Author - Duncan McQueen 
 The latest buzz in the Forex world is neural networks, a term taken  from the artificial intelligence community. In technical terms, neural  networks are data analysis methods that consist of a large number of  processing units that are linked together by weighted probabilities. In  more simple terms, neural networks are a model loosely resembling the  way that the human brain works and learns. For several decades now,  those in the artificial intelligence community have used the neural  network model in creating computers that 'think' and 'learn' based on  the outcomes of their actions.  
 Unlike the traditional data structure, neural networks take in  multiple streams of data and output one result. If there's a way to  quantify the data, there's a way to add it to the factors being  considered in making a prediction. They're often used in Forex market  prediction software because the network can be trained to interpret data  and draw a conclusion from it.   
 Before they can be of any use in making Forex predictions,  neural networks have to be 'trained' to recognize and adjust for  patterns that arise between input and output. The training and testing  can be time consuming, but is what gives neural networks their ability  to predict future outcomes based on past data. The basic idea is that  when presented with examples of pairs of input and output data, the  network can 'learn' the dependencies, and apply those dependencies when  presented with new data. From there, the network can compare its own  output to see how close to correct the prediction was, and go back and  adjust the weight of the various dependencies until it reaches the  correct answer.  
 This requires that the network be trained with two separate data  sets — the training and the testing set. One of the strengths of neural  networks is that it can continue to learn by comparing its own  predictions with the data that is continually fed to it. Neural networks  are also very good at combining both technical and fundamental data,  thus making a best of both worlds scenario. Their very power allows them  to find patterns that may not have been considered, and apply those  patterns to prediction to come up with uncannily accurate results.   
 Unfortunately, this strength can also be a weakness in the use  of neural networks for trading predictions. Ultimately, the output is  only as good as the input. They are very good at correlating data even  when you feed them enormous amounts of it. They are very good at  extracting patterns from widely disparate types of information — even  when no pattern or relationship exists. Its other major strength — the  ability to apply intelligence without emotion — after all, a computer  doesn't have an ego — can also become a weakness when dealing with a  volatile market. When an unknown factor is introduced, the artificial  neural network has no way of assigning an emotional weight to that  factor.  
 There are currently dozens of Forex trading platforms on the  market that incorporate neural network theory and technology to 'teach'  the network your system and let it make predictions and generate  buy/sell orders based on it. The important thing to keep in mind is that  the most basic rule of Forex trading applies when you set out to build  your neural network — educate yourself and know what you're doing.  Whether you're dealing with technical analysis, fundamentals, neural  networks or your own emotions, the single most important thing you can  do to ensure your success in Forex trading is to learn all you can. 
 
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