T H E
J O U R N A L
THEORY & PRACTICE FOR FUND MANAGERS
The Voices of Influence | iijournals.com
O F
FALL 2015 Volume 24 Number 3
. Option-Writing Strategies
in a Low-Volatility Framework
DonalD X. He, Jason C. Hsu, anD neil Rue
DonalD X. H e
is a portfolio risk analyst
for Allianz Global Investors in San Diego, CA.
donald.he@allianzgi.com
Jason C.
Hsu
is a faculty member
at UCLA Anderson
School of Management
and cofounder and vice
chairman of Research
Affiliates LLC in Newport
Beach, CA.
hsu@rallc.com
neil Rue
is managing director at
Pension Consulting Alliance in Portland, OR.
neilrue@pensionconsulting.com
O
ver the last decade, the investment community has witnessed
a rapid rise in the number of
assets invested in low-volatility
strategies.1 The low-volatility anomaly refers
to the empirical observation that portfolios
comprising low-beta stocks tend to substantially outperform their higher-beta counterparts. This is a paradoxical outcome from the
perspective of the capital asset pricing model
(CAPM). Given the increasing popularity
of low-volatility strategies, the anomaly is of
more than theoretical interest; it offers potentially intriguing investment opportunities.
Several behavioral finance hypotheses
have been proposed to explain the lowvolatility anomaly.
One of the most widely
cited explanations—investors’ preference for
lotterylike gambles—contends that individuals prefer to speculate in stocks with high
volatility, especially those with high positive
skewness. Another explanation argues that
borrowing-constrained investors may use
high-beta stocks to increase portfolio risk
and expected return. Both behaviors create
excess demand for high-beta stocks, which
drives their prices up and their returns down
relative to low-beta stocks.
Although studies of the low-volatility
anomaly have focused almost exclusively on
equities, industry practitioners have extended
their low-volatility offerings to include covered call option strategies.
Call options provide
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
highly leveraged exposure to the upside of the
underlying stocks with very modest commitment of capital. They not only have a lotterylike positive skew but can also be employed
by leverage-constrained investors as a tool
for increasing risk-adjusted portfolio returns.
These characteristics suggest that call options
may be systematically overpriced.2
Covered call writing, in which investors sell call options against their stock holdings as a means of enhancing portfolio return
and reducing risk,3 is a common investment
strategy that has been employed since the
establishment of the Chicago Board Options
Exchange (CBOE) in 1973. It is often referred
to as a buy–write strategy because investors
seek to outperform their benchmark indexes
by writing index call options against equity
shares that they have bought long.
The CBOE
introduced the Buy–Write Monthly Index
(BXM) in 2002 as a benchmark for evaluating buy–write investment strategies.4
Buy–write strategies tend to exhibit
risk–return profiles that are similar to those
of low-volatility equity portfolios. To date,
however, studies on low-volatility investing
have not included buy–write strategies. The
objective of our research is to determine
whether buy–write strategies have risk characteristics that are sufficiently different from
stock-only low-volatility strategies to provide diversification benefits to low-volatility
investors.
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.
This article seeks to contribute in three primary
areas. First, we compare different buy–write strategies
based on writing call options with varying maturities
and rebalancing frequencies. We find that selling threemonth-to-maturity index call options is significantly
more effective at capturing the buy–write outperformance than other maturities. Identifying the sources of
the performance differential advances our understanding
of buy–write strategies.
Second, we compare the risk and
return profiles of buy–write strategies with those of conventional low-volatility equity strategies. In particular,
we explore whether they share common factor exposures
and whether buy–write strategies offer new and attractive sources of premiums. We find that buy–write strategies, unlike low-volatility equity strategies, do not load
on the value, small-cap, and betting against beta (BAB)
factors; however, they do exhibit a market beta that is
significantly below one.
This suggests that the volatility
reduction for both categories of low-volatility strategies is driven by the reduction in market beta whereas
their performances are attributable to different factors,
and thus they serve to diversify each other. Finally, by
using buy–write strategies, we provide empirical support
for the preference-for-lottery and leverage-constraint
hypotheses. This is particularly interesting because,
while the buy–write outperformance is uncorrelated
with low-volatility equity outperformance, the underlying investor behaviors may be the same.
LITERATURE REVIEW
Covered Call Strategy
Practitioners and academics have discussed the
covered call strategy since the debut of the CBOE.
