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Philosophy of Data Science | S02 E04 | Intro to Abductive Reasoning for Data Scientists

Philosophy of Data Science | S02 E04 | Intro to Abductive Reasoning for Data Scientists

FromData & Science with Glen Wright Colopy


Philosophy of Data Science | S02 E04 | Intro to Abductive Reasoning for Data Scientists

FromData & Science with Glen Wright Colopy

ratings:
Length:
20 minutes
Released:
Nov 9, 2020
Format:
Podcast episode

Description

Philosophy of Data Science Series 
Session 2: Essential Reasoning Skills for Data Science
Episode 4: Intro to Abductive Reasoning for Data Scientists
Watch it on... 
YouTube: https://youtu.be/SzQn9SPVhRU
Podbean: https://podofasclepius.podbean.com/e/philosophy-of-data-science-s02-e04-intro-to-abductive-reasoning-for-data-scientists/
The third and final of our (planned) short tutorials on key modes of critical reasoning. Abduction is common called "inference to the best explanation"...so it's easy to see why this concept is important for data scientists. 
Huub Brouwer (Utrecht University) walks us through a brief tutorial on how even a world-famous infer-er can get this wrong and how data scientists can avoid the same mistake.
You can join our mail list at: https://www.podofasclepius.com/mail-list
We're always happy to hear your feedback and ideas - just post it in the YouTube comment section to start a conversation. 
Thank you for your time and support of the series! 
0:00 Intro
0:18 Example of Abduction in Action
4:55 Definition of Abduction
6:21 Applying Abductive Reasoning
8:35 Why is Abduction Not Deduction?
14:55 Abduction in Data Sciences
17:40 Conclusion
Released:
Nov 9, 2020
Format:
Podcast episode

Titles in the series (88)

Data and Science with Glen Wright Colopy is a podcast covering critical scientific reasoning, particularly from a data science / machine learning / statistics perspective. Episodes typically focus on understanding of how to be better scientists and critical thinkers for the practical purpose of being a better data scientists. Previously called: ”Pod of Asclepius”