Time-Aware Music Recommender Systems: Modeling the Evolution of Implicit
User Preferences and User Listening Habits in A Collaborative Filtering
Approach
- URL: http://arxiv.org/abs/2008.11432v1
- Date: Wed, 26 Aug 2020 08:00:11 GMT
- Title: Time-Aware Music Recommender Systems: Modeling the Evolution of Implicit
User Preferences and User Listening Habits in A Collaborative Filtering
Approach
- Authors: Diego S\'anchez-Moreno, Yong Zheng and Mar\'ia N. Moreno-Garc\'ia
- Abstract summary: This paper studies the temporal information regarding when songs are played.
The purpose is to model both the evolution of user preferences in the form of evolving implicit ratings and user listening behavior.
In the collaborative filtering method proposed in this work, daily listening habits are captured in order to characterize users and provide them with more reliable recommendations.
- Score: 4.576379639081977
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Online streaming services have become the most popular way of listening to
music. The majority of these services are endowed with recommendation
mechanisms that help users to discover songs and artists that may interest them
from the vast amount of music available. However, many are not reliable as they
may not take into account contextual aspects or the ever-evolving user
behavior. Therefore, it is necessary to develop systems that consider these
aspects. In the field of music, time is one of the most important factors
influencing user preferences and managing its effects, and is the motivation
behind the work presented in this paper. Here, the temporal information
regarding when songs are played is examined. The purpose is to model both the
evolution of user preferences in the form of evolving implicit ratings and user
listening behavior. In the collaborative filtering method proposed in this
work, daily listening habits are captured in order to characterize users and
provide them with more reliable recommendations. The results of the validation
prove that this approach outperforms other methods in generating both
context-aware and context-free recommendations
Related papers
- System-2 Recommenders: Disentangling Utility and Engagement in Recommendation Systems via Temporal Point-Processes [80.97898201876592]
We propose a generative model in which past content interactions impact the arrival rates of users based on a self-exciting Hawkes process.
We show analytically that given samples it is possible to disentangle System-1 and System-2 and allow content optimization based on user utility.
arXiv Detail & Related papers (2024-05-29T18:19:37Z) - Measuring Strategization in Recommendation: Users Adapt Their Behavior to Shape Future Content [66.71102704873185]
We test for user strategization by conducting a lab experiment and survey.
We find strong evidence of strategization across outcome metrics, including participants' dwell time and use of "likes"
Our findings suggest that platforms cannot ignore the effect of their algorithms on user behavior.
arXiv Detail & Related papers (2024-05-09T07:36:08Z) - Fairness Through Domain Awareness: Mitigating Popularity Bias For Music
Discovery [56.77435520571752]
We explore the intrinsic relationship between music discovery and popularity bias.
We propose a domain-aware, individual fairness-based approach which addresses popularity bias in graph neural network (GNNs) based recommender systems.
Our approach uses individual fairness to reflect a ground truth listening experience, i.e., if two songs sound similar, this similarity should be reflected in their representations.
arXiv Detail & Related papers (2023-08-28T14:12:25Z) - Latent User Intent Modeling for Sequential Recommenders [92.66888409973495]
Sequential recommender models learn to predict the next items a user is likely to interact with based on his/her interaction history on the platform.
Most sequential recommenders however lack a higher-level understanding of user intents, which often drive user behaviors online.
Intent modeling is thus critical for understanding users and optimizing long-term user experience.
arXiv Detail & Related papers (2022-11-17T19:00:24Z) - Exploiting Device and Audio Data to Tag Music with User-Aware Listening
Contexts [8.224040855079176]
We propose a system which can generate a situational playlist for a user at a certain time by leveraging user-aware music autotaggers.
Experiments show that such a context-aware personalized music retrieval system is feasible, but the performance decreases in the case of new users.
arXiv Detail & Related papers (2022-11-14T10:08:12Z) - Understanding How People Rate Their Conversations [73.17730062864314]
We conduct a study to better understand how people rate their interactions with conversational agents.
We focus on agreeableness and extraversion as variables that may explain variation in ratings.
arXiv Detail & Related papers (2022-06-01T00:45:32Z) - Psychologically-Inspired Music Recommendation System [3.032299122358857]
We seek to relate the personality and the current emotional state of the listener to the audio features in order to build an emotion-aware MRS.
We compare the results both quantitatively and qualitatively to the output of the traditional MRS based on the Spotify API data to understand if our advancements make a significant impact on the quality of music recommendations.
arXiv Detail & Related papers (2022-05-06T19:38:26Z) - Explainability in Music Recommender Systems [69.0506502017444]
We discuss how explainability can be addressed in the context of Music Recommender Systems (MRSs)
MRSs are often quite complex and optimized for recommendation accuracy.
We show how explainability components can be integrated within a MRS and in what form explanations can be provided.
arXiv Detail & Related papers (2022-01-25T18:32:11Z) - Follow the guides: disentangling human and algorithmic curation in
online music consumption [1.4506962780822348]
We analyze the complete listening history of about 9k users over one year.
We show that the two types of recommendation offered by music platforms -- algorithmic and editorial -- may drive the consumption of more or less diverse content in opposite directions.
arXiv Detail & Related papers (2021-09-08T20:14:48Z) - A Semi-Personalized System for User Cold Start Recommendation on Music
Streaming Apps [1.6050172226234583]
We present the system recently deployed on the music streaming service Deezer to address this problem.
The solution leverages a semi-personalized recommendation strategy, based on a deep neural network architecture.
We extensively show the practical impact of this system and its effectiveness at predicting the future musical preferences of cold start users on Deezer.
arXiv Detail & Related papers (2021-06-07T17:35:44Z) - A session-based song recommendation approach involving user
characterization along the play power-law distribution [0.0]
This work is focused on two important issues that have not received much attention: managing gray-sheep users and obtaining implicit ratings.
The first one is usually addressed by resorting to content information that is often difficult to obtain.
The other drawback is related to the sparsity problem that arises when there are obstacles to gather explicit ratings.
arXiv Detail & Related papers (2020-04-25T07:17:03Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.