FND-STA-Probability distribution
Probability Distribution
(Nature of a probability distribution, important distributions, comparing observed and simulated probability distributions, Kullback-Leibler divergence, the Kolmogorov-Smirnov test.)
Abstract:
Probability distributions are at the core of any statistical analysis, in which modelled distributions are compared with sampled distributions to relate an observation to our theoretical understanding. This unit introduces the principles, discusses Poisson, uniform, and normal distributions, and presents methods to compare distributions with each other and quantify the difference.
Objectives:
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Outcomes:
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Deliverables:
Prerequisites:
You need the following preparation before beginning this unit. If you are not familiar with this material from courses you took previously, you need to prepare yourself from other information sources:
- Calculus: functions and equations; polynomial functions, logarithms, trigonometric functions; integrals and derivatives; theorem and proof.
This unit builds on material covered in the following prerequisite units:
Contents
Evaluation
Evaluation: NA
Contents
Task:
- Open RStudio and load the
ABC-units
R project. If you have loaded it before, choose File → Recent projects → ABC-Units. If you have not loaded it before, follow the instructions in the RPR-Introduction unit. - Choose Tools → Version Control → Pull Branches to fetch the most recent version of the project from its GitHub repository with all changes and bug fixes included.
- Type
init()
if requested. - Open the file
FND-STA-Probability_distribution.R
and follow the instructions.
Note: take care that you understand all of the code in the script. Evaluation in this course is cumulative and you may be asked to explain any part of code.
About ...
Author:
- Boris Steipe <boris.steipe@utoronto.ca>
Created:
- 2017-08-05
Modified:
- 2020-09-22
Version:
- 1.0.01
Version history:
- 1.0.1 2020 Maintenance
- 1.0 New material
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