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Digitally forecasting new music product success via active crowdsourcing

机译:通过主动众包以数字方式预测新音乐产品的成功

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摘要

Deciding which artist or song to sign and promote has always been a challenge for recording companies, especially when it comes to innovative newcomer singers without any chart history. However, the specifics of a creative industry such as the hedonic nature of music, socio-network effects, and ever fastening fashion cycles in combination with digitalization have made the recording industry even more competitive and these initial decisions even more crucial. With respect to the ongoing digital transformation and shift in power from organizations to consumers, we leverage digitally mediated wisdom of the crowd to build a forecasting model for better understanding chart success. Therefore, we draw on the literature of hedonic and experiential goods to investigate the relationship between crowd evaluations based on listening experience and popular music chart success. We track 150 song positions in reported music charts and also evaluate these songs via the crowd. Our model indicates that the wisdom of the crowd can improve forecasting chart success by almost 30% relatively to factors that have been earlier identified in the literature. However, this forecasting relevance is bound to certain conditions, namely the composition of the crowd, the underlying chart and market mechanisms, and the novelty of the musical material. In sum we find that crowd-based mechanisms are especially suited to forecast the performance of novel songs from unknown artists, which makes them a powerful yet very affordable decision support instrument for very uncertain contexts with limited historical data available. These findings can support recording companies to address the challenge of signing newcomers and thereby further enable the innovation system of the industry.
机译:对于唱片公司来说,决定签名和宣传哪个歌手或歌曲一直是一个挑战,尤其是在没有任何唱片历史的创新型新人歌手中。但是,创意产业的特点,例如音乐的享乐本质,社会网络效果以及日益严峻的时尚周期与数字化相结合,使唱片业更具竞争力,而这些最初的决定也变得更加关键。关于正在进行的数字化转型以及从组织到消费者的权力转移,我们利用人群的数字化中介智慧来建立预测模型,以更好地理解图表的成功。因此,我们借鉴享乐和体验性商品的文献来研究基于聆听体验的人群评估与流行音乐排行榜成功之间的关系。我们在报告的音乐排行榜中跟踪150首歌曲的位置,并通过人群评估这些歌曲。我们的模型表明,相对于文献中较早发现的因素,人群的智慧可以将预测图表的成功率提高近30%。但是,这种预测相关性受某些条件的约束,即人群的组成,潜在的图表和市场机制以及音乐资料的新颖性。总而言之,我们发现基于人群的机制特别适合预测未知艺术家的新颖歌曲的演奏,这使它们成为功能强大但价格合理的决策支持工具,可用于非常不确定的情况下,并且历史数据有限。这些发现可以支持唱片公司应对签约新手的挑战,从而进一步推动行业的创新体系。

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