

#1: Practical Recommender Systems with Kim Falk
11 snips Oct 8, 2021
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32
Introduction
00:00 • 3min
Machine Learning
03:09 • 2min
Data Scientists - What Are the Competences You Have?
05:20 • 2min
Is Machine Learning Really a Science?
07:01 • 2min
Data Scientist
08:51 • 3min
Was It a Recommender System or Just Other Stuff?
11:32 • 3min
How to Build a Recommender System?
14:47 • 3min
Is There a Course on Colebrato Filtering?
17:46 • 2min
Restricting the Recommendation on Catoms
19:21 • 2min
Rexus Es
21:05 • 2min
The Rexes Conference Is a Great Preparation
22:52 • 2min
Rex's Conference
24:29 • 2min
Is There a Definition of a Recommender System?
26:21 • 2min
Is That a Hard Challenge?
28:12 • 4min
What Is Similarity Between Content?
32:20 • 3min
Collabity Filtering
34:50 • 2min
What Is Similarity With Colebrative Fittering?
36:36 • 4min
How to Calculate the Pearson Correlation Coefficient
40:29 • 3min
Is Rating Prediction a Good Way to Measure Whether Your Alderan Is Working?
43:25 • 3min
Is There a Good Recommendation?
46:36 • 3min
Are There Any Metrics That Account for That Fat Fact?
49:37 • 2min
Is There a Difference Between on Line and Offline Evaluation?
51:53 • 2min
Deed Learning
53:30 • 2min
Using Deep Learning to Predict Ratings Is Not the Solution
55:10 • 5min
Colebrati Filtering
01:00:34 • 3min
The Content Base Recommendations Are a Very Good Idea
01:03:42 • 2min
How to Start Using Recommendation Systems?
01:05:45 • 3min
How to Participate in the Reffle for a Free Book of Practical Recommender Systems
01:08:54 • 2min
The Challenges for the Future of Recommender Systems?
01:10:34 • 2min
Rexless Challenge
01:12:06 • 3min
The Challenges of Recommendations
01:15:00 • 2min
Experts Recommender Systems - Episode 1
01:17:12 • 2min