Posts Tagged ‘goals’

Trader’s Coach Dr. Brett Steenbarger at LA Trader’s Expo

June 9th, 2009 by jackieannpatterson | No Comments | Filed in Classes

steenbarger - the daily trading coach Engaging the audience at an early-morning session of the Trader’s Expo is not an easy thing but Dr. Brett Steenbarger showed up with the energy, good advice, and R-rated language to wake us up to the mportance of psychology in trading.  Dr. Steenbarger is an expert in “brief therapy” which is getting things done in a few minutes rather than years on the couch.   He’s applied his skills to helping professional traders improve their craft.  Institutional/hedge fund traders only – attending an Expo session or reading his book is the only way us private traders can take advantage of his work.   However, after his talk, the good doctor did stay for another hour answering questions and helping people with their particular issues.  A trader himself, Dr. Steenbarger’s blog packs as much if not more info about trading the markets than about psychology.

Key take-aways from the LA Trader’s Expo session:

Trading is a performance art (like music or athletics) and we can improve by building on our strengths as well as interrupting and reprogramming our patterns of problem behavior (impulsiveness, not adapting to conditions, acting on anxiety, etc).

Five Best Practices

1. Break trading into components and work one at a time, e.g. getting good entry prices.

2. Evaluate performance with metrics

3. Identify strengths and weaknesses, especially find strengths.

4. Set realistic goals for development.  2 per day: one strength to enhance, one weakness to curb

5. Institute mechanisms for review

Especially emphasized the role of our personal strengths and positive emotions.    A brief quiz showed us that we need a ratio of 2:1 positive to negative emotional states to achieve high performance.    (positive: joy, contentment, energy, affection.   negative: anxiety, depression, guilt, anger)

In short to improve:

  • Find things that went well and do more of that.  
  • Train self to follow sensible rules.  
  • Stay in the zone.

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BackTesting Moving Averages

March 9th, 2009 by jackieannpatterson | 4 Comments | Filed in Backtesting Set Up, Moving Average, Reports, Technical Strategies

Why Moving Averages

As a trader or investor, the only reason to investigate moving averages is to gain knowledge to increase profits. Like many other technical indicators, moving averages are meant to help us objectively tell the market status at any given time. This helps us see through the emotions of the day and make rational decisions, which we’re told will lead to greater profits and/or fewer losses over the long run. Moving averages (MAs) smooth the series of prices for a stock. MAs are most often used to identify the trend of market direction, and are classed as a trend-following indicator. This doesn’t mean that MAs are only for long-term investors – short term traders use them also. Moving averages can be used to screen stocks for good candidates, signal buying opportunities, and offer sell signals.

Why Backtest – A Story

The goal of backtesting is to find out if moving averages really do lead to better results and what are the most promising ways to apply MAs. Let me tell you a short story. While I was putting together the results for one of the moving average BackTesting Report issues, I happened to visit a friend. At her house, I came across some reading material from a well-advertised discount stock broker. In it was an article that advising its customers to use a particular moving average length applied in a certain way to get the best results. I had my comprehensive tests right in front of me and I can tell you that broker’s method did not get the best results although they did mention a MA length that is useful in other ways. I had in my hand test results that showed that the way that broker applied the moving average had a win rate worse than the baseline when tested on 7147 stocks over 14 years of stock market data. Clearly the broker wasn’t running that kind of testing. It’s up to the customers – us! – to fend for ourselves and find out what works versus what doesn’t.

How to Calculate MAs

When backtesting moving averages, the first decision is how to calculate the moving average. Do you want a simple moving average (SMA)? Or something designed to track price better such as an exponential moving average (EMA)? You might consider an experiment to compare the win rates of the two different averages. I did just that a couple years ago, and while I don’t have the results to publish, I came away with the notion that it didn’t make a big difference whether I chose SMA or EMA — just pick one and use it consistently. So for this project, I choose to use simple moving averages because I see them mentioned in commentary most often. To actually do the calculation, I relied on the built-in function which came with TradeStation. (The choice of backtesting engine is another decision which is general enough to write about in another post.)

How to Use MAs

Next you need to pin down how exactly you want to apply moving averages. How will you interpret the relationship between price and moving average? What rules will you use to decide when to buy and sell? You don’t have to read long about stocks before coming across a bullish reference to a stock trading above its 200-day moving average or its 50-day moving average, or even the 10- or 20-day MA. Or advice about buying stocks as they cross their 50-day or 200-day moving average. These are important rules to test in the backtesting engine. And then there’s the moving average crossover – a classic method of technical analysis. That makes three distinct ways of using moving averages to test.

Going more in-depth, some trading texts talk about the slope of a moving average. If you hark back to algebra and consider the MA as a line, to find its slope you would pick two points on the line and apply the usual formula ((x2-x1)/(y2-y1)). This brings up the question of how far apart to pick the two points which can make a difference to results. Really, since the MA is being used to identify the trend, we just want to know if it is sloping up or down. Then we can simplify the whole calculation by noticing that if the price is above the moving average, it must be pulling the average up, and a price below the MA pulls it down. Thus another reason to test the efficacy of price above the moving average.

Parameter settings

Once you decide on how to use the MAs, you need to pick a selection of various lengths to test. Beware of over-optimizing. Somewhere out there is a guy with backtesting results showing 3895% gain or whatever using just the right moving average. Too bad he doesn’t know what MA will produce those results in the future. That said, you need to try more than one length to make sure that your results aren’t a fluke. Stick with defaults settings or the ones you hear about most in the media. Finding the one perfect parameter setting is not going to make you rich. Finding a cluster of good, robust settings just might do you a great deal of good though.

