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Drift Adaptation via Joint Distribution Alignment

机译:通过联合分布对齐进行漂移适应

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摘要

Machine learning in evolving environment faces challenges due to concept drift. Most concept drift adaptation methods focus on modifying the model. In this paper, a method, Drift Adaptation via Joint Distribution Alignment (DAJDA), is proposed. DAJDA performs a linear transformation to the drift instances instead of modifying model. Instances are transformed into a common feature space, reducing the discrepancy of distributions before and after drift. Experimental studies show that DAJDA has abilities to improve the performance of learning model under concept drift.
机译:不断发展的环境中的机器学习由于概念漂移而面临挑战。大多数概念漂移适应方法都集中在修改模型上。本文提出了一种通过联合分布对准(DAJDA)进行漂移自适应的方法。 DAJDA对漂移实例执行线性变换,而不是修改模型。实例被转换为公共特征空间,从而减少了漂移前后的分布差异。实验研究表明,DAJDA具有在概念漂移下提高学习模型性能的能力。

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