Ensembles of Locally Independent Prediction Models

Ross, Andrew Slavin, Pan, Weiwei, Celi, Leo Anthony, Doshi-Velez, Finale

arXiv.org Machine Learning 

Ensembles depend on diversity for improved performance. Many ensemble training methods, therefore, attempt to optimize for diversity, which they almost always define in terms of differences in training set predictions. In this paper, however, we demonstrate the diversity of predictions on the training set does not necessarily imply diversity under mild co-variate shift, which can harm generalization in practical settings. To address this issue, we introduce a new diversity metric and associated method of training ensembles of models that extrapolate differently on local patches of the data manifold. Across a variety of synthetic and real-world tasks, we find that our method improves generalization and diversity in qualitatively novel ways, especially under data limits and co-variate shift.

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