1. Introduction
Empirical studies find that risk management practices can increase firm value (
Bartram et al. (
2011);
Anton (
2018); and
Aretz et al. (
2007)). For example, when markets are imperfect, hedging can increase firm value by lowering agency costs, costly external financing, bankruptcy costs, and taxes (
Aretz et al. 2007).
Surveys concerning firms’ financial risk management practices typically show that about half of the respondents use derivatives for hedging and that futures are among the most commonly used commodity hedging instruments, e.g.,
Berkman et al. (
1997) and
Bodnar et al. (
1998).
Futures hedgers have to address two questions. Is the hedge expected to reduce their risk sufficiently? If so, then what should they use as their hedge ratio (the size of the short futures position relative to the long spot position)? For reasons discussed below, we focus mainly on the traditional and carry cost rate hedge ratio determination methods and their relative abilities to reduce risk.
The economically structure-less Traditional futures hedge ratio (h
T) is the most popular method for determining hedge ratios. It was derived by
Ederington (
1979), is discussed in mainstream finance texts (e.g.,
Hull (
2015)) and is the benchmark against which others are compared.
It is calculated ex post (in an OLS regression of ΔS on ∆F it is the coefficient of ∆F) and, typically, is implemented ex ante in the immediately subsequent period without adjustment as:
where Cov and Var are the covariance and variance, respectively, and ΔS and ∆F are the spot and futures price changes, respectively. h
T minimizes the variance of the inventory-carrying hedger’s profit, where profit = ΔS − h
T × ∆F. However, the ΔS term should be carry cost adjusted (
Ferguson and Leistikow (
1999)). For the rest of the paper, ΔS is defined as the carry cost adjusted spot price change.
Sercu and Wu (
2000) and
Leistikow et al. (
2019) noted problems associated with using h
T.
Leistikow et al. (
2019) derived the general (multi-asset class) ex ante futures carry cost rate hedge ratio h
c, while
Sercu and Wu (
2000) derived it in the context of currencies. Among other advantages relative to h
T, h
c lacks the long estimation period that increases the likelihood that the hedge ratio estimate will be distorted by c regime shifts (where it is estimated under one c regime and applied under another) and significant data collection/organization effort. h
c is calculated as:
where c is the (decimal form) annualized c to the futures contract’s maturity, T is years to the futures contract’s maturity at the initiation of the hedge, and ∆t is the hedge period length (in years).
Leistikow et al. (
2019) noted that h
c is biased and defined the Bias-Adjusted h
c (h
c-BA) as:
where: BAM is the Bias Adjustment Multiplier and it is defined as h
T/h
c.
The BAM’s numerator and denominator hedge ratios (HRs) should be derived from the same prior period, or the BAM should be the average ratio from several such non-overlapping prior periods. For example, suppose the 2000–2005 average hT was 0.95, while the average hc was 1, so that the 2000–2005 BAM was (0.95/1) = 0.95. If the current hc is 0.97, then the current hc-BA is 0.97 × 0.95 ≈ 0.92. While hT and hc change with c, the BAM does not because c underlies and drives similar changes to both hT and hc that leave the ratio insignificantly changed.
Given the simplicity of calculating hc and the fact that the BAM only needs to be estimated once, the data gathering and manipulation effort for hc-BA becomes increasingly relatively less onerous over time than that for hT since hT is recalculated with each new hedge.
Like
Sercu and Wu (
2000) for their “h
c”,
Leistikow et al. (
2019) showed that h
c and h
c-BA both generate hedge results superior to those generated by h
T. Economically structure-less historic data based HRs (i.e., h
T and its variants, e.g., conditional OLS, GARCH, error-correction, regime-switching, and Mean-Gini) have been extensively discussed, tested, and utilized in industry and academia in the past 40 years. They are discussed in
Alexander and Barbosa (
2007);
Sarno and Valente (
2000);
Alizadeh et al. (
2008),
Harris et al. (
2010),
Lien (
2009),
Lien and Shrestha (
2008),
Shaffer and Demaskey (
2005), and
Lee et al. (
2009) for example.
Like
Sercu and Wu (
2000) and
Leistikow et al. (
2019), h
T is used here as the sole hedging performance benchmark. This is justified empirically by the
Harris et al. (
2010),
Lien (
2009), and
Lien and Shrestha (
2008), findings that h
T performs as well as its conditional OLS, GARCH, and error correction HR variants, respectively. This may be justified theoretically in that h
T and its variants are similarly based on statistical analysis of past data, so their utility may diminish about equally when there are carry cost rate regime shifts between their HRs’ estimation and use.
