학술논문

A study on the differences in the interpolation capabilities of models
Document Type
Conference
Source
Proceedings of the 2005 IEEE Midnight-Summer Workshop on Soft Computing in Industrial Applications, 2005. SMCia/05. Soft Computing in Industrial Applications Soft Computing in Industrial Applications, 2005. SMCia/05. Proceedings of the 2005 IEEE Mid-Summer Workshop on. :202-207 2005
Subject
Computing and Processing
Power, Energy and Industry Applications
Interpolation
Training data
Predictive models
Learning systems
Spline
Statistical learning
Testing
Industrial training
Intelligent systems
Data engineering
Language
Abstract
We examined the interpolation capabilities of learning methods using simulated data sets and a real data set. We compared five common learning methods for their generalisation capability on the boundaries of the training data set also; we examined the effects of the complexity of models on interpolation capability. Our main results were that there are differences between the different model families, but model complexity does not have a major effect on interpolation capability. The multi-layer perceptron, support vector regression and additive spline models outperformed local linear regression and quadratic regression in interpolation capabilities. Information about the interpolation capability of models is useful when, for example, evaluating the reliability of prediction.