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Related Experiment Videos

Using radial basis functions to approximate a function and its error bounds.

J A Leonard1, M A Kramer, L H Ungar

  • 1Dept. of Chem. Eng., MIT, Cambridge, MA.

IEEE Transactions on Neural Networks
|January 1, 1992
PubMed
Summary
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A new validity index network (VI net) was developed. This network improves function fitting and provides confidence intervals, highlighting areas where the model may not perform well.

Area of Science:

  • Machine Learning
  • Artificial Intelligence
  • Data Science

Background:

  • Radial basis function networks are widely used for function approximation.
  • Assessing the reliability of predictions, especially in regions of extrapolation, remains a challenge.

Purpose of the Study:

  • To introduce a novel network, the validity index network (VI net), for enhanced function fitting.
  • To develop a method for calculating confidence intervals that indicate prediction reliability.

Main Methods:

  • The VI net is derived from radial basis function networks.
  • The network is designed to fit complex functions.
  • It incorporates a mechanism to calculate confidence intervals for its outputs.

Main Results:

Related Experiment Videos

  • The VI net successfully fits functions across various datasets.
  • Confidence intervals generated by the VI net accurately identify regions of poor fit.
  • The network effectively flags areas of extrapolation where predictions are less reliable.

Conclusions:

  • The VI net offers a robust approach to function fitting with built-in reliability assessment.
  • It provides valuable insights into the local accuracy of predictions.
  • This network is a promising tool for applications requiring reliable function approximation and uncertainty quantification.