Dual Confirmation Trading System
Jeremy Konstenius, discusses a trading system for the S&P 400 index with a holographic neural network,
which is unlike the feedforward backpropagation neural network. The holographic network uses complex
numbers for data input and output from neurons, which are mathematically more complex than feedforward
network neurons. The author uses two trained networks to forecast the next day’s direction based on data for
the past 10 days. Each network uses input data that is detrended, by subtracting a moving average from the
data. Network 1 uses detrended closing values. Network 2 uses detrended High values. If both networks agree,
or confirm each other, then a trade is made. There is no trade otherwise.
Network 1 showed an accuracy of 61.9% for the five−month test period (the training period spanned two
years prior to the test period), while Network 2 also showed an accuracy of 61.9%. Using the two networks
together, Konstenius achieved an accuracy of 65.82%.
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