Excessive market occasions, as soon as perceived as statistical outliers, have grow to be a central concern for traders. The persistence of sharp drawdowns and volatility spikes demonstrates that the price of ignoring tail dangers just isn’t tolerable for long-term portfolio resilience. Whereas diversification can mitigate peculiar fluctuations, it typically fails when markets transfer in unison beneath stress. This makes specific safety towards extreme draw back occasions not simply fascinating however needed. Tail hedging addresses this want by offering a structured protection towards probably the most damaging eventualities, making certain that portfolios stay sturdy when conventional threat administration instruments fall brief. Utilizing VIXY ETF, we are going to current and check a variety of hedging methods designed to guard portfolios beneath stress. By making use of sturdy testing frameworks, we goal to guage how totally different implementations of VIXY ETF-based tail hedges carry out throughout a wide range of market environments, highlighting each their strengths and inherent trade-offs.
VIX, VXV & VIXY
In our evaluation, we are going to use the ProShares VIX Quick-Time period Futures ETF (VIXY) as the first hedging instrument, mixed with the SPDR S&P 500 ETF (SPY) because the core fairness publicity. This pairing permits us to discover how volatility-linked property can mitigate drawdowns in a conventional fairness portfolio. To information the allocation of VIXY inside the portfolio, we are going to incorporate alerts derived from the VIX and VXV indices. Whereas these indices can’t be traded straight, their informational worth makes them helpful modeling variables for figuring out when and to what extent volatility publicity must be utilized. Importantly, solely SPY and VIXY will type the investable portfolio, with VIX and VXV serving strictly as inputs to allocation fashions moderately than direct holdings.
The CBOE Volatility Index (VIX) is probably the most widely known measure of anticipated fairness market volatility. Derived from S&P 500 choices, the VIX displays the market’s consensus on near-term uncertainty and is also known as the “worry gauge.” Sharp will increase within the VIX sometimes coincide with market stress, making it a pure reference level for tail threat hedging. Nevertheless, as a non-tradable index, traders can’t straight purchase or promote the VIX itself, which limits its use to signaling moderately than execution.
The CBOE 3-Month Volatility Index (VXV) extends the idea of the VIX by measuring implied volatility over a three-month horizon. This longer tenor makes VXV much less delicate to short-lived spikes however extra reflective of sustained market uncertainty. Consequently, the connection between VIX and VXV is commonly used as a gauge of market stress regimes, with a rising VIX relative to VXV signaling elevated short-term worry. For tail hedging, VXV supplies beneficial context by anchoring short-term volatility inside a broader temporal framework.
The ProShares VIX Quick-Time period Futures ETF (VIXY) gives traders a liquid, tradable automobile to realize publicity to VIX futures. By holding a rolling place in front-month and second-month futures, VIXY seeks to trace short-term adjustments in anticipated volatility. Its responsiveness to market shocks makes it a sensible instrument for implementing tail hedging methods. Nonetheless, traders should account for structural challenges resembling roll prices in contango environments, which might erode worth over time. Regardless of these limitations, VIXY stays some of the accessible instruments for translating volatility expectations into actionable hedges. This asset was launched in 2011, so to have an extended information historical past, we reconstructed it earlier historical past since 2004 till 2011 utilizing VIX futures.
Benchmark technique
A easy but highly effective sign for timing VIXY publicity arises from the connection between the short-term VIX and the medium-term VXV. Underneath regular market situations, the VIX, which displays 30-day implied volatility, tends to be decrease than VXV, the 90-day measure. This displays the market’s expectation that instant uncertainty is normally smaller than medium-term uncertainty, a typical characteristic of secure markets.
When market stress emerges, the same old relationship can invert: the VIX rises above VXV, signaling that short-term worry exceeds medium-term expectations. For VIXY, which tracks short-term VIX futures, this inversion is especially significant. It identifies durations by which the ETF is prone to reply sharply to spikes in volatility, making it an environment friendly hedge exactly when fairness markets face the best threat. By utilizing this sign, traders can keep away from the prices of holding VIXY repeatedly and as an alternative activate publicity solely when it’s almost definitely to be efficient.
Following this technique, we are going to allocate as much as 20% of the portfolio dynamically to VIXY, with the rest, 80%, held in SPY. The VIXY allocation is conditional: it’s both totally invested in accordance with the sign or held in money when the sign doesn’t set off. Importantly, the allocation updates happen with a one-day lag. It’s because we depend on VIX and VXV values from the earlier market shut, and trades are executed on the shut of the next day. This timing ensures that the technique stays implementable in follow whereas precisely reflecting the knowledge offered by the volatility alerts.
