Topic Brief: 0:00 Recording start 0:48 Lecture begins 2:16 The logistics of the course 5:05 Website (main) 9:48 Pre-requisites 15:40 Reading ... 0:00 Recording starts 1:19 Mid-term exam announcements 5:05 Misra-Gries (example) 32:09 A sketch algorithm (intuition) 39:11 ...
Data Mining Spring 2023 Statistical Principles -
0:00 Recording start 0:48 Lecture begins 2:16 The logistics of the course 5:05 Website (main) 9:48 Pre-requisites 15:40 Reading ... 0:00 Recording starts 1:19 Mid-term exam announcements 5:05 Misra-Gries (example) 32:09 A sketch algorithm (intuition) 39:11 ... 0:00 Recording starts 0:32 Lecture starts 0:44 Announcements 10:35 Motivation 11:13 IID assumptions 18:50 Notation (today) ...
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- 0:00 Recording start 0:48 Lecture begins 2:16 The logistics of the course 5:05 Website (main) 9:48 Pre-requisites 15:40 Reading ...
- 0:00 Recording starts 1:19 Mid-term exam announcements 5:05 Misra-Gries (example) 32:09 A sketch algorithm (intuition) 39:11 ...
- 0:00 Recording starts 0:32 Lecture starts 0:44 Announcements 10:35 Motivation 11:13 IID assumptions 18:50 Notation (today) ...
- Google Tech Talks July 10, 2007 ABSTRACT Lecture 5 This is the Google campus version of
- Just after a break right so this is an imperfect kind of model of everything in
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