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Traders are
never far from the concept of volatility--either in the markets
or on the news. We hear about it all the time: Day traders are advised
that volatility is their best friend when it comes to intraday trading
opportunities, while long-term investors are forever warned to hold
tight and weather the most recent period of volatility until things
settle down again. It's no wonder many traders have trouble understanding
what volatility really means and how it affects their trading.
To better understand
this crucial aspect of trading, first we will look at what volatility
represents, its inherent features and a simple way of measuring
it. We'll also look at general ways of applying these concepts to
the markets.
A
simple concept
From a mathematical
standpoint, volatility is one of the more complex market concepts
but that doesn't mean it has to be difficult to understand
in practical trading terms. Volatility is simply how much prices
change over a given period of time. For instance, if the Dow Jones
Industrial Average goes up 10 points one day and down 10 points
the next you would probably say volatility is low. However, if it
goes up 200 points one day and down 200 points the next, then you'd
probably say the market is volatile.
In the most
basic sense, that's really all there is to it. The more complex
stuff has to do with measuring volatility consistently, tracking
its behavior, and taking advantage of its characteristics.
Volatility
characteristics
Volatility
has certain inherent features: cyclicity, persistency and mean reversion.
Although they might initially sound intimidating, again, the concepts
are actually quite simple.
Volatility
is cyclical: Volatility tends to run in cycles, increasing
and peaking out, then decreasing until it bottoms out and begins
the process all over again. Many traders believe volatility is more
predictable than price (because of this cyclical characteristic)
and have developed models to capitalize on this phenomena.
Volatility
is persistent: Persistency is simply the ability
of volatility to follow through from one day to the next, suggesting
the volatility that exists today will likely to exist tomorrow.
That is, if the market is highly volatile today, it will most likely
be volatile tomorrow; conversely, if the market not volatile today
it will likely not be volatile tomorrow. By the same token, if volatility
is increasing today, it will likely continue to increase tomorrow,
and if volatility is decreasing today, it will likely continue to
decrease tomorrow.
Volatility
tends to revert to the mean: Someone once asked me
to describe reversion to the mean (average) in as simple terms as
possible. My reply was if you know someone who's normally "mean"
and then they're nice to you for a few days, chances are they'll
revert back to being mean.
Seriously,
this concept simply means that volatility has a tendency to revert
back to more average or normal levels when it reaches a high or
low extreme. Once a market hits an extreme high in volatility, it
will likely revert back to the mean--that is, volatility will fall
back to more normal or average levels. Conversely, once volatility
hits an extremely low level, it will likely rise to more normal
(or average) levels. It's like a rubber band: when stretched so
far, it tends to snap back.
.gif)
Figure
1. Volatility characteristics
The above
concepts are illustrated in Figure 1. Notice the cyclical characteristic
of volatility. It tends to oscillate back and forth between periods
of low volatility and periods of high volatility. It tends to persist
(follow through). Days of increasing volatility (a) tend to be followed
by days of increasing volatility (b). Conversely, days of decreasing
volatility (c) tend to be followed by days of decreasing volatility
(d). Finally, it tends to revert back to its mean--that is, periods
of extremely high volatility (e) tend to be followed by moves to
more normal or average levels (f). Conversely, periods of extremely
low volatility (g) tend to be followed by periods of more normal
or average volatility (h).
Measuring
volatility
Because this
is a an introductory article on volatility, we'll show a simple
way to measure it. One of the easiest ways is to take the average
range (high low) over a given period. The number of days
(or hours, or weeks, etc.) you use in your calculation will give
you a picture of the volatility over that time period.
A five-day average range calculation will give you an idea of how
volatile the market has been the past week, but it won't tell you
anything about the past six months. A 100-day average range calculation
would reflect volatility over a much longer period.
.gif)
Figure
2. True range.
Because more
volatile markets often gap higher or lower overnight, the true range,
developed by Welles Wilder, provides a more accurate measurement
of volatility because it accounts for overnight gaps in its calculation.
This concept is illustrated in Figure 2. Because the range for only
one day doesn't provide much information, the true range can be
averaged over a period of time (say two weeks). This average true
range gives you a better feel for volatility over time.
True range
is the largest value (in absolute terms) of:
- today's
high and today's low
- today's
high and yesterday's close
- today's
low and yesterday's close
Figure 3, Global
Telesystems Group (GTSG), provides a good real-world example of
these concepts.
.gif)
Figure
3. Global Telesystems (GTSG) Source: Omega Research.
Here we measured
volatility by taking the 10-day average true range (ATR). Again,
notice the cyclical nature of volatility. It tends to cycle from
periods of high volatility to periods of low volatility. It
tends to persist, periods of increasing volatility (a) tend to be
followed by periods of increasing volatility (b). Conversely, periods
of decreasing volatility (c) tend to be followed by periods of decreasing
volatility (d). Also, notice that it tends to revert back to its
mean. That is, periods of extremely low volatility (e) tend to be
followed by higher or more normal (average) levels of volatility
(f). Conversely, periods of high volatility (g) tend to be followed
by periods of lower or more normal or average (h) levels of volatility.
General
trading applications
Higher volatility
markets offer potentially larger profits accompanied by increased
risk. Short-term traders, whose profits are limited by how much
a stock or futures contract can move in a given amount of time,
may seek more volatile markets. Longer-term or more conservative
investors may seek markets that are less volatile.
If the volatility
of a market is extremely low (compared to average or normal levels),
then chances are a larger move is imminent as volatility reverts
to its mean. Conversely, if volatility is extremely high (compared
to normal levels) then the large price move which created the jump
in volatility may be over as volatility reverts back to more normal
levels.
Summing
up
Volatility
measures the changes in price of a market over a given time period.
The average true range of a market provides a simple way of calculating
volatility. Markets that are generally volatile offer potentially
larger profits with the trade off of increased risk. Volatility
has a few important characteristics: cyclicity, persistency and
reversion to the mean. These concepts can be used to help determine
which markets offer the highest potential for profits, when a large
move is likely to occur and when the move may be over.
References:
Larry Connors: "Connors On Advanced Trading Strategies" and "Investment
Secrets of a Hedge Fund Manager." Sheldon Natenberg: "Option Volatility
and Pricing Strategies" (Probus Publishing).
Dave Landry
is director of research at TradingMarkets.com. A Commodity Trading
Advisor (CTA), Mr. Landry is principal of Sentive Trading, a money
management firm, and a principal of Harvest Capital Management,
a hedge fund. Mr. Landry has authored a number of trading systems,
including the 2/20 EMA Breakout System and the Volatility Explosion
Method, and his articles have been published in Technical Analysis
of Stocks and Commodities magazine. His research has been referenced
in several books such as Connors On Advanced Trading Strategies
and Beginners Guide to Computerized Trading.
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