We present a framework for automating generative deep learning with a specific focus on artistic applications. The framework provides opportunities to hand over creative responsibilities to a generative system as targets for automation. For the definition of targets, we adopt core concepts from automated machine learning and an analysis of generative deep learning pipelines, both in standard and artistic settings. To motivate the framework, we argue that automation aligns well with the goal of increasing the creative responsibility of a generative system, a central theme in computational creativity research. We understand automation as the challenge of granting a generative system more creative autonomy, by framing the interaction between the user and the system as a co-creative process. The development of the framework is informed by our analysis of the relationship between automation and creative autonomy. An illustrative example shows how the framework can give inspiration and guidance in the process of handing over creative responsibility.
翻译:我们提出了一个使基因深层次学习自动化的框架,具体侧重于艺术应用。这个框架提供了将创造性责任移交给基因系统作为自动化目标的机会。为了确定目标,我们采用了来自自动化机器学习的核心概念,并对标准环境和艺术环境中的基因深层次学习管道进行了分析。为了激励这个框架,我们认为自动化与增加基因深层次系统创造性责任的目标非常吻合,而基因深层次教育是计算创造力研究的一个中心主题。我们理解自动化是赋予基因系统更具创造性自主性的挑战,将用户和系统之间的互动设计成一个共同创造过程。这个框架的制定借鉴于我们对自动化和创造性自主关系的分析。一个说明性的例子说明了这个框架如何在移交创造性责任的过程中提供灵感和指导。