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Presentations
(13)Likes
(13)Uplift Modeling Workshop
odsc
•
8 years ago
Winning data science competitions, presented by Owen Zhang
Vivian S. Zhang
•
9 years ago
Ph.D. Defense: Models and Algorithms for PageRank sensitivity
David Gleich
•
12 years ago
Best Practices in Recommender System Challenges
Alan Said
•
11 years ago
Approximate modeling of continuous context in factorization algorithms (CaRR14 presentation)
Balázs Hidasi
•
10 years ago
Algorithms on Hadoop at Last.fm
Mark Levy
•
13 years ago
Algorithmic Music Recommendations at Spotify
Chris Johnson
•
10 years ago
Collaborative Filtering at Spotify
Erik Bernhardsson
•
11 years ago
Efficient Top-N Recommendation by Linear Regression
Mark Levy
•
10 years ago
Research at last.fm
Data Science London
•
11 years ago
Offline evaluation of recommender systems: all pain and no gain?
Mark Levy
•
10 years ago
Machine Learning
butest
•
14 years ago
Tags
machine learning
data science
kaggle
big data
games
coursework
structured output learning
optimization
popularity prediction
howpop
blogs
hackathon
hse
students
projects
xgboost
upselling
upselling prediction
data science competitions
анализ данных
Тренировки
машинное обучение
dota 2
cikm
topic models
school
data mining
higher education
recsys
factorization models
matrix factorization
recommenders
collaborative filtering
contrastive divergence learning
image processing
mrf
modelling
support vector machine
combinatorics
graph cuts
See more