Visible to the public An Unsupervised Approach to Anomaly Detection in Music Datasets

TitleAn Unsupervised Approach to Anomaly Detection in Music Datasets
Publication TypeConference Paper
Year of Publication2016
AuthorsLu, Yen-Cheng, Wu, Chih-Wei, Lu, Chang-Tien, Lerch, Alexander
Conference NameProceedings of the 39th International ACM SIGIR Conference on Research and Development in Information Retrieval
Date PublishedJuly 2016
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-4069-4
Keywordsanomaly detection, data clean-up, music genre retrieval, music information retrieval, pubcrawl170201
Abstract

This paper presents an unsupervised method for systematically identifying anomalies in music datasets. The model integrates categorical regression and robust estimation techniques to infer anomalous scores in music clips. When applied to a music genre recognition dataset, the new method is able to detect corrupted, distorted, or mislabeled audio samples based on commonly used features in music information retrieval. The evaluation results show that the algorithm outperforms other anomaly detection methods and is capable of finding problematic samples identified by human experts. The proposed method introduces a preliminary framework for anomaly detection in music data that can serve as a useful tool to improve data integrity in the future.

URLhttps://dl.acm.org/doi/10.1145/2911451.2914700
DOI10.1145/2911451.2914700
Citation Keylu_unsupervised_2016