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I'm building a web semantic project that gathers the maximum amount of historic data about a certain company and tries to predict its future market stock values.

For data I have the historic stock values (not normalized), news (0 to 1 polarity) and subjective content (also a 0 to 1 polarity).

What is the best AI system to train and use for this kind of objective? Is a simple NN with back-propagation training the best I can hope for?

update: Everyone is concerned about the quality of this system. Although I'm pretty sure the system is as good as a random prediction (or even worse), this is a school project around artificial intelligence and web semantics. Therefore I'm only concerned in picking the best kind of train method for the data I have (NN, RBF, SVM, Bayes, neuro-fuzzy, etc). Its not about making money.

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I recommend you short your company's stock. –  GregS Jan 1 '10 at 23:23
Not exactly true -- in the past there have been cases where relatively simple methods would be profitable. Of course, they are no longer profitable because of the efficient market. And, often you can find something profitable, but not after taxes, expenses, etc. The reason the profit is there is because it is too small to be profitably taken advantage of. Like, you can quite easily find pennies on the sidewalk, if you look long and hard enough. But unlikely to find $100 bills. NN works as well as anything else, especially for a school project. –  Larry Watanabe Jan 2 '10 at 1:08
(contd) The real issue is what features do you use, what derived features do you construct. If you can figure that out, then any system will work, and work well. If you can't (and that is the heart of the problem) then your system will work ... so so...profitable, but not really after taxes, expenses, and your time and money are taken into account. –  Larry Watanabe Jan 2 '10 at 1:08
As an aside, I spent some time trying to build an expert system for use of our trading department. After examining their trading strategies, I did an analysis to see what their profitability was after accounting for the spread. A year after I submitted my conclusions, the trading group was disbanded :) Not saying I was responsible, more likely it was that I caught on before management did. –  Larry Watanabe Jan 2 '10 at 1:11
This question is pointless. The people who don't know the answer will tell you it's impractical, if not impossible. While the people who do know the answer aren't going to help because they're too busy sailing their mega-yachts. –  Cerin Mar 25 '11 at 20:14

14 Answers 14

up vote 21 down vote accepted

It's not possible to tell you which machine learning technique will give the best performance because all of these techniques are very sensitive to the actual time series you're trying to train and how you train them. So for a school project I would instead recommend that you implement multiple techniques and compare their performance. (You should also implement more than one version of each technique, for example different numbers of layers and nodes in your neural models.) This will make a much better project, because you will be thinking and writing about the relative strengths of the models rather than just messing around with one of them.

In addition to predicting performance on both the trained data and later untrained data, what can you say about their predictive ability (within the historical data) when compared to the amount of information they are storing (i.e. the number of variables in the model)? Also, how do they do on more predictable sequences like sine waves and polynomials, or definitively unpredictable ones like random walks?

And can you implement a system where you don't learn at all, you just search for your test sequence (or some function of it) within the original historic data set? How does that algorithm perform?

As an alternative to machine learning techniques, you might also consider something with more of an expert-system flavor. For example, you could implement one of the technical analysis strategies (candlestick charting say, or Fibonacci bands) and see how it performs.

Finally, for a more realistic project, you could apply any of these techniques to systems where it really is possible to make money -- for example model (or locate) two different time series that contain arbitrage opportunities, and get your program to recognize those.

BTW, The Misbehavior of Markets is another interesting book about why price prediction is hard.

EDIT: So to actually answer your question (!) no, NN w/ back prop is not necessarily the best you can hope for. But it will probably do fine.

EDIT: If your project is really more about getting the data than analyzing it, is there something else you could do instead of prediction? For example, you could detect when trading halts should come into play, or when a short sale rule applies, or something like that?

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What is the best AI system to train and use for this kind of objective? Is a simple NN with back-propagation training the best I can hope for?

First, the the people who suggest that the stock market is a random walk are parroting a non-technical, minority view of economics. This view comes from laymens who don't or aren't very good at investing for a living. Many smart people have written thick books and PhD dissertations on market forces and predictions, much more than I can summarize in a tiny post on SO.