Merton et al.
[1978] used simulated call option prices
to construct hypothetical buy–write portfolios over the
period 1963–1975 to demonstrate that option writing
reduces both risk and return. However, the usefulness
of the study has been questioned: Some argue that the
results are biased given the divergence of simulated
option prices from actual prices; others have stated that
the study period chosen covers a long bull market, which
might not be representative of the average experience.
Grube et al. [1979] questioned the impact of the transaction cost on the result, and Trennepohl and Dukes
[1981] found that covered call writing lowered a portfolio’s standard deviation and improved returns over the
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period 1974–1977 and various subsamples.
Trennepohl
and Dukes [1981] also observed a reduction in positive
skewness of the covered call portfolio, suggesting that
the skewness of the distribution might play an appreciably more important part in option pricing than is
ref lected in standard models.
In the first part of our empirical study, we compare
buy–write strategies using index call options with different times to maturity and rebalancing frequencies.
The selection of the period 1996–2012 covers numerous
bull and bear markets, including spectacular bubbles
and crises. This longer sample should provide a more
representative and comprehensive dataset for empirical
analysis and interpretation. We also use bid–ask transaction costs in estimating the potential economic benefits
of the buy–write strategies.
Low-Volatility Anomaly
The recent literature has argued that the low-volatility premium is related to the investor’s preference
for positive skewness in asset returns.
Building on the
cumulative prospect theory set forth by Kahneman and
Tversky [1979], Barberis [2013] posits that a positively
skewed security—a security whose return distribution has a right tail that is longer than its left tail—will
be overpriced relative to the valuation it would command from a representative investor in the classic asset
pricing literature. Investors who use the stock market
for gambling or who are leverage-constrained can prefer
positively skewed assets.5 According to the preferencefor-gambling hypothesis, speculative investors can use
highly positively skewed stocks and call options, which
naturally have high positive skew, as lottery tickets.
Leverage-constrained investors can increase portfolio
risk and expected return by overallocating to high-beta
stocks (which have natural positive skew) and call options
(which have embedded economic leverage). Barberis
[2013] finds that out-of-the-money options, which have
positively skewed returns, tend to be overvalued and
thus deliver low returns relative to the standard option
pricing model expectations.
Conrad et al. [2013] also
find that stocks with negative ex ante skewness yield
higher returns.
If Barberis [2013] is right, the preference for positively skewed assets drives the performance advantage
of low-volatility equity strategies—which underweight
high-beta stocks—and of buy–write strategies, which
the JOurnaL OF inVeSting
. sell call options. Indeed, on the surface, the two strategies share similar long-horizon risk and return characteristics. Are they, therefore, similar to each other from
a factor exposure perspective? This is a key question we
address in the second part of our empirical analysis.
Chow et al. [2014] studied low-volatility portfolios constructed on the basis of minimum variance, low
volatility, and low beta.
They argued that all low-volatility equity portfolios have similar factor characteristics:
They overweight the value, BAB,6 and duration7 factors
to generate excess returns. This implies that investors
would not be able to create meaningful diversification
by combining different low-volatility equity portfolios.
Additionally, as pointed out by Chow et al. [2014] and
Kuo and Li [2013], most low-volatility methodologies
have several undesirable attributes in common: high
turnover in illiquid names and concentrated country/
industry allocations.
In the context of Chow et al.
[2014], it is interesting to ask whether buy–write strategies provide new
sources of premiums and risk exposure. We explore this
possibility in this article. However, in the final section
of our empirical analysis, we also examine whether the
active country/industry exposures of buy–write strategies create undesirable concentrations and result in unacceptable tracking error.
Data and Methodology
While there is a large variety of buy–write strategies, we examine only one simple version and its natural variants.
Specifically, we invest 100% long into the
S&P 500 Cash Index8 and then sell S&P 500 Index call
options. This is similar to the CBOE’s BXM index construction. Variants considered include different option
maturities and rebalancing cycles.
Data.
This study uses CBOE’s OptionMetrics
Database. The dataset consists of closing bids and offers
of all options and indexes quoted across all exchanges
for the period from January 1996 to December 2012.9
The length of the sample period allows assessment of
buy–write performance in different market conditions.
