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The Volatility-Adjusted Stop Loss

The Probability of a Stop Being Triggered 

Click Here  to see a video demonstrating a neat little tool that calculates stop losses 19 ways, including sophisticated volatility-adjusted stop losses, without requiring knowledge of statistics or algebraic equations.   

See Other Stop Loss Information 

For some folks the next few paragraphs may be difficult reading.  However, it is not necessary for you to get more than the general idea.  If you like, scan over it quickly and move on to the paragraph after number 5 in the list that follows.  On the other hand, if you can bear with us a moment, reading this should increase your understanding of why the stops tool can calculate such useful stops.  

In a group of people that has a normal distribution of height measurements, if you compute the average height, the computed average will be at A in the diagram.  Assume that each dash in the vertical line under the bell curve at A represents a man who is 5'10" or more in height and that this is the average height of 10,000 men in a sports arena.  Let's assume that these 10,000 men are represented by all the dashes under the curve but that most dashes are not shown (there are many vertical lines not drawn in the illustration).  Those who are 2" or more taller than those in column A are in column B.  Those who are 2" or more taller than those in column B are in column C, and so on with each column to the right representing men who are 2" or more taller than the men in the previous column.  By the time we get to column G we are talking about men who are about 6'10" or taller.  Obviously, men who would qualify to be in each subsequent column would be increasingly scarce.

Instead of thinking about those dashes as men of a certain height, think of them as stock price spikes of a certain magnitude.  Assume that downward spikes are to the right of A and upward spikes are to the left of A.  For this discussion, we are interested only in downward spikes.  Spikes that differ little from the average spike are near A and those that differ most are far from A.  There are lots of small downward spikes that differ little from the average spike.  They are located between A and B in the chart. As we move to the right on the A to G line, spikes get gradually larger.  Though the spikes at C are larger than the spikes at A (like the taller men before), there are fewer of them.  The very large spikes at E are fewer still.  The even larger spikes at G are relatively rare.  The height of the bell curve above any given location on the A to G line shows the frequency of spikes at that location.

Now we can think of the number of dashes under the bell curve at any given location between A and G as representing the probability that a spike of that magnitude will occur.  For example, the probability that a spike will occur that is of sufficient magnitude to be at G is about 1.3 in 1,000.  As mentioned before, the larger the spike the farther it is to the right on the graph and the less likely it is to occur.  Statisticians use a standard unit of measurement in marking off distances from point A (the average) on the graph.  This unit is called the standard deviation.  The purpose of the diagram is only to illustrate the standard deviation concept.  Let's now think of the placement of the letters B through G in terms of standard deviation distances from A.  Let's assume the letters A, C, E, and G are placed one standard deviation apart so that the distance from A to G is 3 standard deviations.  Thus, the distance from one letter to the next is ½ standard deviation.  It is a fact of nature, like Pi (π) is the same regardless of the size of a circle, that whenever we measure a randomly selected group for some trait which each member of the group possesses in varying degree, we may expect most of the measurements to bunch around the average, while the remainder taper off gradually toward both extremes of the distribution forming a bell-shaped curve.  This is known as "Gauss's Law," and it describes any "normal" distribution in nature.  By using the standard deviation as a measure of variance, we can know the probability of finding trait measurements of any magnitude.  For example, in any large normally distributed set of trait measurements we know that trait measurements that are ½ standard deviation or more greater than the average (B in the chart) will occur 30.85% of the time.  Again, this is a law of nature.  Similarly, we know that

  1. measurements 1 standard deviation or more greater than the average (C) occur 15.87% of the time.
  2. measurements 1.5 standard deviations or more greater than the average (D) occur 6.68% of the time,
  3. measurements 2 standard deviations or more greater than the average (E) occur 2.28% of the time,
  4. measurements 2.5 standard deviations or more greater than the average (F) occur .62% of the time, and
  5. measurements 3 standard deviations or more greater than the average (G) occur .13% of the time.

Given this information, it is possible to approximate the probability of the occurrence of a spike of a specific magnitude (as represented by its distance from the norm in standard deviations).  The word "approximate" is used because stock price variations are not exactly "normally" distributed.  Assume for a moment that stock price spikes precisely followed a "normal" distribution or bell curve.  Then a stop that is set at 1.5 standard deviations from the average price would be triggered approximately 6.68% of the time (see list above).  Assume that during the last 20 days there were no special events that inordinately influenced the stock and that the same conditions prevailed over the next 100 days.  In that case, spikes large enough to trigger a stop set at 1.5 standard deviations would probably occur about 6.68 times in 100 days or about once every 15 days simply because of the normal volatility or "noise" in the stock’s behavior.  If we use 2 standard deviations, then a spike large enough to trigger the stop would occur about once every 50 days.

This is a great time to mention one of the items we have available.  The standard deviation is one of the ways in which our Stops and StopsPlus tools can measure price variance.  In short, Stops measures price spikes and the approximate frequencies at which price spikes of various magnitudes occur.  It can then use this information to approximate the probability of the occurrence of a spike of a specific magnitude (as represented by its distance from the norm in standard deviations).  It is not necessary for you to know the probabilities.  When you experiment with the Stop-Lab, all you have to do is note the distance of the red line from the stock’s price and observe how the distance increases or decreases with the different numbers you enter for the settings.  You can tell how many standard deviations to you are comfortable with (that's the "Multiplier" function) by studying where your stops would be triggered at various settings.  You vary the other settings until you find the combination that is right for you. ~ Dr. Felt

To see what else is on this site, check our Descriptive Directory

. If you would like to read some basic information on stop losses, click here. 

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