DiscoverIEE 475: Simulating Stochastic SystemsLecture G2 (2024-10-22): Input Modeling, Part 2: Selection of Model Structure
Lecture G2 (2024-10-22): Input Modeling, Part 2: Selection of Model Structure

Lecture G2 (2024-10-22): Input Modeling, Part 2: Selection of Model Structure

Update: 2024-10-22
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In this lecture, we continue discussing the choice of input models in stochastic simulation. Here, we pivot from talking about data collection to selection of the broad family of probabilistic distributions that may be a good fit for data. We start with an example where a histogram leads us to introduce additional input models into a flow chart. The rest of the lecture is about choosing models based on physical intuition and the shape of the sampled data (e.g., the shape of histograms). We close with a discussion of probability plots – Q-Q plots and P-P plots, as are used with "fat-pencil tests" – as a good tool for justifying the choice of a family for a certain data set. The next lecture will go over the actual estimation of the parameters for the chosen families and how to quantitatively assess goodness of fit.

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Lecture G2 (2024-10-22): Input Modeling, Part 2: Selection of Model Structure

Lecture G2 (2024-10-22): Input Modeling, Part 2: Selection of Model Structure

Theodore P. Pavlic