Desk 1: Efficiency metrics of 100% SPY and 20% VIX-VXV sign for VIXY and 80% SPY technique.
PORTFOLIO
CAR p.a.
VOL p.a.
SHARPE
100% SPY
10.52%
18.71%
0.56
80% SPY, 20% VXV-VIX sign for VIXY
6.25%
16.29%
0.38
Whereas the VIXY-hedged portfolio demonstrates a discount in absolute threat, its decrease return and Sharpe ratio relative to the SPY benchmark counsel that, a minimum of over the interval thought of, the hedge comes at a price that’s not totally offset by improved risk-adjusted efficiency. This highlights a key problem in tail hedging: whereas safety towards excessive occasions is effective, it might probably cut back total effectivity if the sign is just too conservative or market situations don’t regularly set off vital drawdowns. As such, the benchmark itself doesn’t seem sufficiently efficient in capturing the potential advantages of the hedge, underscoring the necessity for cautious technique design and sturdy testing. Due to this fact, there’s a clear must discover improved approaches that stability draw back safety with total portfolio effectivity.
Earlier analysis
We’ve got already coated the query of selective hedging utilizing the triple leveraged ETFs by which we had been impressed by Carlo Zarattini, Antonio Mele, and Andrew Aziz beforehand printed article addressing this very subject, which supplies a wonderful place to begin for our evaluation. Of their work, they offered a number of tail hedging methods, masking a variety of approaches and implementation types. For the needs of this text, we are going to slim our focus particularly to long-only methods, analyzing how they carry out beneath totally different market situations. Past merely implementing these methods, our objective is to scrupulously check their robustness, assessing not solely their effectiveness in decreasing draw back threat but additionally their consistency and sensible viability over time. The article introduces two methods that type the idea of our dialogue.
All methods offered contain an idea of anticipated volatility threat premium. The anticipated volatility premium is calculated because the distinction between the implied volatility of VIX or VXV at time t and the realized volatility of the underlying asset, on this case the S&P 500, over the corresponding horizon T. In different phrases, it measures how a lot the market’s expectation of future volatility exceeds the precise noticed variability of the index.
The second indicator employed in each methods is the smoothing of VIX or VXV values. This strategy includes evaluating the present degree of the index to a transferring common calculated over the previous a number of days (in case of this text, it’s 90 calendar days). By doing so, the technique captures short-term deviations from latest traits, serving to to determine durations when volatility is unusually excessive or low relative to its latest historical past.
Article technique I (lengthy place half)
When eVRP ≤ 0 and VIX > VIX3M, allocate 20% of the portfolio to VIXY. In any other case keep in money.
This strategy integrates comparatively effectively with the benchmark, because it equally allocates 20% to a hedging technique.
Article technique II (lengthy place half)
When eVRP ≤ 0 and VIX > VIX3M, allocate VIX% of the portfolio to VIXY. In any other case keep in money.
This strategy represents what is usually known as “sizing,” which includes allocating a bigger portion of capital to the hedging asset as market uncertainty will increase. In follow, given the mounted allocation proportions mentioned earlier, which means in periods of exceptionally excessive uncertainty, it might be essential to make use of leverage on a short-term foundation to take care of the specified publicity. The prices related to such leverage are ignored on this evaluation, as these positions are sometimes very short-lived and rapidly adjusted as soon as market situations normalize.
Let’s get again to fundamentals
Within the earlier part, we launched two methods that would be the focus of our evaluation. To start, we are going to begin with the easier one: the model with out sizing. Right here, the hedge allocation is capped at 20% of the portfolio, however it’s activated solely when the situations of the sign are met, particularly when the anticipated volatility threat premium (eVRP) is lower than or equal to zero and the VIX exceeds its three-month transferring common (VIX3M). Exterior of those situations, the hedge stays in money. This framework represents a fixed-weight implementation of the technique and supplies a helpful baseline for evaluating its effectiveness earlier than transferring on to the extra complicated model with dynamic sizing.
Allow us to now look at whether or not this technique is really sturdy or whether or not its efficiency might merely be the results of likelihood. To handle this query, we will range the parameters that outline the alerts. Particularly, we are going to experiment with the window size used to calculate the usual deviation of the S&P 500, in addition to the smoothing window utilized to VIX. By testing the technique throughout totally different parameter settings, we will consider the consistency of its outcomes and decide whether or not its effectiveness holds up past a single calibration.