The options are European style, thus eliminating the
complexity of analyzing optimal early exercise. The
OptionMetrics data also provide us with computed delta,
theta, gamma, vega, and implied volatility statistics,
which we apply in the option attribution analysis.
The
returns on the S&P 500 are total returns. For purposes
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
of comparison, we obtained the equity time series of
other prevalent low-volatility strategies from Chow
et al. [2014].
We obtained Carhart four-factor time series
returns data from the Kenneth French Data Library,10
and for the additional factors of BAB and duration, we
looked again to Chow et al. [2014].11
Construction methodology. The benchmark
BXM is formed by writing a one-month at-the-money
(ATM) call against a long position in the S&P 500.
The portfolio was fully covered.
The call was held to
expiration, at which time a new one-month call was
written. In this article, we extended the BXM strategy
by writing longer-dated, three-month call options with
rebalancing frequencies of one month and three months
to form two additional variants. Specifically, the threemonth monthly rebalanced buy–write portfolio sells a
three-month call option on the S&P 500 at time 0; the
call option was then bought back one month later, and
a new three-month call option was simultaneously sold.
The holding period for the three-month-to-maturity
call option was one month each time.
For the portfolio
rebalanced quarterly, the three-month call was held until
its expiration, at which point a new three-month call
option was written. We chose the three-month option
rather than longer-dated options for practical reasons:
Only three-month- and one-month-to-maturity options
are issued every month.
For our study, we were interested in the effect of
varying option maturities and rebalancing frequencies
on the performance of the buy–write strategy. Additionally, for robustness, we considered five different strikes
of the call options, from 5% in-the-money to 5% outof-the money with a 2.5% increment.
We also compared
the buy–write strategies with the S&P 500 Total Return
Index to illustrate the impact of the covered call strategy
on portfolio risk and return.
To calculate one-month holding-period returns
for our buy–write strategy, we first computed the daily
returns as follows:
R s ,t +1 = (dt +1 + I t +1 − I t ) / I t
RC ,t +1 = (dt +1 + I t +1 + C t − I t − C t +1 ) / (I t − C t )
where
R s,t+1 = daily return of the S&P 500 from day t to
day t + 1;
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. dt+1 = cash dividend paid on day t + 1;
It = spot price of the S&P 500 at the close of the
day t;
RC,t+1 = daily return of the covered call portfolio
from day t to day t + 1;
Ct = the reported call price at the close of day t.
Notice that when adjusting for the implied transaction cost induced by the option bid–ask spread, the
call price is assumed to be sold to open at the prevailing
bid price before the market close. Similarly, the call
will be bought to close the position at the prevailing
ask price at the end of the rebalancing day. Other than
when the call options are traded, daily returns are based
on the midpoint of the last pair of bid–ask quotes of
every trading day. If, for specific analytical purposes,
the bid–ask spread is not taken into account, then the
midpoint price is applied when the option is sold to
open or bought to close.
The monthly returns are then
computed as:
Rmonthly =
# of days
in month
∏ (1 + R
t =1
daily ,t
)−1
In a later section of this article, we also examine
other option-based strategies, in which a straddle is sold
in conjunction with a long S&P 500 position. The return
calculation formulas already provided extend easily to
these strategies.
PERFORMANCE AND DISCUSSION
In this section, we report the returns of the three
ATM12 buy–write strategies and the buy-and-hold S&P
500 portfolio for the period from February 1996 to
December 2012, inclusive. We are primarily interested in understanding the factors that contribute to
the observed performance differences.
Unless otherwise stated, the reported returns are geometric and
annualized.
Exhibit 1 provides a graphical presentation of the
cumulative return for the three buy–write portfolios and
the S&P 500. All portfolios are normalized to a level of
$1 as of January 31, 1996, the start of the measurement
period. It is evident from the graph that, ignoring transaction costs, the cumulative growth of the three-monthto-maturity monthly rebalanced (3mo-1mo) buy–write
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strategy significantly outperforms the benchmark with
far less volatility.
The one-month monthly rebalanced
(1mo-1mo) strategy outperforms the S&P 500 as well
but underperforms the 3mo-1mo portfolio. The outperformance of the 3mo-1mo buy–write is driven in large
part by the significantly smaller drawdown experienced
during the tech bubble collapse and the global financial crisis (GFC). On the other hand, the three-monthto-maturity quarterly rebalanced (3mo-3mo) strategy
merely keeps pace with the S&P 500 benchmark return;
nonetheless, it does provide volatility reduction, similar
to the other buy–write strategies.