There are a few industry standard ways of analyzing the stock market:

Fundamental Analysis:

Focuses on analyzing a company's financial stability and track record, such as a company's incoming and outgoing cash flow in, historical profit/earnings, etc. The idea here is whether the company's internal accounting is stable, or whether they're a credit risk. Fundamental analysts also consider the current economic climate and how it impacts a company's future growth, profitability, etc.

If you're a fundamental analyst, you want to look for stocks which are going to be financially viable for the next year or so. Obviously, you don't want you're stock to take a dive, but its ok if the stock doesn't shoot up either. So how do you make money on stocks which don't increase or decrease in value? You're not looking to make money on value of the stock, but instead on the dividend.

Not all stocks pay a dividend, but those which do are usually worth looking into. Dividends usually come in several flavors, though cash dividends and stock dividends are the most common. Let's say we have a stock valued at $10, you buy 100 shares, and the stock offers a 5% yearly dividend:

  • We can redeem a cash dividend for 5% of the purchase price, or $10/share * 100 shares * 5% = $50 of untaxed income.
  • Or we can redeem a stock dividend by converting it into more 5 more shares.

The main difference between cash and stock dividends is how you calculate the earnings. You know ahead of time how much money you'll earn when you get a cash dividend, because its based on the purchase price of the stock; you don't know much money you'll earn from a stock dividend since it depends on the sell price of the stock.

Quantitative Analysis:

A very technical field where quantitative analysts (quants) attempt to apply a numerical value to companies. And by "technical", I mean you can earn a PhD in this field, or win a nobel prize in economics.

Quants are to stock markets as meterologists are to nature: quants attempt to represent the economic climate with tons and tons of statistical models. In recent years, the Black-Scholes formula has become an industry standard, purely mathematical model of stock equity and option pricing.

Once we have a mathematical model of the market, we're able to make predictions based on our model, namely changes in price over time. The key to making quantitative analysis work is realizing that mathematical models are chaotic systems; they appear random, but they are in fact wholly and mathematically deterministic.

Many companies such as Jane Street Capital hire quants and programmers to assist in quantitative research and development.

Technical Analysis:

Technical analysis has a reputation for being "voodoo", however its also the most suitable kind of analysis for computers. Technical analysis uses a stocks historical data (particularly the open, high, low, close, volume) and a series of formulas, called indicators, to determine whether a stock is oversold (bullish) or overbought (bearish).

The simplest and most commonly encountered indicator is the simple stochastic oscillator, which looks like this:

Stochastics are presented by two lines, %K and %D, where

Fast stochastic
%K = (Close - Low) / (High - Low) * 100 and 
%D = 3-day moving average of %K

Slow stochastic
%K = Same as fast %D
%D = 3-day moving average of %K

(Now, we can chose any length moving average. In my own experience, fast stochastic gives too many false signals, 3- and 9-day moving averages tend to be much "smoother".)

The idea here is that our two lines will normally keep pace with one another, and they'll always be between 0.0 and 1.0. However, when they are > 0.8 and the %K lines crosses %D with downward velocity, the stock is considered overbought; when its < 0.2 and %K crosses %D with upward velocity, its oversold. You can see the effect in the diagram above, where the velocity of the stock (usually) follows the stochastic indicators.

Now, with that said, there are literally dozens of indicators used by technical analysts. And that's what they are: indicators, not laws of nature. Its wholly possible for a stock to climb even when all of its indicators are telling you to sell.

In my own stock trading experience, I found the following indicators easiest to calculate and have a better than chance reliability (especially when considered in tandem):

  • Stochastics, which are described above.
  • Bollinger bands, which basically take the average and standard deviation of stock prices over the last N days. If the stocks price falls outside the bands, its an indicator of whether the stock is overbought or oversold.
  • MACD (moving-average convergence/divergence), which uses two lines: one based on the on the difference between 26- and 12-day moving averages, and another line based on the 9-day moving average. When the lines "cross", you have an indicator of overbought or oversold.
  • Fast-fourier indicator (not commonly heard of or used). Some stocks "roll" or oscillate back and forth between two values. And FFT can tell you the oscillating frequencies and the period of oscillation.

