Implementation of Model 4 explained in the paper "Trend without Hiccups"
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Updated
Jan 6, 2017 - R
Implementation of Model 4 explained in the paper "Trend without Hiccups"
Big Data Implementations - Quantitative_Research
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Open source momentum base trend following systematic trading strategies inspired from top trend following traders (Richard Denis, Olivier Seban and Nick Radge) implemented for various trading platforms as TradingView, cTrader, Multicharts and TradeStation.
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Based on the concepts in "CIMTR" and others, swing trading
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QuantStart.com - QSTrader backtesting simulation engine.
Analysis on systematic trading strategies (e.g., trend-following, carry and mean-reversion). The result is regularly updated.
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