Desk 2: Sensitivity of annualized yields to eVRP and transferring common window size, MA home windows in buying and selling days are 2/3 of calendar days, execution shifted by 1 day, calculated between 01.04.2004 and 31.07.2025.
eVRP
10 D
20 D
30 D
40 D
60 D
80 D
90 D
100 D
120 D
5
0.70%
1.68%
1.81%
1.23%
0.90%
1.23%
1.02%
0.94%
0.70%
10
0.70%
1.68%
1.81%
1.23%
0.90%
1.23%
1.02%
0.94%
0.70%
20
0.11%
0.88%
1.09%
0.57%
0.56%
1.10%
0.93%
0.91%
0.75%
30
-0.94%
0.09%
0.22%
-0.47%
-0.32%
0.37%
0.36%
0.28%
-0.05%
40
-0.52%
0.16%
0.18%
-0.12%
0.18%
0.93%
0.97%
0.93%
0.66%
60
-1.18%
-0.47%
-0.59%
-0.65%
-0.57%
-0.10%
-0.11%
-0.30%
-0.61%
Desk 3: Sensitivity of annualized volatility to eVRP and transferring common window size, MA home windows in buying and selling days are 2/3 of calendar days, execution shifted by 1 day, calculated between 01.04.2004 and 31.07.2025.
eVRP
10 D
20 D
30 D
40 D
60 D
80 D
90 D
100 D
120 D
5
3.49%
4.30%
4.56%
4.81%
5.02%
5.16%
5.15%
5.18%
5.19%
10
3.49%
4.30%
4.56%
4.81%
5.02%
5.16%
5.15%
5.18%
5.19%
20
2.38%
2.71%
2.88%
3.27%
3.78%
4.00%
4.08%
4.18%
4.27%
30
2.03%
2.09%
2.12%
2.30%
2.88%
3.36%
3.51%
3.59%
3.66%
40
2.07%
1.59%
1.61%
1.54%
2.17%
2.80%
3.00%
3.10%
3.18%
60
2.77%
1.85%
1.61%
1.52%
1.30%
1.51%
1.79%
1.92%
2.19%
Desk 4: Sensitivity of Sharpe to eVRP and transferring common window size, MA home windows in buying and selling days are 2/3 of calendar days, execution shifted by 1 day, calculated between 01.04.2004 and 31.07.2025.
eVRP
10 D
20 D
30 D
40 D
60 D
80 D
90 D
100 D
120 D
5
0.20
0.39
0.40
0.26
0.18
0.24
0.20
0.18
0.14
10
0.20
0.39
0.40
0.26
0.18
0.24
0.20
0.18
0.14
20
0.05
0.32
0.38
0.17
0.15
0.28
0.23
0.22
0.18
30
-0.46
0.04
0.10
-0.20
-0.11
0.11
0.10
0.08
-0.02
40
-0.25
0.10
0.11
-0.08
0.08
0.33
0.32
0.30
0.21
60
-0.43
-0.25
-0.37
-0.43
-0.44
-0.06
-0.06
-0.15
-0.28
The leads to the earlier desk counsel that the 10-day transferring common window supplies a constant and sturdy estimate. Sharpe ratios, return and volatility values stay secure throughout totally different testing horizons, whereas avoiding the pronounced damaging outcomes that will emerge for longer home windows. Selecting a 10-day window subsequently represents a balanced compromise: it’s brief sufficient to seize related short-term market dynamics, however lengthy sufficient to filter out extra noise that will in any other case dominate at even shorter intervals. Within the following sections, we are going to subsequently focus solely on the 5 and 10-day window and look at its habits beneath various market situations and with respect to complementary efficiency measures.
It is very important word that all through our evaluation, the technique is carried out with a one-day execution lag. In follow, each the eVRP sign and the transferring common are evaluated with a delay of 1 buying and selling day. This displays the operational constraint that it’s not possible to open or shut positions instantaneously on the post-market stage as soon as the sign has been generated.
By making use of this lag persistently, we make sure that the outcomes mirror a sensible buying and selling framework moderately than an idealized setup that will be tough to duplicate in follow. Whereas this adjustment barely reduces the theoretical effectivity of the alerts, it supplies a extra sturdy and implementable measure of technique efficiency.
