āĻĒāϰāĻŦāĻ°ā§āϤ⧀ āφāϏāϛ⧇

Statistics - A Full University Course on Data Science Basics

2 āĻ­āĻŋāĻ‰Âˇ 18/01/25
Oligaji
Oligaji
2 āϏāĻžāĻŦāĻ¸ā§āĻ•ā§āϰāĻžāχāĻŦāĻžāϰ
2
āĻ­āĻŋāϤāϰ⧇ Educational

Learn the essentials of statistics in this complete course. This course introduces the various methods used to collect, organize, summarize, interpret and reach conclusions about data. An emphasis is placed on demonstrating that statistics is more than mathematical calculations. By using examples gathered from real life, students learn to use statistical methods as analytical tools to develop generalizations and meaningful conclusions in their field of study.

đŸŽĨ Course by Monika Wahi.
🔗 These lectures are based on the textbook Understanding Basic Statistics, 6th Edition, by Brase & Brase, available here: https://www.amazon.com/Underst....anding-Basic-Statist
🔗 Monika Wahi's LinkedIn Learning courses are here: https://www.linkedin.com/learn....ing/instructors/moni
🔗 Visit Monika Wahi's web page here: http://www.dethwench.com/
🔗 Monika Wahi's peer-reviewed articles listed here: https://scholar.google.com/citations?user=v3BDf1oAAAAJ&hl=en

â­ī¸ Course Contents â­ī¸
âŒ¨ī¸ (0:00:00) What is statistics
âŒ¨ī¸ (0:33:34) Sampling
âŒ¨ī¸ (1:21:20) Experimental design
âŒ¨ī¸ (2:00:32) Randomization
âŒ¨ī¸ (2:16:25) Frequency histogram and distribution
âŒ¨ī¸ (2:35:58) Time series, bar and pie graphs
âŒ¨ī¸ (3:10:10) Frequency table and stem-and-leaf
âŒ¨ī¸ (3:39:41) Measures of central tendency
âŒ¨ī¸ (4:11:56) Measure of variation
âŒ¨ī¸ (4:58:35) Percentile and box-and-whisker plots
âŒ¨ī¸ (5:24:58) Scatter diagrams and linear correlation
âŒ¨ī¸ (6:39:54) Normal distribution and empirical rule
âŒ¨ī¸ (7:05:39) Z-score and probabilities
âŒ¨ī¸ (7:45:11) Sampling distributions and the central limit theorem

--

Learn to code for free and get a developer job: https://www.freecodecamp.org

Read hundreds of articles on programming: https://www.freecodecamp.org/news

āφāϰ⧋ āĻĻ⧇āϖ⧁āύ

 0 āĻŽāĻ¨ā§āϤāĻŦā§āϝ sort   āĻ•ā§āϰāĻŽāĻžāύ⧁āϏāĻžāϰ


āĻĒāϰāĻŦāĻ°ā§āϤ⧀ āφāϏāϛ⧇