Now, with all that being said, I don't think you'll be able to make reliable stock market predictions using a neural-net or AI, because then you'd be throwing away all of the statistical data you have at your fingertips.

Don't listen to anyone who says "stock markets are random" -- they're just wrong. If someone insists that stock market analyzation is based on psychology instead of statistics, they're misinformed. Yes, there are some non-statistical phenomena which impact the performance of a stock, such as a drug company's share taking a dive whenever their diet pills kill a celebrity -- but, you can protect yourself from these factors by investing in a wide variety of stocks and markets.

All three techniques have a wealth of scientific and mathematical papers dedicated to them, and many technical indicators have been empirically verified. There are plenty of people who make money using the three techniques I've described above; if you're a hobbyist and programmer, then technical analysis is the best available tool at your finger tips. If you want to get into this field, here are some tips:

  • Get yourself good stock charting software. I recommend Telechart, which contains hundreds of indicators for technical analysts, programmable indicators, the ability to export historical data into flat files for your own data crunching, and its is easy to use.

  • Figure out what kind of investing strategy you want. There are lots of people who day-trade and never get rich, and lots of people who hold on to stocks forever and get rich in 50 years. In my own experience, holding on to stocks for less than 3 months is a pretty safe way of trading.

  • Don't form emotional attachments to stocks, don't have a "favorite" stock, just let's the numbers choose your investments for you.

  • Always have a stop-gap. My stop-gaps are -5% and +15%. So, if the stock dips to 5% of the purchase price, I sell it and take the loss; if it goes above 15% of the purchase price, I sell and collect the profit. Regardless of whatever the stock is doing, or if your indicators tell you to buy, always sell at your stop-gap

    • What I've described above is a very safe strategy. However, if you like taking risks, you can always double down to recover lost profit. Doubling-down is a simple strategy: if you buy 100 shares at $10, then your stock goes down to $9, you've lost 10% of your investment. If you buy 100 more shares at $9, then the average price you paid for your 200 shares is (100*10 + 100*9)/200 = $9.50, so now you've lost 5.3% on your investment. If the stock increases above $9.50, you've made a profit.
    • I personally don't recommend doubling down at all, and I especially don't recommend doubling down more than once. I knew a guy who bought a bunch of Wachovia stock, and he just would not give it up. He has a pitiful story of doubling down, "I bought this stock at $63, $41, $34, $18. Do you know what it was when I finally sold it? $6." I think he lost something like $30,000 because he was emotionally attached to the stock, even when it showed all the signs of tanking.
  • Don't short-sell. Ever. Yeah, we've all heard about that time George Soros shorted the Pound and made a billion dollars in one day, but you're not George Soros and you don't have billions to spend. Shorting is dangerous because the theoretical maximum you can earn is capped at the purchase price * number of shares (i.e. this is how much you earn if the stock goes bankrupt), but the theoretical maximum you can lose is infinite since theres no upperbound on stock prices.

Ok, this post is really super long, but it should get you started.

Good luck!

