- Started: 12:22 am, Friday 14 April 2017 UTC
- Ended: 11:59 pm, Wednesday 31 May 2017 UTC (47 total days)
Deezer is a music streaming app, also available on the web. It proposes more than 43 million tracks and is available in more than 180 countries, through a free limited service and a premium offer.
This was international student competition where more than 220 universities and around 800 students participated in online qualification round which lasted for 47 days. This competition was hosted on Kaggle. We participated in this competition as a team of 4 students from our university - Berlin School of Economics & Law. https://www.kaggle.com/teamten
- Final Report
- Feature Engineering(section 1 to 3 in Final Report)
- Models- folder
- Data used for other models (Data has also been put in zeno server under "60_data_other_models" and steps from above scripts/ models can be replicated. Dropbox link is to download data and try models locally without need of server.)
- Leaderboard Score Analysis
- Reference material (Parameters tuning and categorical encoding guide)
- Official documentation (Guide for XGBoost, LightGBM and H2O)
The goal of this challenge was to predict whether the users of the test dataset listened to the first track of Deezer's own music recommendation algorithm proposed them or not. The evaluation metric for this competition was the ROC AUC.