Exhibit 2 reports more detailed risk and return
statistics for the three buy–write strategies.
Note that
all three strategies produce a higher Sharpe ratio than
the S&P 500 benchmark, which is also true of adjusting
for the bid–ask spread. All buy–write strategies are also
less volatile and have a lower drawdown versus the S&P
500, similar to low-equity volatility portfolios. Also as
in low-volatility equity portfolios, the higher Sharpe
ratio is not solely the result of lower return volatility.
The monthly rebalanced buy–write portfolios provide
superior long-term returns as well.
As suggested by the conditional returns reported
in Exhibit 2, buy–write portfolios sacrifice upside participation in raging bull-market months.
In exchange,
they gain substantial downside protection in bearmarket months. Empirically, there are more significant
market meltdowns than “melt-ups,” which make this
trade-off potentially desirable. We observe in Exhibit 1
that performance during bear markets makes a significant difference to compounded growth.
This is further
supported by the observation that the maximum drawdowns of the buy–write portfolios were far less than that
of the underlying index during the dot-com bust and
the GFC (Exhibit 2). The improvement to compound
return driven by a reduction in the left tail is similarly
observed for low-volatility equity strategies.
When investors sell a call option against the S&P
500, they are betting that the index will undergo a sufficiently mild increase in value over the holding period;
specifically, the price increase should not cause the call
option to increase in value. In the language of option
pricing, the S&P 500 call option’s time value (theta)
declines over time, but its expiration payoff increases
with the S&P 500 level, which has a positive average
drift.
The two offsetting effects combine to determine
the profit from selling the call option. Because the S&P
the JOurnaL OF inVeSting
. eXHibit 1
Growth of $1 Excluding Transaction Costs, February 1996–December 2012
Source: OptionMetrics.
eXHibit 2
Risk and Return Characteristics, February 1996–December 2012
In 72 of 203 months, S&P 500 had a monthly return greater than 2%; conditional returns show the average of the 72 monthly returns of the four
portfolios.
b
In 51 of 203 months, S&P 500 had a monthly return worse than –2%; conditional returns show the average of the 51 monthly returns of the four
portfolios.
Source: OptionMetrics.
a
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
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. 500 call option is a high-beta security, it is expected
to produce high returns under standard asset pricing
assumptions. In the classical setting, selling a covered
call on the S&P 500 portfolio is equivalent to hedging
away the market beta exposure (albeit in a nonlinear,
asymmetric manner); in theory, this should reduce
both portfolio volatility and expected return. However,
empirically, we observed an increase in return in conjunction with volatility reduction for the 3mo-1mo and
1mo-1mo buy–write strategies, suggesting S&P 500 call
options may be overvalued relative to the prediction of
the standard models. A possible explanation may be that
the buy–write strategy is negatively skewed—that is, it
sells off positively skewed lottery securities to market
speculators—and captures a very substantial premium
associated with this undesirable third-moment characteristic.
This hypothesis is consistent with observations
gleaned from Barberis [2013] and Conrad et al. [2013].
Ultimately, whether selling covered calls makes
for a good risk-adjusted investment depends on the
improvement in the portfolio mean return given the
reduction in positive skew relative to the S&P 500. It
is important to understand that the buy–write strategy
always has a better return in down markets.
Exhibit 3
demonstrates the empirical return distribution of the
3mo-1mo buy–write strategy compared with the S&P
500. The attributes of interest in the return distribution
relative to the S&P 500 investment are the absence of a
significant portion of the positive tail and the resulting
shift in the distribution mean.
Rebalancing longer-dated options on a monthly
schedule is the optimal choice for several reasons. The
three-month-to-maturity call option is particularly efficient because of both its liquidity and its availability at
the monthly frequency; other long-dated options are
not created monthly.
Selling one-month-to-maturity
call options on a monthly basis generates substantially
less premium income than selling three-month-tomaturity call options monthly. Similarly, selling threemonth-to-maturity call options quarterly also collects
significantly less total premiums than doing so monthly.
These claims hold true even after adjusting for the lower
liquidity of the three-month call options and the cost of
higher-frequency turnover. The lower drawdown of the
3mo-1mo portfolio versus the other buy–write portfolios is also consistent with its outperformance.
