Learn on Source, Refine on Target:A Model Transfer Learning Framework with Random Forests

IEEE Transactions on Pattern Analysis and Machine Intelligence(2017)

引用 125|浏览77
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摘要
We propose novel model transfer-learning methods that refine a decision forest model M learned within a “source” domain using a training set sampled from a “target” domain, assumed to be a variation of the source. We present two random forest transfer algorithms. The first algorithm searches greedily for locally optimal modifications of each tree structure by trying to locally expand or reduce the...
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关键词
Vegetation,Decision trees,Adaptation models,Data models,Computational modeling,Training,Companies
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