Author :
Cai, Jing ; Li, Heng ; Lang, Bo
Author_Institution :
State Key Lab. of Software Dev. Environ., Beihang Univ., Beijing, China
Abstract :
Music labels, especially those related to high level semantics are very useful in music retrieval and recommendation, but normally hard to acquire. In the submission to ISMIR´07, Mohamed Sordo proposed a novel model, i.e., propagation of labels, to annotate music with existing labels, by using the content-based music similarity distance. In that model, a partially annotated collection with a lot of non-labeled music was annotated at a high precision and recall. In this paper, we proposed a new model -- label probability prediction model -- and introduce it into the Sordo´s work, which makes a combined model, to improve the accuracy of propagation without exploiting any other information. In addition, we also made some modifications to the original Sordo´s model that could make the algorithm works better. Then we compare the result of combined model to that yielded by the original on a publicly accessible ground truth data, and find that, the new approach can reach a higher recall. Furthermore, with the same recall, our method obtains a better precision.
Keywords :
information retrieval; music; recommender systems; combined music label propagation model; content based music similarity distance; model label probability prediction model; music annotation; music recommendation; music retrieval; publicly accessible ground truth data; Computational modeling; Internet; Music; Music information retrieval; Prediction algorithms; Predictive models; Semantics; content-based similarity; music label; propagation model;