Because h
c and h
c-BA are structurally radically different from the economically structure-less historic data based HRs and their testing has been very limited (to the assets and time periods studied in these two papers), further testing is warranted. Their testing is further limited in that in the
Sercu and Wu (
2000) testing of h
c’s relative hedging performance, the hedging instrument prices are nominal (i.e., manufactured via the spot price and the carry cost hypothesis) and the measured hedge profits are overlapping and ignore the spot asset carry cost. Also
Sercu and Wu (
2000) studies currency pairs (mainly to European currencies); it does not address commodities or equities, either theoretically or empirically, nor does it test the results for statistical significance.
This paper’s main innovation is to compare h
T and h
c results within and across carry cost rate (c) regimes. If the theory is correct, variation in c may explain the h
T variation noted in the literature, e.g.,
Kroner and Sultan (
1993) and
Alizadeh et al. (
2008). Likewise, if h
T varies over c regimes as predicted, the likelihood that the h
T will be based on data from a c regime that differs from the one in which it is to be used rises with the length of the data used in the estimation (This is problematic for the other HRs calculated based on statistical analysis of historic data as well.). Correspondingly, the relative value of the h
c approach rises and the issues of its bias and whether the BAM changes insignificantly over c regimes gain importance. Moreover, even if h
T varies over c regimes as predicted and the BAM used in the h
c-BA method changes insignificantly over c regimes, the ultimate issue, which needs to be tested and is tested here, is whether the h
c-BA method improves on the h
c and h
T approaches and whether it does so even if the BAM is calculated in its most disadvantageous circumstances (i.e., when it is estimated from a different c regime using very stale data). Finally, the tests of whether h
T inefficiently recovers its relation to c seeks to account for and add credence to our explanation for why h
T’s hedging performance is low.
To test the theory, by asset, we specify low and high c regime pairs in two ways. First, across time (for c denominated in US $s), where the low c regime is roughly the post 2008 recession period and the high c regime is roughly the pre 2008 recession period. Second, across currency denominations (for roughly the post 2008 recession period), where the low c regime is denominated in US $s and the high c regime is denominated in Indian Rupees.
The findings are consistent with the h
c theory. Within and across c regimes, h
c is biased and h
T is inefficient. Across c regimes, h
c’s BAM does not differ significantly. The hedging performance of h
c and its bias-adjusted variant (even though its BAM is about 10 years old and from a different c regime) are superior to that for h
T. Unlike previous studies, this study tests whether h
c-BA generates hedge results that are superior to those generated by h
c (and finds that it does). Like
Sercu and Wu (
2000), h
c’s hedging performance is superior to h
T’s. Unlike
Sercu and Wu (
2000), this paper also tests h
c for an equity index and a commodity and measures spot profits as carry cost adjusted.
5. Conclusions
This paper tests whether the traditional futures hedge ratio (h
T) and the carry cost rate futures hedge ratio (h
c) vary as predicted both within and across spot asset carry cost rate (c) regimes. By asset, it specifies low and high c regime pairs: (1) across time and (2) across currency denominations, ceteris paribus. The results are consistent with the
Sercu and Wu (
2000) and
Leistikow et al. (
2019) theories.
The economically structure-less hT is inefficient. First, its variance is greater than the variance of hc in both “high” and “low” c periods. Second, while the statistics-based hT does uncover its inverse relation with c, the strength of its correlation with c is much less statistically significant than that for hc. Similar results are likely for other economically structure-less hedge ratios such as conditional OLS, GARCH, error-correction, regime-switching, and Mean-Gini HRs that, relative to hc, have a greater reliance on statistical analysis of past data whose value is diminished by c regime changes.
Changing c may account for the h
T variability over time found in the literature, e.g.,
Kroner and Sultan (
1993) and
Alizadeh et al. (
2008). Variation in c should be considered in devising ex ante hedge ratios.
The drawback for hc is its biasedness. It is biased in both “high” and “low” c periods. However, it is not a substantial drawback, since the Bias Adjustment Multiplier, BAM (= hT/hc), used in the bias-adjusted version of hc, hc-BA, is not statistically significantly different in “low” and “high” c periods; intuitively since c is the fundamental determinant of both hT and hc, changes in c affect both, but not their ratio. Thus, the BAM can be calculated once and need not be recalculated across c regimes.
Finally, the out-of-sample HE is higher for both hc and hc-BA than it is for hT. The out-of-sample HE is also higher for hc-BA than it is for hc; thus, the one-time effort of calculating the BAM is likely worth the effort. In this study, the performance for hc-BA is particularly compelling because its BAM was calculated from a different c regime and much earlier time period. Specifically, the BAMs employed in the hc-BA were based on data that, on average, had been stale for between 9.1 and 13.6 years and had come from a higher c regime.
Collectively, the results are good news as relative to the hc and hc-BAs, while the hT approach is tedious, inefficient, has a greater likelihood that the estimate will be distorted by c regime shifts, and fails to indicate the HRs dependence on the futures’ time to maturity on the hedge lift date.