Domain Adaptation Random Forest
In this paper we introduce a collaborative training algorithm of balanced random forests for domain adaptation tasks which can avoid the overfitting problem in real scenarios most domain adaptation algorithms face the challenges from noisy insuf ficient training data.
Domain adaptation random forest. Moreover in open set categorization unknown or misaligned. In this section we compare the proposed domain adaptation of random forest framework to other popular domain adaptation methods. 2012 subspace alignment sa by fernando et al.
These include frustratingly easy domain adaption feda proposed by daumé 2007 geodesic flow kernel gfk proposed by gong et al.
Source : pinterest.com