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Advanced Valuation Analysis Tools and Simulation Brian Stonerock CGU EMP Independent Study December Update.

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Presentation on theme: "Advanced Valuation Analysis Tools and Simulation Brian Stonerock CGU EMP Independent Study December Update."— Presentation transcript:

1 Advanced Valuation Analysis Tools and Simulation Brian Stonerock CGU EMP Independent Study December Update

2 Overview Objective: Evaluate advanced investing and valuation concepts for investments through the development of robust cutting edge platform using the latest technologies December Update  Project Plan and Progress  Technical Analysis  Technology / Data Sources  Demo  Next Steps

3 Project Plan  Research and Plan  Develop Framework – Vaadin / Java  Implement Simple Tools  Implement Stock and Technical Analysis  Connect to Historical Servers  Implement Analysis Tools Data Mining (IP) Back Casting (IP) Bubble Bursting Documentation and Deployment

4 The Potential Rewards How can market timing can benefit returns? The only problem is that you have to be very good at it…. Based on work from Norman Fosbeck 1984

5 The Potential Rewards (Cont) The benefit of being smart enough to miss the worst 5 days of the year between Feb ‘66 and Oct ‘01 Source: “The Truth About Timing,” by Jacqueline Doherty, Barron’s (November 5, 2001)

6 Technical Analysis Technical analysis: The attempt to forecast stock prices on the basis of market-derived data Technicians (also known as quantitative analysts or chartists) usually look at price, volume and psychological indicators over time Basic Tools  Trend Lines  Moving Averages  Price Patterns  Indicators  Cycles Support Resistance Breakout

7 Technical Indicators There are, literally, hundreds of technical indicators used to generate buy and sell signals We will look at just a few that I use:  SMA – Simple Moving Average  EMA – Exponential Moving Average  RSI - Relative Strength Index (by Welles Wilder) 0 to 100 measurement the speed and change of price movements, >70 overbought and <30 oversold  MFI - Money Flow Index Similar to RSI but volume weighted  CCI - Commodity Channel Index Identifies cyclical turns in commodities seeking overbought and oversold conditions

8 Technology Overview Vaadin Java / Tomcat JFreeChart Data Sources  JStock  Interactive Brokers Trader Work Station  JBookTrader http://code.google.com/p/cgu-emp

9 Technology Overview Vaadin Architecture  http://vaadin.com http://vaadin.com

10 Technology Overview Development Process

11 Technology Overview: Eclipse Dynamic Web Project

12 Data Sources Real Time & Historical Data Servers  Interactive Brokers  Yahoo EOD, ID for various all countries  Google EOD Tickers, Quotes, and more

13 Demo

14 Next Steps: Emotionless Trading Back Casting  JStockTrader Demo Bollinger Bands Example Source: Stock Market Prediction Using Online Data:Fundamental and Technical Approaches By Nikhil Bakshi (2008)

15 Next Steps (Cont): Predicting Bubbles Ideal Type 3: Irrational institutions Bubble  Principal-agent problem, where Speculators have incentives to pay higher prices than what is supported by historical patterns or strong evidence Source: Price Bubbles on the Housing Market: Concept, theory and indicators Hans Lind (2008) Ideal Type 1: Pure Speculative Bubble  Asset price today is too high and the price eventually will fall…. Speculators believe that the price will continue to rise for some time, with potential to sell with a profit before the price falls Ideal Type 2:Irrational Expectations Bubble  Speculators become overoptimistic and think the price will continue to grow rapidly. The growth is expected to outperform history or fundamentals…. Therefore it seems rational to pay a high price "the basic intuition is straightforward: if the reason that the price is high today is only because investors believe that the selling price will be high tomorrow-when "fundamental" factors do not seem to justify such a price-then a bubble exists." (Stiglitz 1990, p 13)

16 Next Steps (Cont) Bubble Equation 9 Parameter equation that requires iterative “fitting” algorithm to predict falls http://frog-numerics.com/blog/2009-12_blog.html Source: D. Sornette and A. Johansen ('Large Financial Crashes', Physica A 245,pp. 411-422, 1997)


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