We will
explore in greater detail the potential explanations for
the outperformance of the 3mo-1mo buy–write over the
eXHibit 3
Monthly Lognormal Return Distributions, February 1996–December 2012
Source: OptionMetrics.
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the JOurnaL OF inVeSting
. 3mo-3mo and 1mo-1mo buy–write later in this article,
but for the time being, we note that traditional meanvariance analysis is insufficient.
We then adopted the 3mo-1mo as our buy–write
f lavor du jour for the convenience of exposition. We also
varied the 3mo-1mo strategy by writing options with
different strike prices, thus providing additional robustness checks as well as generating more nuanced comparative statics. We compared these 3mo-1mo buy–write
variants to three representative low-volatility strategies
based on minimum-variance, low-volatility, and lowbeta constructions.13 Exhibit 4 displays the summary
risk and return statistics of the five monthly rebalanced
buy–write portfolios and the three leading low-volatility strategies over the period from February 1996 to
December 2012. We also plotted the strategies’ cumulative returns to provide visual information on the time
series and the subsamples of performance in Exhibit 5.
JOI-HGenerally, buy–write strategies are able to
produce lower volatilities, smaller negative monthly
returns, and lower drawdowns than low-volatility
equity portfolios.
The annualized volatilities for the
buy–write strategies average 9%, compared with 12%
for the average low-volatility equity portfolio and
16% for the S&P 500. The largest drawdown for the
buy–write strategies is –25% on average, compared
with the maximum drawdowns of –52% for the
S&P 500 and –36% on average for the low-volatility
equity strategies. The worst monthly return for the
buy–write portfolios averaged approximately –12%,
better than the worst monthly returns of –16.94% for
the S&P 500 and –13% for the average low-volatility
equity strategy.
This came at the expense of higher
negative skew, which is not driven by a more severe
negative tail but rather by the lack of a meaningful
positive tail. In other words, buy–write strategies do
not provide participation in major bull markets, a fact
that is also made evident by the substantially lower
maximum monthly returns versus the low-volatility
equity strategies. By comparison, low-volatility equity
strategies have statistically and economically modest
excess skewness versus the S&P 500.
Last but not least, as Exhibit 5 highlights, such
comparative results will be heavily dependent on the
ending point of the analysis.
Key endpoints of analysis
include mid-2000 (strong equity bull market), late 2001
to late 2002 (equity market crash), late 2007 (end of
pre-GFC bull market), early 2009 (end of GFC equity
market crash), and December 2012 (mid-bull market
point). These endpoints show that low-volatility strategies typically outperform the buy–write strategies
through an equity bull market, only to give these relative
gains back during the subsequent bear market periods.
A key exception to this trend is the bull market of the
late 1990s, when the low-volatility equity strategies as
a group dramatically underperformed and subsequently
eXHibit 4
Monthly Risk and Return Statistics, February 1996–December 2012
ITM = in the money; OTM = out of the money; PCA = principle component analysis.
Sources: Chow et al. [2014] and OptionMetrics.
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
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.
eXHibit 5
Cumulative Performance of Low-Volatility U.S. Strategies vs. S&P 500, February 1996–December 2012
Sources: Chow et al. [2014] and OptionMetrics.
recovered (particularly versus the 3mo-1mo buy–write)
during the subsequent bear market.
Factor Analysis
An augmented Fama–French–Carhart four-factor
model (FFC-4) is useful for analyzing the comparative performance of the buy–write and low-volatility
strategies in greater depth.
Chow et al. [2014] found
that, in addition to the standard FFC-4 factors, lowvolatility strategies have exposure to BAB and duration.
Exhibit 6 shows the factor regression results based on
the corresponding six-factor model.
The market betas of the buy–write and low-volatility equity portfolios alike are substantially below
unity; indeed, the 3mo-1mo buy–write has a market
beta of 0.51, meaningfully below that of the low-volatility equity strategies. However, it is important to note
that the beta for a buy–write strategy varies over time
in a mechanical way: When the market rallies, the buy–
write portfolio beta continues to decline toward zero.
This negative convexity is known as negative gamma in
option pricing.
