Section 3.1.
Around April–May 2020, weights especially decrease for ETH (towards negative territories according to the hourly and daily frequencies). By contrast, Bitcoin’s holdings never reach negative territory. Perhaps this result can be seen as an illustration of the ‘store for value’ characteristic of Bitcoin (similar to a digital gold,
Baur and Hoang 2021); whereas Ethereum’s holdings fluctuate according to blockchain news such as ‘the merge’ and the proof-of-stake deployment
10.
The hourly and daily frequencies exhibit nearly identical patterns. Weekly optimal weights tend to average out the fluctuations between normal times and extreme price moves, yielding over time to a clearer picture of the investor’s strategic allocation in each crypto-asset with respect to his/her exposure to the underlying CRIX market index.
In what constitutes the most recent development of cryptocurrency markets at the time of writing, the stablecoin USDC lost its parity with the USD on 10 March 2023.
11 Several U.S. banks decided to shut down, including Silvergate Capital
12, First Republic Bank
13, and the Silicon Valley Bank
14. In turn, the Binance CEO Changpeng Zhao (aka, C.Z.) decided to comply with SEC pressure to stop emitting new Binance USD stablecoins, and to convert Binance’s USD 1 billion emergency fund into non-USD currencies such as Bitcoin, Ethereum, or BNB (which are all part of the CRIX).
15 This strategy entails higher portfolio holdings towards Bitcoin and Ethereum, as illustrated in this section.
4.3. Hedging Effectiveness
In order to assess the benefits of optimally hedging a position in the CRIX market index with either BTC or ETH, we follow
Kroner and Ng (
1998) by calculating next the hedging effective index (for an application to the British Pound and the Japanese Yen, see
Ku et al. (
2007)). The procedure is similar in spirit to hedging in the derivatives markets with Greek letters (such as the delta).
The hedging effectiveness (HE) captures the performance of the optimal hedging strategy by comparing the variance of the hedged portfolio to that of the unhedged portfolio. As a preliminary step, we need to compute the variance of the hedged portfolio with either BTC or ETH:
Then, we compute the following:
with
being the variance of the CRIX. The HE indicator ranges between 0 (no risk reduction) and 1 (perfect hedge). A high level of HE implies a larger risk reduction (or a greater hedging effectiveness), in terms of a portfolio’s variance reduction.
Figure 10 displays the hedging effectiveness of BTC and ETH. Most of the time, Bitcoin appears to be an appropriate hedging instrument, as the HE remains above 0.3. Besides, portfolios hedged through BTC seem to perform consistently higher than ETH. To the best of our knowledge, no previous contribution has documented the hedging performance of ETH.
Table 6 contains average values of hedging effectiveness indicators. In the case of BTC-CRIX (ETH-CRIX), the portfolio risk can be reduced with an HE ranging from 31% to 43% (from 3% to 5%). Therefore, the HE indicator clearly indicates the better hedging properties of BTC. This is possibly due to the store-of-value property of Bitcoin.
6. Conclusions
The primary driver for very short-term volatility in financial markets is the systematic (downside) risk, which we aim to track in this paper in its ‘pure’ form based on high-frequency data. Recent developments in financial econometrics feature a taste for intra-day high-frequency data, as providers’ availability and quality have been significantly modernizing in the industry (
Engle 2000). In this paper, we empirically consider whether the 60 min return frequency for calculating the CAPM’s realized betas for Bitcoin and Ethereum brings additional benefits to traders and investors compared to the traditional daily and weekly intervals. The sample includes intraday data from 15 May 2018 to 17 January 2023. To separate the microstructure noise from the underlying semimartingale efficient price, we establish that the optimal sampling frequency is equal to four minutes for BTC/ETH. We document rolling betas inferior to one (on average, 0.80 for Bitcoin and 0.65 for Ethereum) with respect to the CRIX market index, which can be crucial to diversification and risk management. By computing rolling betas inferior to one for both assets, we document that holding Bitcoin and Ethereum could help institutional investors tame the crypto sphere’s wild volatility. Rolling-window estimates indicate a preference towards computing betas based on hourly or daily frequencies instead of weekly interval betas (as generally witnessed in practice in the industry). Indeed, we compute the lowest tracking errors at the hourly and daily frequencies (which are nearly identical). Therefore, we concur with
Hollstein et al. (
2020) that high-frequency betas provide a greater estimation accuracy, as evidenced by our tracking error measurements. As robustness checks, we demonstrate the usefulness of computing realized betas for Bitcoin and Ethereum in applications to hedging ratios and optimal portfolio holdings. We estimate optimal hedging ratios evolve between 0.4 and 1.7 for Bitcoin (0.2 and 1 for Ethereum). In terms of hedging performance, BTC yields the best hedging performance with regard to the CRIX. We document that the inclusion of Bitcoin translates into an improvement of 31% to 43% variance reduction relative to the unhedged cryptocurrencies portfolio. The role of BTC as a powerful hedging instrument is, therefore, strongly supported by empirical evidence. Last but not least, we highlight that it could be optimal to overweight the portfolio in Bitcoin and underweight it with respect to Ethereum. This risk management practice is known as Bitcoin dominance. The investigation of the jump component in high-frequency BTC/ETH data (up to 25%) has been tackled as well, based on the implementation of statistical tests and the estimators of jump-robust estimators (where the realized quadpower volatility records the lowest tracking errors).
Avenues for future research include the implications of the latest demise in the U.S. banking sector with Silvergate Capital, First Republic Bank, and Silicon Valley Bank filing for bankruptcy, which threatens major stablecoins such as USDC and BUSD to de-peg and endangers the financing of the whole crypto-ecosystem (not limited to Bitcoin and Ethereum). Last but not least, the financial econometrics literature has moved to the issue of co-jumps. The issue for the econometrician is to detect two (or more) successive jumps that could trigger bubble-like variations in intraday asset prices. We could briefly suggest to future researchers to inspect this field based on the two following contributions. First, there is the promising methodology to calculate the threshold covariance (TCV) matrix proposed in
Mancini and Gobbi (
2012), where the authors resort to univariate jump detection rules to truncate the effect of jumps on the covariance estimate. Second, researchers could follow
Li et al. (
2019)’s rank jump test procedure, which tests for the rank of the jump matrix at simultaneous jump events in market returns as well as individual assets. Co-jumps detection needs, however, to be able to access high-frequency data only on both ends of the asset prices.