  • Juliet
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"The race is not to the swift, nor the battle to the strong, neither yet bread to the wise, nor yet riches to men of understanding, nor yet favor to men of skill; but time and chance happeneth to them all" - The element of chance must be taken into account. while your argument is mathematically sound it has an unspoken proviso; namely "all things being equal" but all things are never equal! For example how does the newspaper headlines "CEO charged with sexual assult" fit in the equations above? –  Square Rig Master Jan 2 '10 at 4:52
@Square: an investor who was a professional tennis coach explained the problem above like this: the best tennis students are those with regular form, stick with the fundamentals, and acknowledge the sports "best practices". While there are rare times when a wild or improvised shot might get a point, you'll lose the game playing like that all the time. The trick is playing the game using a winning strategy that you can use 95% of the time rather than 5% of the time. Likewise, there are winning strategies in investing, where the mathematical approach works 95% of the time, and gossip blogs 5%. –  Juliet Jan 2 '10 at 5:58
In other words, you can't model for it, nor should you need to since events like that are rather extraordinary and will rarely have an impact on your long-term success as an investor. One day I might find $100 in the parking lot or I might get mugged and lose my purse -- it could happen, but I shouldn't balance my budget around these occurrences. The best strategy is to budgeting and investing is to plan for the normal occurrences, and have a safety net (rainy day fund or diverse portfolio) on the side. –  Juliet Jan 2 '10 at 6:32
While stock fluctuation might not be completely random I would argue that to take advantage of them you need to be better than the next (Very well funded) guy. --- As to trying to predict things mathematically; In doing that, what benefit do you generate for the the world at large in exchange for the money you get? Put another way, how would the rest of the world be worse off by you not making those trades? Even if you can make money at it, it ends up being s something for nothing exchange (OTOH the ethics of it are a topic for a different forum). –  BCS Jan 2 '10 at 21:56
A problem with dividends, is that typically the stock falls in value just as the dividend is due, so you can't simply sell the moment you get your dividend. At least that's what I am told. –  Mr. Boy Mar 24 '10 at 17:23

The problem is that you are trying to predict something where you don't have enough variables in your system.

You have a stock price that is without any context, so, did the stock go up or down because of a competitor? Perhaps there is a new competitor that stumbled, so the stock went up, but, should the competitor get their act together it could severely depress your company's stock.

If you company is a company that does outsourcing. If you don't take into account how the market rules can change then your prediction is going to be off, as, if companies have to pay extra taxes for outsourcing, then that will see a shift in resources.

Then you have weather and natural disaster events that can cause the stock to change drastically.

What you may want to do is to create a simulator, and the more variables you can include in your simulator the better off you are.

For example, what are the chances that an NFL strike can happen, as, you may find that you sell products to companies that sell to NFL teams, then that may impact your sales, so stock price.

You can model with a neural network, and it can come up with some way to accurately predict the past stock valuations, given a point in time, but it will not be any more accurate for future prices than a random walk would do, as it is a guess.

A simulator will give a range, given if certain conditions are met, then it's predictions may be closer, IMO.


I don't believe a NN would be a good choice, since there is no way to test, after training, to see if the results are correct, unless you train up until June 2009, then pick values after that to see how well it did.

Using fuzzy logic may be your best bet, as it seems to deal with unknowns, but, you will probably want to get a range for the possible stock price.

If you are using web semantics, you may want to use some data mining, and see if you can determine what events may be the main predictor of a stock price change, then a neural network may be more useful.

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Yes. Adding more variables would probably improve its prediciton quality, but this is not my main concern. –  mrlinx Jan 2 '10 at 0:12
@mrlinx - The problem is that as you add more variables, there are too many unknowns for a neural network to have any level of accuracy, but a simulator may give a spread given certain pre-conditions. You have no way to know that the neural network is trained well until you test on future results, whereas if you are testing if it understanding speaking words you can train it, then test on other speakers. –  James Black Jan 2 '10 at 0:37
It is standard neural network training to give it portions of the known dataset and see how it does on the other portions. That is exactly how one can 'test' whether a neural network is 'correctly trained'. For the purposes stated in the OP, the test is to watch it for a few months and see how it does. You basically argued against neural networks on the basis that they use incomplete knowledge and can only be tested by matching them to empirical results when this is exactly what the OP wants. –  Clueless Jan 2 '10 at 4:26
@Clueless - I just think that there are better ways to have a chance to be more accurate, as a NN would be guessing, basically. But, if he found some variables that are better predictors then it may have a better chance of being closer to being correct. –  James Black Jan 2 '10 at 4:41
"I don't believe a NN would be a good choice, since there is no way to test, after training, to see if the results are correct" - eh? Train it on 10 years of data to 2005 and then predict 2006-10. Add 2006 data and predict 2007-10, etc. –  Mr. Boy Mar 24 '10 at 17:25

If you are just doing this as an experiment and don't plan on actually buying stocks, I would breed (GA) decision/equation trees or neural nets taking into account several stocks or categories of stocks. Things I would look for are where changes in trends of one stock tend to effect others stocks.