The gamma effect cannot be measured
by the linear factor models that are popular in standard
asset pricing, but insofar as this undesirable negative
gamma produces a premium, it partially explains the
economically large and statistically significant factor-
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adjusted alpha reported in Exhibit 6. The premium from
selling positive skew also contributes to the factor-adjusted alpha.
When BAB is specified as a factor, the low-volatility
equity strategies do not exhibit statistically significant
factor-adjusted alpha. Frazzini and Pedersen [2014] proposed BAB to potentially capture the combined effect of
the preference for lottery and leverage aversion or constraints on the cross-section of equities.
However, the
buy–write strategies do not load on BAB, indicating that
the two (behavioral) effects do not express themselves in
the equity market and the options market in a correlated
way. Nor does the buy–write strategy load on the value
factor, which is the primary contributor to the return
outperformance of low-volatility equity strategies. The
existence of factor-adjusted alpha and the differences in
factor loading suggest that the buy–write strategy can be
blended with a low-volatility equity strategy to create
meaningful diversification.
Sector Concentration
A common complaint about simple low-volatility
equity strategies is their substantial concentrations in the
utility and financial sectors.
This allocation exposes the
portfolio to industry shocks, which are not known to provide a risk premium over the long horizon. In Exhibit 7,
the JOurnaL OF inVeSting
. eXHibit 6
Factor Exposures Based on 6-Factor Carhart 4 + BAB + DUR Model, February 1996–December 2012
*Significant at the 10 percent level; **Significant at the 1 percent level.
Sources: Chow et al. [2014] and OptionMetrics, and Kenneth French Data Library.
eXHibit 7
RMSE of Rolling 36-Month Industry Betas Based on S&P 500 Benchmark, January 1999–December 2012
*Represents the portfolio with RMSE that is most statistically different from zero in each specific industry.
Sources: Chow et al. [2014] and OptionMetrics, and Kenneth French Data Library.
we computed the active industry risk compared with the
S&P 500 using rolling 36-month regression with the 12
industry portfolios as independent variables.14 We report
the root-mean-square error (RMSE) between the time
series of measured industry betas of the selected strategy
portfolio and that of the S&P 500.
As expected, the low-volatility strategies exhibit
significantly larger variances in industry exposure than
the S&P 500. This is especially true for the utility, financial, nondurable, and energy sectors, which are often
overweights, and for technology, which is usually a significant underweight for low-volatility equity strategies.
These active sector risks were not present in the
buy–write strategy.
Option Attribution Analysis
Although the factor analysis shows that the buy–
write portfolio has different risk factor exposures than the
low-volatility equity strategies, the linear regression fails
to capture higher moment features, such as the negative
skewness of the buy–write strategy. To further investigate the unexplained alphas in the factor regression, we
use the Greeks to decompose the profit and loss (P/L) of
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
the option into the P/L due to market movement (delta
and gamma), implied volatility (vega), and time decay
(theta). To be specific, the daily P/L of the option in
the three-month monthly rebalancing portfolio can be
approximated using the following formula:
Option P/L on day t + 1
= C t +1 − C t ≈ ∆ * ( I t +1 − I t ) + ν * ( σ t +1 − σ t )
+Θ * ( τt +1 − τt ) + 0.5 * Γ * (I t +1 − I t )2
where
∆, v, Θ, Γ represent Delta, Vega, Theta, and
Gamma, respectively;
It = the underlying S&P 500 price on day t;
σt = the implied volatility of the option on day t;
τt = time to maturity on day t.
Notice that the interest rate effect (called rho in
the options literature) is not included here for the sake of
simplicity, but the omission has little effect on the analysis.
This attribution based only on four Greeks accounts
for 98% of the total option P/L. The daily portfolio
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. return attributable to delta (R ∆ ,t +1 ), vega (R σ ,t +1 ),
theta (R Θ,t +1), gamma (R Γ ,t +1), and the S&P 500 ( R I ,t+1 )
are computed as follows:
R ∆ ,t +1 =
−∆ * (I t +1 − I t )
I t − Ct
R σ ,t +1 =
−ν * ( σ t +1 − σ t )
I t − Ct
R Θ,t +1 =
−Θ * ( τt +1 − τt )
I t − Ct
R Γ ,t +1 =
−0.5 * Γ * (Pt +1 − Pt )2
I t − Ct
R I ,t +1 =
d t +1 + I t +1 − I t
I t − Ct
The return due to delta and gamma map intuitively
to market beta. This is evident from the equation, which
clearly demonstrates the nonlinearity of the option’s beta
exposure. The return driven by theta, or the time decay,
is related to the decay in the value of the positive skew
(lottery ticket). Intuitively, buying a three-month atthe-money call option is equivalent to buying a lottery
ticket for a premium (equal to time value) to bet on a
market rally over the next three months.
