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HOW TO CALULATE THE VOLATILITY OF A BONANZA BASE
In
finance we want to know how much profit (return) is generated on
something of value to others that we buy, an asset, when we sell it.
Alternatively we may want to know the return on the asset from one time
to the next as we hold on to it. There are a couple of good reasons for
paying attention to returns instead of raw prices.
First, financial
markets are very close to perfectly competitive at the intra-day level
where we buy into a position in a bonanza base or when we later sell on
the break of the upward price trend in the markup phase of the stock’s
life cycle. Second, returns have much more attractive statistical
properties such as stationarity (returns will come back to an average value)
and ergodicity (the return generating system will return to states that
are closely similar to previous ones over a sufficiently long period of
time). This said, here is how we perform the calculations.
The
simple (net) return is defined as:
Equation 1
However,
to make the measure comparable across different time periods we use the
continuously compounded return also known as the log return of an asset:
Equation 2
Where

From here
we can construct the volatility measure by calculating sample standard
deviations of this time series (rt) over length of the
bonanza base. This is done as follows:
Over each
bonanza base time interval, t, the sample variance of each price
series is recorded as that bonanza base’s observation of the variance of
log returns (nrt):
Equation 3
where n = the number of
observations available within the bonanza base;
is the log return within the bonanza base; t indexes
the tick to tick observations on rt; and T indexes the
time interval that covers the length of the bonanza base over which we
are measuring volatility. Note that
the variance of log returns is a measure of the statistical dispersion
of stock returns in the bonanza base, indicating how far from the
expected return the returns typically are.
From here, the
standard deviation (volatility) of the log return within the bonanza
base is simply the square root of the variance measure from equation 3:
Equation 4
This is how we
calculate the volatility of a bonanza base where we prefer lower to
higher volatility. Sometimes people wonder why standard deviation is
used to interpret volatility instead of variance. In
probability and statistics, the standard deviation is the more commonly
used measure of statistical dispersion because it is defined as the
square root of the variance. This gives us a measure of dispersion
that is (1) a non-negative number, and (2) has the same units as the
data. Variance only gives us a non-negative number whereas
standard deviation generates a non-negative number that
is also in the same units as the original price data it is calculated
from.
If stock returns are normally distributed things are simple because the
mean and standard deviation fully describe the distribution. The
problem is that stock prices are actually lognormal in distribution.
For this reason we take the standard deviation of the logarithm of the
stock return series to be completely accurate in our description of
stock price volatility. In reality, however, we can take just the
standard deviation of the stock return series with strong confidence
that we are correctly estimating volatility. This is because stock
returns very rarely hit the lower barrier of zero where assumptions of
normality create violations when describing a lognormal return.
Equation 5
-SMB

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Copyright 2005 - The Delano Max Wealth Institute, LLC |