For a long time, machine learning (ML) has been seen as the abstract problem of learning relationships from data independent of the surrounding settings. This has recently been challenged, and methods have been proposed to include external constraints in the machine learning models. These methods usually come from application-specific fields, such as de-biasing algorithms in the field of fairness in ML or physical constraints in the fields of physics and engineering. In this paper, we present and discuss a conceptual high-level model that unifies these approaches in a common language. We hope that this will enable and foster exchange between the different fields and their different methods for including external constraints into ML models, and thus leaving purely data-centric approaches.
翻译:长期以来,机器学习(ML)一直被视为从独立于周围环境的数据中学习关系的抽象问题,最近受到挑战,并提出了将外部限制纳入机器学习模式的方法,这些方法通常来自具体应用领域,如公平管理领域不偏向性算法或物理和工程领域的实际限制。本文提出并讨论一个高层次的概念模型,将这些方法统一为一种共同语言。我们希望这将有助于并促进不同领域及其将外部限制纳入模型的不同方法之间的交流,从而留下纯粹以数据为中心的方法。