(p.s. This will only be useful for short range speculation and for that case, it should be pointed out that actual buying the stock in question could have a large enough effect to kill any profit to be had from the market. I have no idea how purchase orders would effect the market and the only way to find out would be to buy and see.)

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Stock price prediction has more to do with Behavioral Psychology than statistical analysis of the historical data. If you have an appropriate random sample of stock holders and ask them to rank the top 10 stock in their portfolio constantly (in a Twitter like manner) the relative ranking of each stock will give you the best possible basis for prediction.

0 and 1 polarity for news only tells if the news is good or bad not better or worse (or best or worst). That is why ranking is so important. There is an ancient Persian story which goes like this: Two philosophers were having a discourse about the definition of "intelligence". One suggested the "ability to distinguish between good and bad". The other pointed out that even animals distinguish between those who feed them and those who beat them and suggested that "intelligence is the ability to distinguish between 2 good and 2 bad in order to choose the better of 2 good and the lesser of 2 bad".

Even if we assume stock prices are the outcome of pure rational thought and free of emotions. It is the real-time comparative price in a portfolio that really counts.

I honestly think this problem does not compute.

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I just loved it, +1. –  Alix Axel Jan 2 '10 at 1:46

What you're tyring to do is called technical analysis. Bascially trying to predict the future price of a stock regardless of a company's environment, but focusing only on "the numbers." Taken to the extreme, technical analysis only considers movement of the stocks. If this is what you are trying to do (predict a stock's price based on past prices and such) the perhaps something closer to trend analysis is what you are looking for.

If you do a search for technical analysis you'll find a wealth of information on it, as well as some tutorials.

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Have you seen http://predictwallstreet.com/ ? It leverages a weighted average of the collective input of netizens to make predictions.

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That would be useful if we could reasonably assume (without bursting into laughter) that the dilettantes, trolls, amateur enthusiasts, and occasional serious trader that happens across the website are a useful representation of the same crowd that makes up the real market. –  CosmicComputer Jul 23 '12 at 17:23
price = price * rand()/(float)RAND_MAX;

is also pretty good.

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/me buys stock ;P –  Alix Axel Jan 2 '10 at 0:54
fixed ! - you can tell I worked on Wall St in the predictions dept! –  Martin Beckett Jan 2 '10 at 0:57
/me sells short in your stock! grin –  Chip Uni Jan 2 '10 at 1:34

I thought I would elaborate more on my feedback on your question.

  1. It doesn't really matter much what learning algorithm you use. You can use decision trees, neural nets, whatever. Doesn't matter much what algorithm it uses, so use something simple and basic.

  2. What IS important are the features. You probably need some deductive part to basically construct some good features for input. This is because all learning algorithms are kind of dumb, and aren't going to figure out complex relationships between data points. So, you have to think of what will be relevant, and then construct derived features for it.

  3. An example: suppose PE ration is relevant. You can construct this feature easily, from 2 basic features price and earnings, by calculating PE = P/E.

  4. Suppose that you realize that the uptrend of a stock is significant. You might calculate the last 4 days of prices, and if they are all monotonically ascending, forming roughly a line, with a slope of x, then you might create a feature with value x as an input. if they fail the above criteria, you can just set x to 0.

Anyways, if you have good features, pretty much any of the learning algorithms will learn well. If not, none of them will. So, that is where you should invest your time.

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Using the current price as a prediction of future price is probably more accurate than any fancy system. That's the underlying assumption behind the Black-Scholes option pricing model, for example.