For completeness, we additionally evaluated all methods with out making use of the one-day execution lag. The outcomes point out that the strongest alerts had been captured equally effectively, no matter whether or not the lag was current. The principle variations had been restricted to marginal variations in total efficiency and threat measures.
This discovering reinforces the robustness of the alerts themselves: the selection between implementing or omitting the execution lag primarily impacts the sensible execution profile moderately than the underlying informational content material. In different phrases, the lag introduces solely a modest trade-off between theoretical effectivity and practical implementability, with out altering the basic conclusions in regards to the methods’ effectiveness.
Is our mannequin overfitted?
It’s price noting that our strategy is perhaps barely aggressive in what we contemplate a “sign.” We give attention to very particular indicators, and there’s a threat of overfitting if we attempt to extract an excessive amount of from market information. For instance, makes an attempt to clean the VIX curve might transcend affordable evaluation and verge on over-optimization.
So, if we simply keep away from this situation and focus solely on eVRP < 0, we will receive a brand new benchmark.

Equally, we will ask whether or not eVRP may be thought of utilizing VXV as a foundation. Allow us to discover this chance and create a brand new benchmark based mostly on it.

Desk 5: Efficiency metrics of benchmark and modified article methods.
PORTFOLIO
CAR p.a.
VOL p.a.
SHARPE
20% VIX-VXV sign for VIXY
-2.13%
6.43%
–
20% VIX 5D eVRP sign for VIXY
1.79%
5.86%
0.32
20% VIX 10D eVRP sign for VIXY
1.70%
5.71%
0.30
20% VXV 5D eVRP sign for VIXY
-1.80%
5.46%
–
20% VXV 10D eVRP sign for VIXY
-2.12%
5.29%
–
We are able to see that selecting the sign based mostly on 5-day or 10-day eVRP works effectively, however solely after we use VIX because the underlying measure—not VXV. On the identical time, it turns into clear that our benchmark performs moderately poorly, which additional highlights the significance of fastidiously defining the reference level. One other essential statement is that article methods carry out higher when it comes to returns, however when it comes to threat adjusted returns, modified methods have higher Sharpe ratio.
Sizing as the important thing to improved efficiency
Within the earlier part, our findings relating to the exclusion of smoothing within the VIX eVRP sign had been considerably inconclusive. We are going to nonetheless preserve methods based mostly on simply the VIX eVRP sign in consideration, as we didn’t mix them with SPY in 80/20 portfolio but. Nevertheless, the unique article we adopted proposed a further refinement: adjusting place sizing in proportion to the extent of VIX.
In these methods, we preserve the identical sign as earlier than, however the portfolio weight is not mounted. As a substitute, it’s decided by the present degree of the VIX. For instance, if the VIX is at 28, the allocation to VIXY within the portfolio at the moment could be 28%. Naturally, which means when mixed with, say, an 80% allocation to SPY, the portfolio weight can exceed 100%, requiring the usage of leverage. On this evaluation, we ignore the prices of leverage, as these positions are supposed to be short-term.


Desk 6: Efficiency metrics of modified article methods utilizing sizing.
PORTFOLIO
CAR p.a.
VOL p.a.
SHARPE
5D SD & 30D MA for VIX technique
6.55%
11.91%
0.55
5D SD & 90D MA for VIX technique
7.18%
12.85%
0.56
10D SD & 30D MA for VIX technique
6.55%
11.91%
0.30
10D SD & 90D MA for VIX technique
7.18%
12.85%
0.56
What we will observe is that the habits beneath each window selections, whether or not 5-day or 10-day, is actually an identical. As soon as once more, we will see that these methods are comparatively sturdy, so from this level onward we are going to work solely with the 10-day standard-deviation model.
The outcomes we obtained exhibit considerably improved traits in contrast not solely to the benchmark methods but additionally to the variants with out dynamic sizing and to people who excluded smoothing. In different phrases, incorporating VIX-based proportional sizing supplies a transparent enhancement in efficiency metrics, demonstrating each higher risk-adjusted returns and extra constant habits throughout totally different market situations. This means that adjusting place weights in accordance with VIX ranges captures significant tail-risk alerts that the easier approaches fail to take advantage of.
Time to combine
To date, now we have examined every technique in isolation, focusing solely on its standalone habits. We’ve got not but tried to implement them inside an precise portfolio context, the place SPY is already current, nor have we explored combining a number of methods concurrently. That is essential as a result of, though these methods are based mostly on the identical underlying sign, they typically interpret it in barely other ways. Consequently, merely taking a look at them individually might overstate their effectiveness, whereas combining them may result in diversification advantages or reveal overlapping exposures that cut back incremental worth. Investigating how these methods work together inside a portfolio setting is subsequently a needed step to evaluate their real-world applicability and robustness.
