On Sep 22, 3:58 pm, I wrote:
> On Sep 22, 2:10 pm, "Fred Smith" <fredsmit...@yahoo.com> wrote:
> > If a stock goes from $10.00 to $12.50 in a year (assuming no dividends), your
> > return is 25%. It doesn't matter what happened in between. My bet is that
> > annualizing the daily returns is not giving you correct results. Compare them
> > and see.
>
> In that case, annualizing the daily returns should give the same
> result, I think.
I would, however, agree with you with respect to annualizing sub-
annual results. If a stock price goes from $10.00 to $12.50 in 3
months, I think it is misleading to say that the stock price is
increasing at an annualized rate of 144% (1.25^4-1). That is a good
example of where I believe averaging the year-over-year change might
provide a more realistic picture.
I also have difficulty accepting the conventional method of
annualizing the standard deviation based on sub-annual results, for
example daily returns. Multiplying by the square root of time is
based on statistical theory that may or may not apply to specific
data. One online explanation both confirms and dismisses my concern
in the same paragraph. They write, where their definition of
"volatility" is the std dev of the log returns [1]:
"[V]olatilities for different units of time are fundamentally
different notions. There is no direct relationship between, say a
weekly volatility and an annual volatility.
"However, there is an exception to this observation. The exception is
called the square root of time rule. If fluctuations in a stochastic
process from one period to the next are independent (i.e., there are
no serial correlations or other dependencies) volatility increases
with the square root of the unit of time. Any price that follows a
random walk, Brownian motion or geometric Brownian motion satisfies
this independence condition. The square root of time rule is exact if
volatilities are based upon log returns."
Despite my relunctance to accept the square root of time rule applied
to the std dev of the log returns, my empirical experience confirms it
time and time again. That is, as I mentioned in my previous posting,
the standard deviation of the year-of-year (daily) returns is not so
different from the (antilog of) the std dev of the log returns based
on the square root of time rule.
Nevertheless, I did not want to get into a discussion about the
conventional methods of financial engineers. Instead, I want input on
the validity (or not) of the year-over-year statistics -- that is, the
average and standard deviation of many sub-annual year-over-year data
in order to estimate annual statistics.
Endnotes
--------------
[1]
http://www.riskglossary.com/link/volatility.htm