Companion Proceedings of the ACM Web Conference 2023 2023
DOI: 10.1145/3543873.3584626
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Bootstrapping Contrastive Learning Enhanced Music Cold-Start Matching

Abstract: We study a particular matching task we call Music Cold-Start Matching. In short, given a cold-start song request, we expect to retrieve songs with similar audiences and then fastly push the cold-start song to the audiences of the retrieved songs to warm up it. However, there are hardly any studies done on this task. Therefore, in this paper, we will formalize the problem of Music Cold-Start Matching detailedly and give a scheme. During the offline training, we attempt to learn high-quality song representations… Show more

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