As a practical matter when backtesting allow enough data lag before measuring. All tests must begin measuring at the same place for apples-to-apples comparison among different MA lengths. For example, if you’re testing a 200-day moving average, it will take the first 200-days of data to calculate the first point of that moving average. That means that the first day you could possibly have a signal is 200-days into the data set. To make a fair comparison with, say, the 10-day moving average, you need to make sure not to count any signals from the 10-day moving average before the 200-day is ready to go. Fortunately TradeStation has a way to set the “Maximum number of bars study will reference” in “Properties for All” strategies which forces the backtesting engine to wait that long before tabulating data.

More Profit from Buying or Selling?

Moving average rules, and in particular moving average crossover rules, are often discussed as a reversal system. This means that one signal, say the MAs crossing upwards is a buy signal and then its opposite, say MA lines crossing down, is not only a sell signal but also the trigger to go short. Theoretically, that’s just fine but many people are not interested in shorting the market. They are looking for techniques to help them buy and maybe sell. Even a person who regularly sells and sells short might use different techniques for buying and selling. For these reasons, it’s wise to test the buy signals separately from the sell signals.

This poses a dilemma because it’s hard to evaluate a buy signal in isolation. One way to do this is to use timed exits – that is, exit the trade or sell the stock after a certain amount of time elapses. I chose to run each backtest three times with three different times exits because different people have different styles and different needs. To produce backtesting results useful to swing traders, I exit after 2 days. To model position traders, 20 days. To meet the needs of active investors, backtesting holds each position for 200 days. This gives a way to isolate the buy signals and find out just how useful the moving average is to stock buyers of various temperaments.

Need to Define Goodness

One more very important thing to consider if you are backtesting moving averages to find out how well they do in the stock market: How will you know what is good? You need objective criteria for success. That means identifying the key statistics such as win rate, expectancy, hypothetical equity gains, etc. It also means setting standards for acceptable performance in each of these areas.

An example illustrates why this is important and why it’s not as easy as it first appears. Say your tests show a win rate of 55% for a particular indicator. That may might not be so good if, say, 62% of all stocks went up during the same period of time. Or if only 25% of stocks rose during that time period, your 55% win rate would be spectacular. What is good depends on how it compares to baseline market performance under the same conditions.

You can download a free copy of the BackTesting Report Baseline issue by clicking here.

Test Set

For a meaningful backtest, you need to have enough data to make a statistically valid comparison. At the minimum, that means 30 trades. Even if you are trading just one instrument – just one stock or just one currency pair – I think it’s important to test your trading strategy on many different instruments to prove its robustness. I went over the top with an extremely large test set — 7147 stocks over 14 years — to make sure my results would apply in a wide variety of market conditions.

You can get your copy of my backtesting reports on moving average buy signals by clicking here.

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Entry Strategy Definition

October 29th, 2008 by jackieannpatterson | No Comments | Filed in Glossary

  An Entry Strategy is the set of rules specifying the conditions to enter a trade. 

For a long trade, entering means buying a stock.   For a short trade, entering means selling the stock.

 

Extra Insight:

Having a strategy for entry allows a trader to plan with a cool head rather than getting caught up in the heat of the moment.   Backtesting the entry strategy gives a trader insight and confidence in the plan.

The main goal of an entry strategy is getting into profitable trades.  on the flip side, it is useful to stay out of losing trades, making it a Do-Not-Enter Strategy as well.

(Backtesting Blog is an Amazon Associate.)

Updated 11/12/08.

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Exit Strategy Definition

October 29th, 2008 by jackieannpatterson | No Comments | Filed in Glossary

 The Exit Strategy is a well-defined plan specifying the conditions to get out of a trade.  

 For a long trade, exiting means selling the stock. For a short trade, exiting means buying a stock.

Extra Insight:

Having a strategy for exit allows a trader to plan with a cool head rather than getting caught up in the heat of the moment.   Backtesting the exit strategy gives a trader insight and confidence in the plan.

Most traders have two purposes for exiting:  taking profits and cutting losses. 

Sometimes both ends are served by one exit order, such as a trailing stop.    Other times, they are two distinct orders, such as a fixed stop loss and a target limit order.

A third goal of an exit strategy may be the efficient use of capital.    In that case, the exit strategy may have rules to exit a trade that isn’t going anywhere in order to redeploy the resources elsewhere.

Click here for BackTesting Reports on Exit Strategies

(Backtesting Blog is an Amazon Associate.)

Updated 11/12/08.

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Backtesting and Blog Goals

October 6th, 2008 by jackieannpatterson | No Comments | Filed in Backtesting Set Up

I start this blog while immersed in the early phases of my fourth major US stock market backtesting effort. 

The purpose of the blog is to record my key decisions and tactics for backtesting.   I intend it to be a resource for traders and active investors . I hope that others will learn from my efforts and we all learn from each others’ comments and discussion.

My goals for backtesting are:

1. Design trading strategies for my own use.   Specifically, 

  • US Stock Market
  • both buying long and short selling 
  • investigate both trend following and band trading  
  • swing trading: end-of-day (EOD) or daily charts and trades that last several weeks  

2. Provide information that other traders can use to develop their own systems.    That includes the areas above, and in addition, I want to illustrate for new traders such key concepts as:

  • stop loss orders 
  • market orders vs limit orders vs stop entry orders
  • trailing stops
  • price targets
  • indicators like moving average, RSI, MACDH, Stochastic

3. Do this with a scope and scale that goes beyond the resources typically available to private traders, including:

  • delisted stocks
  • over 15 years of historical data
  • clean database
  • multiple time periods to avoid curve fitting
  • crude and robust strategies only…limited fussing with parameters
  • statistically sound methodologies
  • monte carlo simulations to generalize beyond the given data

 Let’s dive in!

(Backtesting Blog is an Amazon Associate.)

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