Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Sports
History
Education
Business
About Us
Contact Us
Copyright
© 2024 PodJoint
Loading...
0:00 / 0:00
Podjoint Logo
US
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts221/v4/75/db/da/75dbda7a-9c02-a923-c9a8-ac50c4a94f59/mza_7528638632772517919.jpg/600x600bb.jpg
Data Science Decoded
Mike E
29 episodes
5 days ago
We discuss seminal mathematical papers (sometimes really old 😎 ) that have shaped and established the fields of machine learning and data science as we know them today. The goal of the podcast is to introduce you to the evolution of these fields from a mathematical and slightly philosophical perspective. We will discuss the contribution of these papers, not just from pure a math aspect but also how they influenced the discourse in the field, which areas were opened up as a result, and so on. Our podcast episodes are also available on our youtube: https://youtu.be/wThcXx_vXjQ?si=vnMfs
Show more...
Mathematics
Science
RSS
All content for Data Science Decoded is the property of Mike E and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
We discuss seminal mathematical papers (sometimes really old 😎 ) that have shaped and established the fields of machine learning and data science as we know them today. The goal of the podcast is to introduce you to the evolution of these fields from a mathematical and slightly philosophical perspective. We will discuss the contribution of these papers, not just from pure a math aspect but also how they influenced the discourse in the field, which areas were opened up as a result, and so on. Our podcast episodes are also available on our youtube: https://youtu.be/wThcXx_vXjQ?si=vnMfs
Show more...
Mathematics
Science
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_nologo/41505637/41505637-1720347263425-80b9b83d77589.jpg
Data Science #15 - The First Decision Tree Algorithm (1963)
Data Science Decoded
36 minutes 35 seconds
7 months ago
Data Science #15 - The First Decision Tree Algorithm (1963)

the 15th episode we went over the paper "Problems in the Analysis of Survey Data, and a Proposal" by James N. Morgan and John A. Sonquist from 1963. It highlights seven key issues in analyzing complex survey data, such as high dimensionality, categorical variables, measurement errors, sample variability, intercorrelations, interaction effects, and causal chains.


These challenges complicate efforts to draw meaningful conclusions about relationships between factors like income, education, and occupation. To address these problems, the authors propose a method that sequentially splits data by identifying features that reduce unexplained variance, much like modern decision trees.


The method focuses on maximizing explained variance (SSE), capturing interaction effects, and accounting for sample variability.


It handles both categorical and continuous variables while respecting logical causal priorities. This paper has had a significant influence on modern data science and AI, laying the groundwork for decision trees, CART, random forests, and boosting algorithms.


Its method of splitting data to reduce error, handle interactions, and respect feature hierarchies is foundational in many machine learning models used today. Link to full paper at our website:

https://datasciencedecodedpodcast.com/episode-15-the-first-decision-tree-algorithm-1963

Data Science Decoded
We discuss seminal mathematical papers (sometimes really old 😎 ) that have shaped and established the fields of machine learning and data science as we know them today. The goal of the podcast is to introduce you to the evolution of these fields from a mathematical and slightly philosophical perspective. We will discuss the contribution of these papers, not just from pure a math aspect but also how they influenced the discourse in the field, which areas were opened up as a result, and so on. Our podcast episodes are also available on our youtube: https://youtu.be/wThcXx_vXjQ?si=vnMfs