All else being
equal, as we draw nearer to option maturity, the value
of the lottery ticket declines because the likelihood of a
large positive shock before expiration declines.
Although the writers of an ATM covered call
option accept the liability for a large payout if the call
option goes deep in the money, their unit position on
the underlying price hedges away the upside market
(delta) “risk.” However, the option writers are inevitably
exposed to a gamma loss: Although delta is a measure of
option price sensitivity with respect to a small change in
the underlying, delta itself also dynamically changes with
the underlying price. Gamma captures the curvature
that delta cannot fully describe, especially when there
is a large movement in the underlying price. As option
writers always short gamma, they will suffer large losses
given any large market movement.
In other words, the
covered call portfolio unavoidably takes on a gamma loss
of uncertain magnitude in exchange for a certain time
premium. This combination of time premium (large
probability but small gain) and gamma loss (small probability but large single loss) can be intuitively regarded
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as selling lottery tickets, a business strategy with limited
upside premium but unlimited downside risk.
Given this interpretation of the Greeks, we further
divide the return of the covered call portfolio into four
risk categories: market risk represented by the S&P 500
and delta return; lottery risk represented by theta and
gamma return; ex ante volatility risk represented by vega
return; and other option risks. Exhibit 8 summarizes the
monthly returns of the components in the ATM covered
call portfolio.
The monthly returns are generated geometrically from the daily returns.
Over the sample period, writing a call option earns
an attractive monthly return of 0.86% from the time premium (theta) while suffering from significant negative
returns of –0.13% from sensitivity to the price change
in the underlying (delta) and –0.62% from the rate of
change in sensitivity (gamma). In addition, the highly
negative skewness (–2.99) and positive kurtosis (11.95)
indicate that the major risk of writing an option—
namely, tail risk—is embedded in the gamma factor.
Although it is a highly unlikely event, a major gamma
loss usually happens at the worst time: when the market
plummets. On average, however, the written call option
generated a positive return of 0.16% that enhanced the
performance of the overall portfolio.
Intuitively, the covered call portfolio can be regarded
as taking on exposure to market, lottery, and volatility
risk, each of which has a unique risk–return profile.
Exhibit 8 shows that the lottery factor has a significantly
positive monthly return, contributing about 40% of the
total covered call portfolio return.
The lower standard
deviation of the market factor supports our earlier suggestion that the reduction in volatility mainly comes from
the decreased market beta. However, there is reason to
believe the lottery factor also makes a difference in this
situation, given that its volatility is as low as 0.49%.
However, this low-volatility characteristic of the
lottery factor in covered call writing seems anomalous,
as financial theory consistently contends that investors
cannot simultaneously reduce risk and increase returns
in an efficient market. It is evident that the return
of the lottery factor is significantly negatively skewed
because of the gamma loss, which is a proxy for the risk
of large market movements—both upside and, especially, downside.
Conrad et al. [2013] argue that both
ex ante positive kurtosis and negative skewness yield
subsequently higher returns; from this perspective, the
lottery premium may be owing to the investor’s taking
the JOurnaL OF inVeSting
. eXHibit 8
Greeks’ Decomposition of Monthly Returns, February 1996–December 2012
Source: OptionMetrics.
on substantial negative skewness (–3.25) and positive
kurtosis (16.23). In other words, the call option tends
to be “overpriced” because option writers require an
extra skew risk premium for accepting a potentially
unlimited loss, clearly suggesting that mean–variance
dominance15 is an inappropriate measure of performance for portfolios that include options (Leland
[1999]).
Finally, the slightly negative return driven by the
change of implied volatility is reasonable intuitively.
Writing an option is essentially shorting implied volatility, a pricing input that is especially undesirable as it
rapidly increases in times of crisis. Nonetheless, over the
course of the market meltdown, implied volatility as a
measure of market sentiment will reverse its uptrend
and return to a normal level. The large negative return
eXHibit 9
Daily Implied Volatility of the Three-Month ATM Call Option, February 1996–December 2012
Source: OptionMetrics.
