

When? This feed was archived on February 10, 2025 12:10 (
Why? 피드 비활성화 status. 잠시 서버에 문제가 발생해 팟캐스트를 불러오지 못합니다.
What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.
Episode Summary: In this episode, Eugene Uwiragiye introduces two fundamental machine learning algorithms: K-Nearest Neighbors (KNN) and Naive Bayes. He covers the importance of choosing the right K value in KNN and explains how different values can impact classification accuracy. Additionally, he provides an in-depth discussion of Naive Bayes, focusing on its reliance on Bayes' Theorem and how probabilities are calculated to make predictions. The episode offers practical insights and examples to help listeners understand the mechanics behind these algorithms and their applications.
Key Topics Covered:
Learning Objectives:
Memorable Quotes:
Actionable Takeaways:
Resources Mentioned:
Next Episode Teaser: In the next episode, we will dive into more advanced machine learning algorithms and explore how they can be applied to large-scale data.
20 에피소드
When?
This feed was archived on February 10, 2025 12:10 (
Why? 피드 비활성화 status. 잠시 서버에 문제가 발생해 팟캐스트를 불러오지 못합니다.
What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.
Episode Summary: In this episode, Eugene Uwiragiye introduces two fundamental machine learning algorithms: K-Nearest Neighbors (KNN) and Naive Bayes. He covers the importance of choosing the right K value in KNN and explains how different values can impact classification accuracy. Additionally, he provides an in-depth discussion of Naive Bayes, focusing on its reliance on Bayes' Theorem and how probabilities are calculated to make predictions. The episode offers practical insights and examples to help listeners understand the mechanics behind these algorithms and their applications.
Key Topics Covered:
Learning Objectives:
Memorable Quotes:
Actionable Takeaways:
Resources Mentioned:
Next Episode Teaser: In the next episode, we will dive into more advanced machine learning algorithms and explore how they can be applied to large-scale data.
20 에피소드
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