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An introduction to Taiwan market by using Markov model

An introduction to Taiwan market by using Markov model. • models • examples • the kernel density estimation. 股票 價格. 紅線 :S t 黑線 :X t. ρ + (x 2 ). ρ + (x 1 ). ρ + (x). ρ - (x 1 ). ρ - (x). ρ - (x 2 ). 第一天 收盤價. 第二天 收盤價. 第三天 收盤價. Markov model { X n }.

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An introduction to Taiwan market by using Markov model

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  1. An introduction to Taiwan market by using Markov model • models • examples • the kernel density estimation

  2. 股票 價格 紅線:St 黑線:Xt ρ+(x2) ρ+(x1) ρ+(x) ρ-(x1) ρ-(x) ρ-(x2) 第一天 收盤價 第二天 收盤價 第三天 收盤價

  3. Markov model {Xn}

  4. St :表示沒有上下限的股票價格且它的 generator是

  5. 股票價格 Xt 開盤價 x St 第一天收盤價

  6. 股票價格 開盤價 x Xt St 第一天收盤價

  7. 股票價格 開盤價 x St≡Xt 第一天收盤價

  8. Examples • Binary model (Cox-Ross-Rubinstein)

  9. Binary model • {Xn} is a martingale • If the state space of {Xn} is R+,then lim Xn =0. • If the state space of {Xn} is R,then {Xn} is recurrent.

  10. European call

  11. Example

  12. European call

  13. Optimal stopping time

  14. Kernel density estimation

  15. Positive recurrent Markov chain

  16. Steps of the kernel density estimation • estimate q(x,y) such that pc(x,y)=q(x,y)dy • estimate Q+(x) such that pd(x,dy)=Q+(x)δρ+(dy) • estimate Q-(x) such that pd(x,dy)=Q-(x)δρ-(dy) • define estimators

  17. Kernel density estimator

  18. Another density estimator

  19. 敬請批評指教

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