Generating Tips from Song Reviews: A New Dataset and Framework
Jingya Zang, Cuiyun Gao, Yupan Chen, Ruifeng Xu, Lanjun Zhou, Xuan, Wang

TL;DR
This paper introduces a new dataset and framework for automatically generating concise, insightful tips from song reviews to help users make quicker, more informed decisions about music choices.
Contribution
The study presents the first task and dataset for tip generation from song reviews and proposes a novel framework that outperforms baseline models in this domain.
Findings
GENTMS achieves 85.56% top-10 precision on the dataset.
GENTMS outperforms baselines by at least 3.34%.
Effective tip generation for unseen songs demonstrated.
Abstract
Reviews of songs play an important role in online music service platforms. Prior research shows that users can make quicker and more informed decisions when presented with meaningful song reviews. However, reviews of music songs are generally long in length and most of them are non-informative for users. It is difficult for users to efficiently grasp meaningful messages for making decisions. To solve this problem, one practical strategy is to provide tips, i.e., short, concise, empathetic, and self-contained descriptions about songs. Tips are produced from song reviews and should express non-trivial insights about the songs. To the best of our knowledge, no prior studies have explored the tip generation task in music domain. In this paper, we create a dataset named MTips for the task and propose a framework named GENTMS for automatically generating tips from song reviews. The dataset…
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Taxonomy
TopicsDigital Communication and Language · Discourse Analysis in Language Studies · Language, Discourse, Communication Strategies
Methodstravel james
