Error occured ! We are notified and will try and resolve this as soon as possible.
WARNING! [2] file_put_contents(/home/gelembjuk/domains/myeducationpath.com/app/../html/cache/memory/course_22954_0_e086762d743c0218beb85ea6e1b456cae.txt): failed to open stream: No such file or directory . Line 75 in file /home/gelembjuk/domains/myeducationpath.com/html/include/class.cache.php. Continue execution. 1700647; index.php; 216.73.216.221; GET; url=courses/22954/probability-distribution-models-continuous-random-variables.htm&; ; Mozilla/5.0 AppleWebKit/537.36 (KHTML, like Gecko; compatible; ClaudeBot/1.0; +claudebot@anthropic.com); ; Executon time: 0 MyEducationPath.com :: edX : Probability: Distribution Models & Continuous Random Variables

Probability: Distribution Models & Continuous Random Variables

0 votes
Free Closed [?]
Probability: Distribution Models & Continuous Random Variables

In this statistics and data analysis course, you will learn about continuous random variables and some of the most frequently used probability distribution models including, exponential distribution, Gamma distribution, Beta distribution, and most importantly, normal distribution.



You will learn how these distributions can be connected with the Normal distribution by Central limit theorem (CLT). We will discuss Markov and Chebyshev inequalities, order statistics, moment generating functions and transformation of random variables.



This course along with the recommended pre-requisite, Probability: Basic Concepts & Discrete Random Variables, will you give the skills and knowledge to progress towards an exciting career in information and data science.



 





 
The Center for Science of Information, a National Science Foundation Center, supports learners by offering free educational resources in information science.


Categories:
Starts : 2017-01-30

Comments

Alternatives

-- no alternatives found for the course --
If you know any alternatives, please let us know.

Prerequisites

-- no prerequsites found for the course --
If you can suggest any prerequisite, please let us know.

Paths

No Paths inclusing the course. You can build and share a path with this course included.

Certification Exams

-- there are no exams to get certification after this course --
If your company does certification for those who completed this course then register your company as certification vendor and add your exams to the Exams Directory.

Similar courses

Courses related to the course subject

《Java程序设计》课程是使用Java语言进行应用程序设计的课程,针对各专业的大学本科生开设。课…

4G is the cutting-edge network technology that links millions of smartphones to the internet. But how does it actually work? Ideal…

SQL is the language of all databases, this course offers an easy way to master the SQL fundamentals…

Have you ever wondered how information is transmitted using your mobile phone or a WiFi hotspot? This introductory course seeks to…

Have you ever wondered how information is transmitted using your mobile phone or a WiFi hotspot? This introductory course seeks to…

Have you ever wondered how information is transmitted using your mobile phone or a WiFi hotspot? Gain an understanding of the basi…

DevOps is the union of people, process and products to enable the continuous delivery of value to end users. It is not only about…

En este curso trabajarás la definición, el desarrollo y el cierre de un proyecto de Tecnologías de la Informaci&oac…

This is a graduate course on the design and analysis of algorithms, covering several advanced topics not studied in typical introd…

Gain a deeper understanding of Spark by learning about its APIs, architecture, and common use cases. This statistics and data ana…

Let us know when you did the course Probability: Distribution Models & Continuous Random Variables.

Started on: Completed on:
Your grade (if any):
Comments:

Add the course Probability: Distribution Models & Continuous Random Variables to My Personal Education Path.

Start the course on:
Duration of study:
Notes:

Successfully added to your path.

View your path

Select what exam to connect to the course. The course will be displayed on the exam page in the list of courses supported for certification with the exam.


Notes about how the exam certifies students of the course (optional):