If a stock was in a Bearish () trend last autumn, there's a good chance it did much better in the past three months. Here's a look at the statistical performance of one sample taken then.
Technical analysts assert that the market can move in an often predictable fashion. Why else do we study the patterns on a chart if not to find occasions where a pattern could be repeated. In reality, though, the only thing predictable about the market is that it will brutally squash all those deluded enough to believe it is systematically predictable. In fact, it really doesn’t matter what investment or trading approach is applied - even the most rigorous market pricing model of cause and effect is too clumsy to time the market much better than a coin toss would (check out this forecast study: It's Official! Gurus Can't Accurately Predict Markets). Perhaps the only real merit to all of the resources that go toward modeling the market has much more to do with risk management optimization - systems and processes that help insure against bad predictions. The best offense is a good defense. Enough about reality and portfolio management principles, though. We’re market timing believers because 1) flipping a coin isn’t as satisfying as scientific method, and 2) even a normal probability distribution of a random statistic shows there’s room for someone in the 95th percentile. Let’s just say most market timers aspire to be positive outliers – smarter than the average investor and richer for it. Stock Trends hopefully will help you be in this “heavy-tail” company and makes a proposition that the key to improved probability of market timing success is, in fact, simplicity: define a price trend, learn how the distribution of past returns of those trends favour a trade or not, and then execute an order within a trading plan that emphasizes prudent money management. Successful market timing is not so much about being a high rolling hare; it's the parsimonious trading turtle who builds wealth. The statistical language used here may be familiar and elementary for some, but I’ll try to keep all Stock Trends commentaries as plain and clear as possible. In the past Stock Trends editorial was largely typical technical analysis storyboarding – finding existing market trends and isolating particular stocks that are in a ‘good’ technical position for a trade. Now the emphasis will be on learning if and how the Stock Trends indicators predict probable outcomes. We will seek to quantify probable outcomes based on particular observations and the combination of variables recorded. That process of discovery will be an incremental learning exercise. Let's begin!
The Stock Trends VariablesStock Trends is essentially a handful of discrete and continuous variables. You can see them in every Stock Trends Report on the website. They include the trend (
![]() ![]() ![]() ![]() ![]() ![]() ![]() ![]() The most important variable is the trend indicator. The trend indicator is a factor variable with 6 possible values:
BULLISH TRENDSBullish Crossover (also referred to as Newly Bullish)
![]() Bullish (also referred to as Strong Bullish)
![]() Weak Bullish
![]() BEARISH TRENDSBearish Crossover (also referred to as Newly Bearish)
![]() Bearish (also referred to as Strong Bearish)
![]() Weak Bearish
![]() All issues and indexes with at least 40-weeks of trading data in its time series are assigned one of these values every week. These six indicators are defined here and in the Stock Trends Handbook, Chapter 4 - Guide to Stock Trends Symbols and Indicators.
However, the major trend categories are Bullish or Bearish. Each stock - even if it were more accurately modeled to be defined as a ‘flat trend’ – must be either Stock Trends Bullish or Stock Trends Bearish, depending upon the relationship between the 13- and 40-week average price. While there are problems that go with this binary denotation, it is a simple method of grouping our weekly observations. Once we separate observations into subsets we can begin to understand the meaningfulness of the grouping. Of course, its meaningfulness can only be evaluated if the division shows different results. In this case, does the future performance of stocks categorized as Bullish (
![]() ![]() ![]() ![]() ![]() ![]() Differences in Central TendencyAs an initial step toward understanding the relationship between the indicators and future performance let’s take a sample from 13-weeks ago – October 12. Since then the market has retreated, then rallied – with the S&P 500 index now up 3% from its level on October 12th. We can now analyze a basic statistic provided weekly by Stock Trends for all issues: the 13-week price change. How does the mean (average) price change vary for each trend variable? That is the simple question we will answer.
For reasons we will examine at another time, this analysis will be limited to issues valued at $5 and greater. Controlling for only those issues of common stock and trust units that had a trend indicator 13-weeks ago, there are 5,134 observations (we will ignore ETFs and indexes for different reasons). Of course, the range of price change is large – from a painful -92% (Petrobank Energy and Resources PBG-T) to 187% (Uni-Pixel UNXL-Q). The mean (average) percentage change of this sample is 4.5%. This is obviously higher than the 3% advance by the market benchmark indexes, but remember that the mean is not the only measure of central tendency. The median percentage change over this period – the value that sits in the middle of all observations – is 2.7%. Our question has to do with how one measure of the statistic (13-week price per cent change) varies between different subsets of the sample that are determined by the Stock Trends indicators.
If our binary grouping of Bullish and Bearish stocks is meaningful, there should be some variability in the median values of each group. What do we find?
Of the total 5,134 observations 3,254 (63%) had Stock Trends Bullish trend indicators –
![]() ![]() ![]() ![]() ![]() ![]() Certainly, we should sample other sets of records from different times and markets to see how the two major trend categories perform relatively. Of particular interest, too, are measures of variance (like the standard deviation) that quantify the distribution of the results. But for now we’ll simply drill down into these observations from October 12 and stick with the mean statistic (average price change) as a comparison for the Stock Trends trend indicators.
Why would Bearish stocks perform better than Bullish stocks in this sample? We should have a look at the breakdown of the statistic for the six minor trend categories (
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The most notable statistic here is the performance of Bearish (
![]() ![]() ![]() Regardless of the reason for the impressive move of these Bearish (
![]() Trend CountersStock Trends keeps track of the time period of the major trend – number of weeks an issue or index has been categorized in a Bullish or Bearish major trend – as well as the time period of the minor trend. (See Trend Counters) The minor trend counter is the number of weeks an issue or index has been in its current trend indicator (
![]() ![]() ![]() ![]() ![]() ![]() ![]() Separating the major trend counter into two groups offers some immediate information.
Of the 1,342 (Strong) Bearish (
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Those results again tell us something interesting: the better performing stocks were relatively short-term Bearish stocks. The mean 13-week percentage change of Bearish (
![]() Here we see that entrenched long-term Bearish trends are not stocks that this analysis would favour, and that a contrarian long trade has long odds. And some Bearish stocks are not as entrenched in a trend as others.
That a trend ends is no surprise. They always do… eventually. Nor is it surprising that some trends are not as pronounced or as forceful as others. How can we evaluate the character of a trend? We can drill down further into the trend counters to see if there is something about the quality of these Bearish trends that perhaps would provide a cue to the change ahead.
The minor trend counter is an indicator of the quality of a long-term trend. If the minor trend counter is relatively low compared to the major trend counter, we know that the major trend has included shifts into the “Weak” iteration of the trend – here a Weak Bearish (
![]() ![]() What does the data from October 12th show? The best performance from these Bearish (
![]() Bearish stocks with major trend >= 26 weeks and minor Trend < 4 weeks
Bearish stocks with major trend >= 26 weeks and minor Trend >= 4 weeks
Bearish trends bendWe’ve laboured through this elementary statistical exercise to illustrate that while Bearish trends do reverse, that stocks eventually complete their downward drift, transformations from bear trends are often part of a process that is akin to a bending of a line, rather than a breaking of it. Finding potential breakout stocks in the Bearish (
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