A Comparison of Projection Pursuit and Neural Network Regression Modeling
–Neural Information Processing Systems
Two projection based feedforward network learning methods for model(cid:173) free regression problems are studied and compared in this paper: one is the popular back-propagation learning (BPL); the other is the projection pursuit learning (PPL). In terms of learning efficiency, both methods have comparable training speed when based on a Gauss(cid:173) Newton optimization algorithm while the PPL is more parsimonious. In terms of learning robustness toward noise outliers, the BPL is more sensi(cid:173) tive to the outliers.
Neural Information Processing Systems
Apr-6-2023, 19:23:58 GMT
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