OptiOn-Writing StrategieS in a L OW-VOLatiLity FrameWOrk
FaLL 2015
.
realized before the crisis is therefore offset by a subsequent positive return. Consequently, ex ante volatility
risk is small in the long run. Exhibit 9 shows that empirically implied volatility demonstrates a long-term mean
reversion pattern, indicating that this factor return is
time-varying, depending on the holding period of the
covered call strategy.
CONCLUSION
Empirical evidence spanning the 17-year period
from 1996–2012 supports the strategy of writing covered
call options on the S&P 500 to improve the overall portfolio’s risk-adjusted returns. The improvement results
from earning a higher return with lower volatility relative to a buy-and-hold index portfolio.
Unlike the traditional strategy of writing call options and holding them
to maturity, the proposed approach involves rebalancing
long-dated options on a monthly basis. Implementation
of this strategy provides a cushion for large drawdowns,
as experienced during the last two crises, and results
in enhanced risk-adjusted performance. Our research,
which covered various buy–write strategies over a range
of strike price levels, indicates that the improvement in
risk-adjusted performance results from the skewness premium that option writers gain in exchange for assuming
the tail risk of a potentially unlimited loss.
This finding,
in conjunction with the preference-for-lottery hypothesis, suggests that the success of buy–write strategies
can be quite satisfactorily explained in a traditional
low-volatility framework. Because the factor loadings
are mutually complementary, covered call writing also
offers low-volatility investors a viable means of diversifying risk exposures.
ENDNOTES
Li [2013] observed the exponentially rising growth
in both total assets under management and the number of
managers engaged in low-volatility investing.
2
Feldman and Roy [2005] noted that overvaluing call
options is consistent with overconfidence and the confirmation bias; they described call purchasers as extremely confident investors who tend to discount evidence that conf licts
with their upwardly biased expectations.
3
Board et al. [2000] reported that all empirical studies of
covered calls found a reduction in the variance of returns.
1
Fall 2015
See Whaley [2002] for a review.
See Baker et al.
[2011] for a review.
6
BAB factor is proposed in Frazzini and Pedersen [2014]
by creating a zero-beta factor portfolio, which includes long
low-beta stocks and short high-beta stocks.
7
The duration factor is proposed in Chow et al. [2014]
by using the concatenated excess return time series from the
Barclays Capital Long U.S. Treasury Index and the Ibbotson
SBBI U.S.
Government Long Treasury.
8
Ideally, we would like to include the developed market,
excluding the United States, and emerging markets in our
research. Although the Morgan Stanley Capital International (MSCI), Europe, Australasia and Far East (EAFE), and
Emerging Markets (EM) indexes serve as good representatives
for the two markets, the corresponding option data on the
MSCI iShares exchange-traded funds are incomplete and have
mostly zero trading volume to conduct the covered call strategy.
Thus, this article will mainly focus on the U.S. market.
9
We exclude the January 1996 and January 2013 data
to maintain similarity with the result of the other lowvolatility strategies.
The total sample size is 203 monthly
holding periods.
10
See http://mba.tuck.dartmouth.edu/pages/faculty/
ken.french/data_library.html.
11
The time series returns of low-volatility portfolios
based on the optimization and heuristic approaches come
from Chow et al. [2014].
12
We also examined five different strikes for all the
strategies and observed results that are consistent with the
at-the-money scenario.
13
The covariance matrix of our minimum-variance
portfolio is estimated using statistical factors from a principle
component analysis (PCA), with the 1,000 largest U.S. companies’ trailing five years of monthly returns taken as input.
This covariance matrix is then used as input to a numerical
optimizer to generate a set of non-negative stock weights such
that the resulting predicted portfolio volatility is minimized.
Long-only constraints with 5% position limits are imposed
to avoid overconcentration on single stocks for practical concerns.
The low-volatility (low-beta) construction selects the
bottom 30% of stocks by volatility (beta) from the universe
of the 1,000 largest U.S. companies. For further details, see
Chow et al.
[2014].
14
Industry portfolio data from Kenneth French Data
Library.
15
Applying the Stutzer [2000] index and Leland’s alpha
[1999] might provide more accurate estimates of risk-adjusted
performance. Both tend to penalize negative skewness and
high kurtosis.
4
5
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