Title :
Spotify Me: Facebook-assisted automatic playlist generation
Author :
Germain, Arthur ; Chakareski, Jacob
Author_Institution :
Ecole Polytech. Fed. de Lausanne (EPFL), Lausanne, Switzerland
fDate :
Sept. 30 2013-Oct. 2 2013
Abstract :
We design a novel method for automatically generating a playlist of recommended songs in the popular social music sharing application Spotify that are liked with high probability by a user. Our method employs multiple seed artists as an input that are obtained via the Facebook likes of artists and the listening history of songs of a Spotify user. First, we construct an input vector comprising all the artists that the user likes on Facebook and listens to in Spotify. Then, we search for other artists and bands related to them using EchoNest, an online state-of-the-art machine learning platform. We assign a score to every artist in the thereby obtained collection, based on the frequency of his/her appearance. Finally, we construct a playlist comprising randomly selected popular songs associated with the most frequently cited artists. We examine the recommendation performance of our algorithm by computing its WTF score (fraction of disliked songs) and novelty factor (fraction of new liked songs) on playlists generated for different seed input sizes. We observe that our approach substantially outperforms the built-in Spotify Radio recommender. On 30 song playlists, we are able to improve the WTF score by 49% and the novelty factor by 42%, on average. Due to its general design, our method is broadly applicable to a variety of personal content management scenarios.
Keywords :
content management; learning (artificial intelligence); music; social networking (online); EchoNest; Facebook-assisted automatic playlist generation; Spotify Me; Spotify user; WTF score; built-in Spotify Radio recommender; disliked song fraction; input vector construction; online state-of-the-art machine learning platform; personal content management scenario; randomly-selected popular songs; social music sharing application; Accuracy; Collaboration; Engines; Facebook; History; Recommender systems; Vectors;
Conference_Titel :
Multimedia Signal Processing (MMSP), 2013 IEEE 15th International Workshop on
Conference_Location :
Pula
DOI :
10.1109/MMSP.2013.6659258