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There is no way to realistically make a precise price prediction for a particular date for a traded security. It is possible, however, to observe the recent historical volatility (standard deviation) of a security to make realistic estimates of the probable range within which the security price may close through a future date.

In this article, we provide short-term probable price range estimates for large-cap US stocks (SPY), China stocks (FXI), the US Dollar (UUP) and US long-term Treasuries (TLT).

Understanding and Managing Risk

Gauging probabilities for uncertain future prices of highly variable securities is the kind of thing that options traders do all the time. It is also something that stock and bond investors can do as part of their effort to understand and manage risks.

Of course, there are the exceptional shock events such as the world experienced in 2008 that fall well outside of normal probability ranges. In a negative situation like that, protective stops or other active steps are necessary to just get out of the way.

Price changes could be flat, upward moving, or downward moving over any projection period, but the probability ranges derived with standard deviation data and a normal distribution curve assumption can bracket the range within which prices are likely to close.

The boundaries of those ranges can be useful in selecting stop loss trigger points or in selecting option strike prices, and generally to appreciate the level of risk or opportunity that may be present in the short-term for each security.

You need to apply additional fundamental or technical information and judgment to decide the direction of price movement. Probability ranges simply help you understand the probable limits to price movement for a security over the selected number of forward market days, but do not suggest direction.

Statistical Tools

While securities do not exhibit a perfect “normal” bell-shaped distribution of percentage price changes, most (but not all) of the time the pattern is reasonably close for general bracketing of probable price changes.

The pattern of likely future prices expands as the future date moves farther away form the current date. In a “normal” distribution, the shape of the range of probable prices is conical (it expands as the time distance from the starting date increases). Some people call those ranges “probability cones”.

If the price change distribution is approximately “normal” (a working assumption) and if you know the historical standard deviation of the percentage price changes, then you can make estimates of the range within which future prices will probably close. You can do the same thing with implied future volatility in options, but not all securities have active options, making historical volatility more universally available.

The argument against historical volatility is expressed in the SEC’s obligatory caution to be made by advisors; “past performance is no guarantee of future performance”. That said, the past is not irrelevant. Back testing of probability cones using short to intermediate history shows them to be fairly good at bracketing short-term future price action — not perfect, but pretty good.

We like to look at 1-month and 3-month future periods, based on 1 and 2 standard deviations derived from several historical periods (252-days, 126-days, 63-days, and 21-days). This post presents 1-month forward cones for those standard deviations derived from those historical periods.

One more time, remember that price range probability cones do not predict where within those ranges, either up or down, prices will close — just the range within which closing prices are likely to occur at selected levels of probability based on known historical volatility. Less probable prices can and sometimes do occur outside of the probability cones .

Available Software Tool

Metastock software has a built in function that calculates and plots the “probability cones” for any level of probability for any future period based on any past period of observations. The charts in this post were developed with Metastock.

Price Range Probability Cones

Here, we look at probable price ranges from October 7 through November 6, 2009 based on 68% probability (1 standard deviation) or 95% probability (2 standard deviations) for SPY, FXI, UUP and TLT.

For each chart, there are probability cones for four different historical periods of price variation. The red cones are based on the last 252 closing prices (1 year). The green cones are based on the last 126 closing prices (6 months). The blue cones are based on the last 63 closing prices (3 months). The gold cones are based on the last 21 closing prices (1 month). The thin purple lines are the 21-day high-low price channel for reference.

In some instances the 63-day and 21-day cones are so close that the gold is covered by the blue and cannot be seen. It’s still there, just behind the blue.

click images to enlarge

SPY 68% Probability



SPY 95% Probability



FXI 68% Probability



FXI 95% Probability



UUP 68% Probability



UUP 95% Probability



TLT 68% Probability



TLT 95% Probability



Disclosure: We own SPY and FXI in some managed accounts.

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  •  
    The click to enlarge only works on the first chart.

    HardToLove
    Oct 10 08:23 PM | Link | Reply
  •  
    H.T. LOVE -- THANKS. I HAVE REPORTED THIS TO S.A. AND EXPECT IT WILL BE FIXED SOON
    Oct 10 10:05 PM | Link | Reply
  •  
    probabilities do not predict but gives you a clue of how likely an event can happened based on 'counted observations or estimates', some events are happening as we speak but we are not able to observe them or count them but it does not mean they are not occurring or are not probable or possible to happen. Just look at the 'LEHMAN event', where in everyone's mind it would have been considered almost impossible to happen but guess what it did!!! its like saying that a snake can come from another galaxi, impossible you would say but is it really? Quantum theories could be apply in the market to explain these situations where the price of the stock is in all the possibilities till spotted by the observer at a given time and space, meaning you will have winners and loosers at the same time till you spot them.
    Oct 11 09:45 PM | Link | Reply
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