| Literature DB >> 31777671 |
Hyunjin Kwon1, Jinhyeok Park1, Youngho Lee2.
Abstract
OBJECTIVES: Breast cancer is the second most common cancer among Korean women. Because breast cancer is strongly associated with negative emotional and physical changes, early detection and treatment of breast cancer are very important. As a supporting tool for classifying breast cancer, we tried to identify the best meta-learner model in a stacking ensemble when the same machine learning models for the base learner and meta-learner are used.Entities:
Keywords: Breast Cancer; Classification; Data Analysis; Machine Learning; Medical Informatics
Year: 2019 PMID: 31777671 PMCID: PMC6859259 DOI: 10.4258/hir.2019.25.4.283
Source DB: PubMed Journal: Healthc Inform Res ISSN: 2093-3681
Figure 1Architecture of stacking ensemble.
Figure 2Performance comparison for the Wisconsin Breast Cancer Diagnostic: (A) accuracy and (B) root-mean-square error (RMSE). GBM: Gradient Boosted Model, DRF: Distributed Random Forest, GLM: Generalized Linear Model, DNN: Deep Neural Network.
Figure 3Performance comparison for the Wisconsin Breast Cancer - Original: (A) accuracy and (B) root-mean-square error (RMSE). GBM: Gradient Boosted Model, DRF: Distributed Random Forest, GLM: Generalized Linear Model, DNN: Deep Neural Network.
Performance evaluation for the Wisconsin Breast Cancer Diagnostic
RMSE: root-mean-square error, GBM: Gradient Boosted Model, DRF: Distributed Random Forest, GLM: Generalized Linear Model, DNN: Deep Neural Network.
Performance evaluation for the Wisconsin Breast Cancer - Original
RMSE: root-mean-square error, GBM: Gradient Boosted Model, DRF: Distributed Random Forest, GLM: Generalized Linear Model, DNN: Deep Neural Network.