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말뭉치

  1. Given to the world by the American mathematician, philosopher, and founder of cybernetics Norbert Wiener, it is called, naturally enough, the Wiener process.[1]
  2. The next major concept to absorb on the path to understanding Wiener processes is that of the Gaussian process.[1]
  3. The Wiener process plays an important role in both pure and applied mathematics.[2]
  4. In pure mathematics, the Wiener process gave rise to the study of continuous time martingales.[2]
  5. The Wiener process has applications throughout the mathematical sciences.[2]
  6. A third characterisation is that the Wiener process has a spectral representation as a sine series whose coefficients are independent N(0, 1) random variables.[2]
  7. Wiener process (also called Brownian motion) is a stochastic process {Wt}t0+ indexed by nonnegative real numbers t with the following properties: (1) W0 = 0.[3]
  8. A Wiener process with initial value W0 = x is gotten by adding x to a standard Wiener process.[3]
  9. First, it explains, at least in part, why the Wiener process arises so commonly in nature.[3]
  10. It is advisable, when confronted with a problem about Wiener processes, to begin by reecting on how scaling might affect the answer.[3]
  11. The Wiener process plays an important role both in pure and applied mathematics.[4]
  12. The Wiener process can be constructed as the scaling limit of a random walk, or other discrete-time stochastic processes with stationary independent increments.[4]
  13. The Wiener measure is the probability law on the space of continuous functions g, with g(0) = 0, induced by the Wiener process.[4]
  14. Wiener process includes two parameters called drift rate \( \alpha \) that represent trend and degree of volatility \( \sigma \).[5]
  15. Figure above shows the comparison of Wiener process and random walk.[5]
  16. The Wiener process is using zero drift and the unit standard deviation to make it the same parameter with the random walk.[5]
  17. In general, Wiener process has much higher spread because of the factor of the square root of time.[5]
  18. This is why the Brownian motion is also called the Wiener process.[6]
  19. Solve Stochastic Dierential Equations with Stochastic Integral This chapter introduces the stochastic process (especially the Wiener process), Itos Lemma, and the stochastic intergral.[7]

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  • [{'LOWER': 'wiener'}, {'LEMMA': 'process'}]