Music Recommendations Based on Real-Time Data

Typ
Examensarbete för kandidatexamen
Bachelor Thesis
Program
Datateknik 300 hp (civilingenjör)
Publicerad
2018
Författare
Aurén, Marcus
Bååw, Albin
Hagerman Olzon, David
Karlsson, Tobias
Nilsson, Linnea
Shirmohammad, Pedram
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
This thesis describes the development, implementation and results of a music recommender system that utilizes real time data, namely time and heart rate, for the recommendations. The recommender system was made by combining two systems, the recommender system which predicts a number of song features for a specific user and a ranking system which finds the best matching tracks for these features. Three implementations of the recommender system were implemented for comparison, namely Deep Neural Network, Contextual Bandit and Linear Regression. These implementations were tested with offline evaluation which showed that for our problem, a contextual bandit model had the best accuracy.
Beskrivning
Ämne/nyckelord
Data- och informationsvetenskap , Computer and Information Science
Citation
Arkitekt (konstruktör)
Geografisk plats
Byggnad (typ)
Byggår
Modelltyp
Skala
Teknik / material
Index