Differential replication through copying refers to the process of replicating the decision behavior of a machine learning model using another model that possesses enhanced features and attributes. This process is relevant when external constraints limit the performance of an industrial predictive system. Under such circumstances, copying enables the retention of original prediction capabilities while adapting to new demands. Previous research has focused on the single-pass implementation for copying. This paper introduces a novel sequential approach that significantly reduces the amount of computational resources needed to train or maintain a copy, leading to reduced maintenance costs for companies using machine learning models in production. The effectiveness of the sequential approach is demonstrated through experiments with synthetic and real-world datasets, showing significant reductions in time and resources, while maintaining or improving accuracy.
翻译:通过复制进行的不同复制是指复制机器学习模式的决定行为的过程,采用另一种具有强化特点和属性的模式。当外部限制限制工业预测系统的运作时,这一过程是相关的。在这种情况下,复制既能保留原始预测能力,又能适应新的需求。以前的研究侧重于用于复制的单程执行。本文采用新的顺序方法,大大减少培训或保存副本所需的计算资源量,从而降低生产中使用机器学习模型的公司维护费用。通过合成和真实世界数据集的实验,显示时间和资源的显著减少,同时保持或提高准确性,可以证明连续方法的有效性。