Applications of Stochastic Processes in Asset Price Modeling - PowerPoint PPT Presentation

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Applications of Stochastic Processes in Asset Price Modeling

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Applications of Stochastic Processes in Asset Price Modeling. Preetam D'Souza. Introduction ... Assumes that stock price returns ... Inherent unreliability ... – PowerPoint PPT presentation

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Title: Applications of Stochastic Processes in Asset Price Modeling


1
Applications of Stochastic Processes in Asset
Price Modeling
  • Preetam DSouza

2
Introduction
  • Stock market forecasting
  • Investment management
  • Financial Derivatives
  • Options
  • Mathematical modeling

3
Purpose
  • Examine different stochastic (random) models
  • Test models against empirical data
  • Ascertain accuracy and validity
  • Suggest potential improvements

4
Hypothesis
  • Stochastic methods will be close to accurate
  • Average several runs
  • Calibrate models

5
Background
  • Mathematically-oriented articles
  • Theoretical nature
  • Few examples of numerical evidence

6
Stochastic Processes?
  • Random or pseudorandom in nature
  • Future based on probability distributions
  • Sequence of random variables

7
Brownian Motion
  • Follows Markov chain
  • Based on random walk
  • Wiener Process (Wt)
  • Continuous time
  • Draws values from normal distribution

8
Brownian Motion SDE
  • St stock price
  • µ drift (mean)
  • s volatility (variance)
  • Assumes stock price follows stochastic process
  • Notice any problems?
  • Stock price may go negative

9
Geometric Brownian Motion (GBM)
  • No more negative values
  • Assumes that stock price returns follow
    stochastic process

10
Procedure
  • Implement Brownian motion models in Java
  • 3 Inputs to Model
  • Drift
  • Volatility
  • Time steps
  • Run models for 1 year
  • Compare with empirical data

11
Testing
  • Blue chip IBM
  • Historical data freely available
  • Yahoo ! Finance
  • Compare simulated run with historical data
  • Accuracy tests
  • Root Mean Squared Deviation

12
Simulated Run
  • IBM simulated run given initial price in January
    2000
  • One year
  • 255 trading days
  • Drift 5 (risk-free rate)
  • Volatility 0.2

13
Simulated Run (contd.)
  • IBM simulation with 3 simultaneous runs
  • Compare with empirical data (red, solid line)
  • Ending prices are very close
  • Note that this run is for January 1990-1991

14
What about predicting the future?
  • IBM simulation for bear session for January
    1991-1992
  • Note how the drift rate is still positive
  • All runs deviate from mean line and follow
    empirical price
  • Ending prices are within 10 of closing price

15
Accuracy?
  • RMSD test
  • Large vs. small values
  • RMSD 22.735 vs. 9.457 for the run on the
    previous page

16
Coincidence?
  • Google shares from April 2008-2009
  • Simulation 3 (purple) shows uncanny accuracy
  • Other simulations throw off averaged run

17
More Examples (HMC)
18
More Examples (WMT)
19
Analysis Conclusions
  • Stochastic models generate price fluctuations
    very similar to actual data
  • Uncertainty increases as time steps progress
  • Further calibrations must be made to fine tune
    models

20
Pros of Stochastic Models
  • Inputs for stochastic models can readily be
    gathered from empirical data
  • GBM model seems to fit stock price data well
  • Risk incorporation as time increases
  • Surprisingly accurate results
  • Within 10 after one year for IBM

21
Cons of Stochastic Models
  • NO guarantee of convergence
  • Past data plays a vital role in model performance
  • Do stock prices always follow historical trends?
  • There is no incorporation of current events
  • Earnings reports
  • Executive changes

22
Further development
  • Correlation statistics
  • Comprehensive simulation runs
  • Model calibration
  • Different probability distributions?
  • Different stochastic models
  • Jump Diffusion

23
So, can stochastic processes predict the stock
market?
  • Unfortunately, no.
  • Inherent unreliability
  • Stochastic models should be only a part of the
    investment decision process
  • Useful when used with traditional equity analysis
  • Powerful tool for complex option pricing
    strategies
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