Application of machine learning may be understood as deriving new knowledge for practical use through explaining accumulated observations, training set. Peirce used the term abduction for this kind of inference. Here I formalize the concept of abduction for real valued hypotheses, and show that 14 of the most popular textbook ML learners (every learner I tested), covering classification, regression and clustering, implement this concept of abduction inference. The approach is proposed as an alternative to statistical learning theory, which requires an impractical assumption of indefinitely increasing training set for its justification.
翻译:机器学习的应用可被理解为通过解释累积的观察、培训成套方法为实际应用而产生新知识。Peirce用绑架一词来进行这种推论。这里我正式将绑架概念用于真正有价值的假设,并表明最受欢迎的教科书ML学习者(每个我测试过的学习者)中有14人(每个学习者)在分类、回归和分组方面采用了这种诱拐推理概念。提出这一方法是为了替代统计学习理论,这就要求不切实际地假设无限期增加培训,以证明其合理性。