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Lecture 4.2: Cumulative distribution function 

IIT Madras - B.S. Degree Programme
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27 июл 2024

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Комментарии : 7   
@avenumadhav3568
@avenumadhav3568 3 года назад
CDF definition: 1:05 2:05 (note) properties: 3:00(I) 4:13(II) 4:48(III) example1: 6:26 8:35 example2: 11:36 pmf to cdf: 13:30 cdf to pmf: 13:44 (how much did jump by) no jump: 14:25: important skill: 15:14 example3: 16:18 17:20 example4: 18:24 19:45(visualize) probability of intervals: 20:11
@Gaurav_Himanshu
@Gaurav_Himanshu 4 месяца назад
This degree is 1000 times better than IGNOU and SOL degree
@-oo295
@-oo295 5 месяцев назад
The people who think that this degree course is worth it or not for our time !! leave a comment ( especially degree level students) Wanna see the majority
@JEMAR_CHILIN
@JEMAR_CHILIN 5 месяцев назад
Why would a degree level student check a foundational level video?
@-oo295
@-oo295 5 месяцев назад
@@JEMAR_CHILIN for revision
@nighteagle5529
@nighteagle5529 9 месяцев назад
Tomorrow is exam studying prev evening
@yolomegatron8633
@yolomegatron8633 25 дней назад
Nobody asked tho
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