Widening: using parallel resources to improve model quality

作者:Michael R. Berthold, Alexander Fillbrunn, Arno Siebes

摘要

This paper provides a unified description of Widening, a framework for the use of parallel (or otherwise abundant) computational resources to improve model quality. We discuss different theoretical approaches to Widening with and without consideration of diversity. We then soften some of the underlying constraints so that Widening can be implemented in real world algorithms. We summarize earlier experimental results demonstrating the potential impact as well as promising implementation strategies before concluding with a survey of related work.

论文关键词:Widening, Machine learning, Data mining, Algorithms, Parallelization

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10618-021-00749-5