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Why Did You Cover That Song?: Modeling N-th Order Derivative Creation with Content Popularity

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Published:24 October 2016Publication History

ABSTRACT

Many amateur creators now create derivative works and put them on the web. Although there are several factors that inspire the creation of derivative works, such factors cannot usually be observed on the web. In this paper, we propose a model for inferring latent factors from sequences of derivative work posting events. We assume a sequence to be a stochastic process incorporating the following three factors: (1) the original work's attractiveness, (2) the original work's popularity, and (3) the derivative work's popularity. To characterize content popularity, we use content ranking data and incorporate rank-biased popularity based on the creators' browsing behavior. Our main contributions are three-fold: (1) to the best of our knowledge, this is the first study modeling derivative creation activity, (2) by using a real-world dataset of music-related derivative work creation to evaluate our model, we showed the effectiveness of adopting all three factors to model derivative creation activity and onsidering creators' browsing behavior, and (3) we carried out qualitative experiments and showed that our model is useful in analyzing derivative creation activity in terms of category characteristics, temporal development of factors that trigger derivative work posting events, etc.

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  1. Why Did You Cover That Song?: Modeling N-th Order Derivative Creation with Content Popularity

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      cover image ACM Conferences
      CIKM '16: Proceedings of the 25th ACM International on Conference on Information and Knowledge Management
      October 2016
      2566 pages
      ISBN:9781450340731
      DOI:10.1145/2983323

      Copyright © 2016 ACM

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      New York, NY, United States

      Publication History

      • Published: 24 October 2016

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      CIKM '16 Paper Acceptance Rate160of701submissions,23%Overall Acceptance Rate1,861of8,427submissions,22%

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