As a primary mixture, allow us to look at a composite technique based mostly on the 30-day and 90-day transferring averages of the VIX, and examine whether or not it achieves higher traits than every of the person methods on their very own.
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Desk 7: Efficiency metrics of modified article methods utilizing sizing and their composition.
PORTFOLIO
CAR p.a.
VOL p.a.
SHARPE
10D SD & 30D MA for VIX technique
6.55%
11.91%
0.30
10D SD & 90D MA for VIX technique
7.18%
12.85%
0.56
Composition of 30D and 90D technique
6.90%
12.14%
0.57
Once we mix the 30-day and 90-day VIX-based methods right into a single composite strategy, we observe a marginal enchancment in risk-adjusted efficiency in comparison with the person methods. Whereas every of the unique methods performs fairly effectively by itself, the composite barely enhances the Sharpe ratio, suggesting that mixing totally different horizons can modestly clean returns and mildly enhance effectivity with out drastically altering the general threat profile.
As the ultimate step of this evaluation, we have to deal with mixtures of those methods with SPY. By allocating 80% of the portfolio to SPY and the remaining portion to the methods described above, typically utilizing leverage, we receive the next outcomes.

* In benchmark technique, between 01.04.2004 and 03.12.2007, 20% of portfolio was in money.

Desk 8: Efficiency metrics of benchmark and modified article methods utilizing sizing and their composition and modified article methods not utilizing sizing or smoothing.
PORTFOLIO
CAR p.a.
VOL p.a.
SHARPE
100% SPY
10.52%
18.71%
0.56
80% SPY, 20% VXV-VIX sign technique (benchmark)
6.25%
16.29%
0.38
80% SPY + SIZING 30D MA & 10D SD (eVRP) technique
16.47%
15.76%
1.04
80% SPY + SIZING 90D MA & 10D SD (eVRP) technique
17.38%
15.44%
1.13
80% SPY + SIZING 30D/90D MA & 10D (eVRP) technique
16.96%
15.41%
1.10
80% SPY + 5D (eVRP) technique
11.00%
13.72%
0.80
80% SPY + 10D (eVRP) technique
10.91%
13.59%
0.8
80% SPY + SIZING 5D (eVRP) technique
18.39%
15.52%
1.19
80% SPY + SIZING 10D (eVRP) technique
18.17%
15.32%
1.19
When combining SPY with the methods derived above, we will clearly see that not all approaches add worth. The easy benchmark mixture with the VXV–VIX sign really dilutes efficiency relative to holding SPY alone, each when it comes to absolute and risk-adjusted returns.
Against this, methods that incorporate dynamic sizing ship rather more enticing outcomes. Whether or not sizing is predicated on the 30-day or 90-day transferring common, or a composite of the 2, the enhancements are evident. These approaches concurrently enhance returns and cut back threat in comparison with SPY by itself, leading to a considerable increase in effectivity.
Even the easier 5-day and 10-day eVRP variants present some profit, although their impression is much less pronounced. As soon as dynamic sizing is added to those shorter home windows, nonetheless, the efficiency turns into notably compelling, combining larger returns with improved stability.
Conclusion
Our evaluation reveals that tail-hedging methods based mostly on eVRP alerts can present significant enhancements when fastidiously designed and carried out. Whereas naive benchmarks or unsized variants typically fail to outperform a easy SPY allocation, introducing place sizing linked to VIX ranges persistently enhances each returns and risk-adjusted outcomes. Among the many variations thought of, dynamically sized methods, whether or not based mostly on brief or medium-term home windows, stand out as the simplest enhances to a core SPY portfolio.
An essential consequence of this evaluation is that the introduction of sizing allowed us to determine a number of comparatively environment friendly methods. What additionally turns into clear is that the hedge prompts solely not often inside the portfolio. But when it does, and when the situations are correctly outlined, the outcomes could be fairly compelling. This highlights the worth of getting a well-calibrated hedging mechanism in place: it doesn’t burden the portfolio throughout regular market situations, however it might probably meaningfully enhance outcomes when stress occasions happen.
Authors:
David Belobrad, Junior Quant Analyst, Quantpedia
Radovan Vojtko, Head of Analysis, Quantpedia
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