Mining Online Music Listening Trajectories
نویسندگان
چکیده
Understanding the listening habits of users is a valuable undertaking for musicology researchers, artists, consumers and online businesses alike. With the rise of Online Music Streaming Services (OMSSs), large amounts of user behavioral data can be exploited for this task. In this paper, we present SWIFT-FLOWS, an approach that models user listening habits in regards to how user attention transitions between artists. SWIFT-FLOWS combines recent advances in trajectory mining, coupled with modulated Markov models as a means to capture both how users switch attention from one artist to another, as well as how users fixate their attention in a single artist over short or large periods of time. We employ SWIFT-FLOWS on OMSSs datasets showing that it provides: (1) semantically meaningful representation of habits; (2) accurately models the attention span of users.
منابع مشابه
Homophily of Music Listening in Online Social Networks
Homophily, ranging from demographics to sentiments, breeds connections in social networks, either offline or online. However, with the prosperous growth of music streaming service, whether homophily exists in online music listening remains unclear. In this study, two online social networks of a same group of active users are established respectively in Netease Music and Weibo. Through presented...
متن کاملLeveraging Microblogs for Spatiotemporal Music Information Retrieval
We present results of text data mining experiments for music retrieval, analyzing microblogs gathered from November 2011 to September 2012 to infer music listening patterns all around the world. We assess relationships between particular music preferences and spatial properties, such as month, weekday, and country, and the temporal stability of listening activities. The findings of our study wi...
متن کاملBrowsing Music by Usage Context
This paper aims to motivate and demonstrate how widely available environmental data can be exploited to allow organization, structuring and exploration of music collections by personal listening contexts. We describe a logging plug-in for music players that automatically records data about the listening context and discuss possible extensions for more sophisticated context logging. Based on dat...
متن کاملSix Tweets per Second
People increasingly live their lives in an online setting. This observation is fundamental to a growing body of work that aims at describing, understanding and exploiting the abundance of online personal information. The strong potential of social media platforms for understanding people’s behavior has already played an important role in scientific literature and as we increasingly integrate so...
متن کاملMusical Acoustics and Speech Communication: Musical Pitch Tracking and Sound Source Separation Leading to Automatic Music Transcription II
This paper describes research aimed at building ‘‘active music listening interfaces’’ to demonstrate the importance of music understanding technologies, including sound source separation and F0 estimation, and the benefit they offer to end users. Active music listening is a way of listening to music through active interactions. Given polyphonic sound mixtures taken from available music recordin...
متن کامل