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Dokumenttyp:
Zeitschriftenaufsatz
Autor(en):
Pölsterl, S.; Wang, L.; gupta; Conjeti, S.; Katouzian, A.; Navab, N.
Titel:
Heterogeneous ensembles for predicting survival of metastatic, castrate-resistant prostate cancer patients
Abstract:
Ensemble methods have been successfully applied in a wide range of scenarios, including survival analysis. However, most ensemble models for survival analysis consist of models that all optimize the same loss function and do not fully utilize the diversity in available models. We propose heterogeneous survival ensembles that combine several survival models, each optimizing a different loss during training. We evaluated our proposed technique in the context of the Prostate Cancer DREAM Challenge,...     »
Stichworte:
CAMP,Machine Learning
Zeitschriftentitel:
F1000Research
Jahr:
2016
Band / Volume:
5
Heft / Issue:
2676
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