Monte Carlo integration

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  • In Monte Carlo integration the integral to be calculated is estimated by a random value.[1]
  • The hit-or-miss Monte Carlo integration directly uses the interpretation of the integral as area.[1]
  • Monte Carlo integration is a method for using random sampling to estimate the values of integrals.[2]
  • Beating Monte Carlo Integration: a Nonasymptotic Study of Kernel Smoothing Methods.[3]
  • In this tutorial we will look at using Monte Carlo integration to draw from a bivariate normal distribution.[4]
  • Monte Carlo integration is a simple but rarely feasible method for estimating parameters using an assumed posterior distribution.[4]
  • The difficulty of Monte Carlo integration is that it requires that the posterior distribution can be directly drawn from.[4]
  • To better understand the behavior of our Monte Carlo integration, we can plot the posterior distribution of our parameters.[4]
  • Keep in mind that Monte Carlo integration is particularly useful for higher-dimensional integrals.[5]
  • However, we can extend Monte Carlo integration to random variables with arbitry PDFs.[6]
  • In mathematics, Monte Carlo integration is a technique for numerical integration using random numbers.[7]
  • Monte Carlo integration, on the other hand, employs a non-deterministic approach: each realization provides a different outcome.[7]
  • This chapter describes routines for multidimensional Monte Carlo integration.[8]
  • This data type defines a general function with parameters for Monte Carlo integration.[8]
  • This function allocates and initializes a workspace for Monte Carlo integration in dim dimensions.[8]

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Spacy 패턴 목록

  • [{'LOWER': 'monte'}, {'LOWER': 'carlo'}, {'LEMMA': 'integration'}]