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A methodological approach for algorithmic composition systems' parameter spaces aesthetic exploration

机译:算法合成系统参数空间美学探索的方法论方法

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Algorithmic composition is the process of creating musical material by means of formal methods. As a consequence of its design, algorithmic composition systems are (explicitly or implicitly) described in terms of parameters. Thus, parameter space exploration plays a key role in learning the system's capabilities. However, in the computer music field, this task has received little attention. This is due in part, because the produced changes on the human perception of the outputs, as a response to changes on the parameters, could be highly nonlinear, therefore models with strongly predictable outputs are needed. The present work describes a methodology for the human perceptual (or aesthetic) exploration of generative systems' parameter spaces. As the systems' outputs are intended to produce an aesthetic experience on humans, audition plays a central role in the process. The methodology starts from a set of parameter combinations which are perceptually evaluated by the user. The sampling process of such combinations depends on the system under study and possible on heuristic considerations. The evaluated set is processed by a compaction algorithm able to generate linguistic rules describing the distinct perceptions (classes) of the user evaluation. The semantic level of the extracted rules allows for interpretability, while showing great potential in describing high and low-level musical entities. As the resulting rules represent discrete points in the parameter space, further possible extensions for interpolation between points are also discussed. Finally, some practical implementations and paths for further research are presented.
机译:算法作曲是通过形式方法创作音乐材料的过程。由于其设计,算法组成系统(明确或隐含地)根据参数进行了描述。因此,参数空间探索在学习系统功能方面起着关键作用。但是,在计算机音乐领域,该任务很少受到关注。这部分是由于对人的输出感知所产生的变化(作为对参数变化的响应)可能是高度非线性的,因此需要具有可强烈预测的输出的模型。本工作描述了人类对生成系统的参数空间的感知(或美学)探索的方法。由于系统的输出旨在为人类带来美学体验,因此试听在该过程中起着核心作用。该方法从用户感知地评估的一组参数组合开始。这种组合的采样过程取决于所研究的系统,并可能取决于启发式考虑。评估算法由压缩算法处理,该算法能够生成描述用户评估的不同感知(类)的语言规则。所提取规则的语义级别允许解释性,同时在描述高级和低级音乐实体方面显示出巨大的潜力。由于生成的规则表示参数空间中的离散点,因此还将讨论点之间插值的其他可能扩展。最后,给出了一些实际的实现方法和进一步研究的路径。

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