Personalized Text-Based Music Retrieval
نویسندگان
چکیده
We consider the problem of personalized text-based music retrieval where users’ history of preferences are taken into account in addition to their issued textual queries. Current retrieval methods mostly rely on songs meta-data. This limits the query vocabulary. Moreover, it is very costly to gather this information in large collections of music. Alternatively, we use music annotations retrieved from social tagging Websites such as last.fm and use them as textual descriptions of songs. Considering a user’s profile and using preference patterns of music among all users, as in collaborative filtering approaches, can be useful in providing personalized and more satisfactory results. The main challenge is how to include both users’ profiles and the songs meta-data in the retrieval model. In this paper, we propose a hierarchical probabilistic model that takes into account the users’ preference history as well as tag co-occurrences in songs. Our model is an extension of LDA where topics are formed as joint clusterings of songs and tags. These topics capture the tag associations and user preferences and correspond to different music tastes. Each user’s profile is represented as a distribution over topics which shows the user’s interests in different types of music. We will explain how our model can be used for contextual retrieval. Our experimental results show significant improvement in retrieval when user profiles are taken into account.
منابع مشابه
Affective Music Information Retrieval
Much of the appeal of music lies in its power to convey emotions/moods and to evoke them in listeners. In consequence, the past decade witnessed a growing interest in modeling emotions from musical signals in the music information retrieval (MIR) community. In this article, we present a novel generative approach to music emotion modeling, with a specific focus on the valence-arousal (VA) dimens...
متن کاملCreating Classifiers for a Personalized Music Recomendation System
The topic of music emotion recognition is emerging in the field of music information retrieval. Personalized recommendation of music is the next logical step within the topic of detecting emotion in music. While a program can eventually learn someone’s taste and interpretation of music, being able to assign the user to a group based on similar tastes will allow the program to learn even faster....
متن کاملDMUN: A Textual Interface for Content-Based Music Information Retrieval in the C@merata task for MediaEval 2016
This paper describes a text-based Question-Answering (QA) system for content-based music information retrieval (MIR) according to the C@merata task description [12,13].
متن کاملText Information Retrieval Approach to Music Information Retrieval
This MIREX submission for symbolic music similarity task adopts textual information retrieval methodology in the process of music information retrieval. The main contribution of this approach is to utilize well established term weighting methods for text retrieval and check their suitability for music data. We use a simple feature extraction method, so that the performance of an algorithm depen...
متن کاملMusical similarity analysis based on chroma features and text retrieval methods
Abstract: At the present day the world wide web is full of music. Highly effective algorithms for music compression and high data storage has made it easy to access all kind of music easily. However, it is not possible to look for a similar piece of music or a sound as easily as to google for a similar kind of text. Music is filtered by its title or artist. Although musicians can publish their ...
متن کامل