The development of generative Machine Learning (ML) models in creative practices, enabled by the recent improvements in usability and availability of pre-trained models, is raising more and more interest among artists, practitioners and performers. Yet, the introduction of such techniques in artistic domains also revealed multiple limitations that escape current evaluation methods used by scientists. Notably, most models are still unable to generate content that lay outside of the domain defined by the training dataset. In this paper, we propose an alternative prospective framework, starting from a new general formulation of ML objectives, that we derive to delineate possible implications and solutions that already exist in the ML literature (notably for the audio and musical domain). We also discuss existing relations between generative models and computational creativity and how our framework could help address the lack of creativity in existing models.
翻译:由于最近改进了预先培训的模型的可用性和可用性,因此在创造性做法方面发展了基因机械学习模式,使艺术家、从业者和表演者越来越感兴趣,然而,在艺术领域采用这种技术也暴露出科学家目前使用的评估方法之外存在的多种局限性,值得注意的是,大多数模型仍然无法产生培训数据集界定的范围之外的内容。在本文件中,我们提出了一个备选的未来框架,从新的通用ML目标的提法开始,我们从这个框架出发,来描述ML文献中已经存在的可能的影响和解决办法(特别是音频和音乐领域),我们还讨论了基因化模型和计算创造力之间的现有关系,以及我们的框架如何帮助解决现有模型缺乏创造性的问题。