Probabilistic Systems Analysis and Applied Probability

Probabilistic Systems Analysis and Applied Probability Prof. John Tsitsiklis via MIT

Intermediate 0(0 Ratings) 0 Students enrolled
Created by Massachusetts Institute of Technology Staff Last updated Sat, 26-Feb-2022 English


Probabilistic Systems Analysis and Applied Probability free videos and free material uploaded by Massachusetts Institute of Technology Staff .

Syllabus / What will i learn?

Conceptual:

  • Master the basic concepts associated with probability models.
  • Be able to translate models described in words to mathematical ones.
  • Understand the main concepts and assumptions underlying Bayesian and classical inference.
  • Obtain some familiarity with the range of applications of inference methods.

More technical:

  • Become familiar with basic and common probability distributions.
  • Learn how to use conditioning to simplify the analysis of complicated models.
  • Have facility manipulating probability mass functions, densities, and expectations.
  • Understand the power of laws of large numbers and be able to use them when appropriate.
  • Develop a solid understanding of the concept of conditional expectation and its role in inference.
  • Learn how to formulate simple dynamical models as Markov chains and analyze them.
  • Become familiar with the basic inference methodologies (for both estimation and hypothesis testing) and be able to apply them.


Curriculum for this course
0 Lessons 00:00:00 Hours
+ View more
Description

This course introduces students to the modeling, quantification, and analysis of uncertainty.  The tools of probability theory, and of the related field of statistical inference, are the keys for being able to analyze and make sense of data. These tools underlie important advances in many fields, from the basic sciences to engineering and management.

You need online training / explanation for this course?

1 to 1 Online Training contact instructor for demo :


+ View more

Other related courses
Updated Wed, 22-Apr-2020
Updated Wed, 24-Feb-2021
Updated Wed, 22-Apr-2020
Updated Thu, 30-Apr-2020
About the instructor
  • 0 Reviews
  • 1 Students
  • 179 Courses
Student feedback
0
Average rating
  • 0%
  • 0%
  • 0%
  • 0%
  • 0%
Reviews

Material price :

Free

1:1 Online Training Fee: 1 /-
Contact instructor for demo :