If you're just looking to play around, you might take a look at SQL Server Data Mining; it has some cool features for predicting against time sequences. It uses a hybrid of decision trees and autoregression ("AutoRegresion Tree").

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Algorithm quality is generally measured by variance of predicted vs. actual. Even though this is a school project, if future values are random, then one AI algorithm is really just as good as any other--and none are better than a guess or a constant value. –  RickNZ Jan 2 '10 at 0:45

I think you should use existing and well-understood technical and fundamental indicators (rsi, adx, cci, moving averages, etc), and then optimize and combine them into a final trading system by using genetic programming or gene expression programming. This generates for you a complete computer program, like: if(rsi crossed 20% and ema(15) > ema(50)) then buy at market price. Looking at this program gives you good understanding what works and what doesn't, and why.

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Stock analysis using existing computer algorithms is not a true predictor. We live in a world market more and more every day. The slightest political problem can send a stock tumbling without any reason other than that. How can a stock predictor take this into account? You would need to keep track of the news in every country that has an effect on the market and be able to analyze the significance. Then, there are nations that do not have adequate publicized news sources to provide this information even if you could program to do an analysis of it. No software I know of has this capability. A school project would not be within the scope of writing this elaborate software. Stick with something simple.

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Since your AI system has to 'learn' over a prolonged period, the only way you can do this is take into account as newer variables are introduced - each with a positive or negative bias. Some things will however, always be one-off constants, like you dumping all your stock for fun.

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Stock price changes might well be what AI people call "maximally perverse"; a function where just randomly trying things is as good a way to get results as anything.

As I understand it, there are two ways to make money in the stock market:

  1. Try and predict when a stock will go up bit and try and hold it during that period.
  2. Do lots of research (a.k.a. calling people on the phone and talking to them) to find companies that will produce a profit in the near (months) or not so near (years) future.

I think it would be a bad idea to try and write a program to do either of these because;

  1. For the first option (pure speculation), you are in effect trying to get money while making NO contribution to society or the economy. (If you just put your money in the a bag under your pillow, the world would be no worse off.) I believe that this makes option 1 unethical.
  2. For the second option (research) it should be clear that even if this is possible, it would be EXTREMELY hard to do. And I'm not talking about super clever people hard, but rather it might be harder than building the Google search index and might rack up a power bill of thousands of dollars a day just to feed the data gathering hardware.
  3. Also, if you do try either of these, you will be competing (yes, it is a competition and the score cards are totaled in $ with the looses loosing money) with companies with Millions if not Billions to dump into it and the ability to find the best programmers in the world. If you stood a fart in a hurricane's chance of making a cent by yourself, the people who you will be competing with would already be offering you a job.
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After reading your update: The above is now for people who find this and ARE trying to make money. OTOH, I still think your sunk because the bulk of the information that you need is one off kinds of events so looking at what caused old data will be of little value to predict future events. –  BCS Jan 2 '10 at 0:41
Exactly right. One root cause for the mortgage debacle in the US was using mortgage data from 20-50 years ago to predict future default rates. There were two problems: (1) This assumed that defaults weren't correlated in any way, and (2) It ignored the fact that the rules had changed substantially from the way it was done in the past, so the old data didn't apply. Extrapolation is a dangerous thing. –  duffymo Jan 2 '10 at 1:30
"Stock price changes might well be what AI people call "maximally perverse"; a function where just randomly trying things is as good a way to get results as anything." -- ummmm... citation needed. –  Juliet Jan 2 '10 at 1:45
This idea of predicting a "maximally perverse" function is somewhat akin to Rock-Paper-Scissors in that extreme short-term trading (like your option 1.) is not easily related to anything except the behaviors of your competitors. In Rock-Paper-Scissors there is no 'systematic' way to get better than guessing randomly and yet games.cs.ualberta.ca/~darse/rsbpc.html exists. –  Clueless Jan 2 '10 at 4:56

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