- Stock market prediction
Stock market prediction is the act of trying to determine the future value of a company
stock or otherfinancial instrument traded on afinancial exchange . The successful prediction of a stock's future price could yield significant profit. Some believe that stock price movements are governed by therandom walk hypothesis and thus are unpredictable. Others disagree and those with this viewpoint possess a myriad of methods and technologies which purportedly allow them to gain future price information.The random walk hypothesis
When applied to a particular financial instrument, the
random walk hypothesis states that the price of this instrument is governed by arandom walk and hence is unpredictable. If therandom walk hypothesis is false then there will exist some (potentiallynon-linear )correlation between the instrument price and some other indicator(s) such astrading volume or the previous day's instrument closing price. If this correlation can be determined then a potential profit can be made.Prediction methods
Prediction methodologies fall into three broad categories which can (and often do) overlap. They are
fundamental analysis ,technical analysis (charting) and technological methods.Fundamental analysis
Fundamental Analysts are concerned with the company that underlies the stock itself. They evaluate a company's past performance as well as the credibility of its
accounts . Many performance ratios are created that aid the fundamental analyst with assessing the validity of a stock, such as theP/E ratio .Warren Buffett is perhaps the most famous of all Fundamental Analysts.Technical analysis
Technical analysts or chartists are not concerned with any of the company's fundamentals. They seek to determine the future price of a stock based solely on the (potential) trends of the past price (a form of
time series analysis ). Numerous patterns are employed such as thehead and shoulders orcup and saucer . Alongside the patterns, statistical techniques are utilised such as theexponential moving average (EMA).Technological methods
With the advent of the
digital computer , stock market prediction has since moved into the technological realm. The most prominent technique involves the use ofartificial neural networks (ANNs). ANNs can be thought of asmathematical function approximators. Their value in stock market prediction is that if a (potentially non-linear) relationship exists then it is possible that it could be found with enough indicators, the correct network structure and a large enough dataset.The most common form of ANN in use for stock market prediction is the
feed forward network utilising thebackward propagation of errors algorithm to update the network weights. These networks are commonly referred to as "back propagation networks ". Since NNs require training and have a large parameter space, it is useful to modify the network structure for optimal predictive ability. Recently this has involved pairing NNs withgenetic algorithm s, a method of finding optima in multi-dimension parameter spaces utilising the biological concepts ofevolution andnatural selection .Moreover, some researchers have tried to extract meaningful indicators from the news flash and discussion rooms about a certain stock usingData Mining techniques. But the people can have different opinion about the same stock at the same time.Validity
There have been numerous academic studies on the validity of
fundamental analysis ,technical analysis andArtificial Neural Network s as stock market prediction methods. Some studies report success in all camps, on particular markets and with particular datasets. Others dispute the ability to even predict the stock market at all and adhere to therandom walk hypothesis . In fact the theory of pricingfinancial derivatives relies on the random walk hypothesis (stock prices are usually modelled as random walks in derivative pricing models).References
*Graham, B. "The Intelligent Investor" HarperCollins; Rev Ed edition, 2003.
*Lo, A.W. and Mackinlay, A.C. "A Non-Random Walk Down Wall Street" 5th Ed. Princeton University Press, 2002.
*Azoff, E.M. "Neural Network Time Series Forecasting of Financial Markets" John Wiley and Sons Ltd, 1994.
*StockMarketPrediction Blog at blogger
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