Adaptive Local Linear Regression with Application to Printer Color Management

Abstract

Local learning methods, such as local linear regression and nearest neighbor classifiers, base estimates on nearby training samples, neighbors. Usually the number of neighbors used in estimation is fixed to be a global "optimal" value, chosen by cross-validation. This paper proposes adapting the number of neighbors used for estimation to the local geometry of the data, without need for cross-validation. The term enclosing neighborhood is introduced to describe a set of neighbors whose convex hull contains the test point when possible. It is proven that enclosing neighborhoods yield bounded estimation variance under some assumptions. Three such enclosing neighborhood definitions are presented: natural neighbors, natural neighbors inclusive, and enclosing kappa-NN. The effectiveness of these neighborhood definitions with local linear regression is tested for estimating look-up tables for color management. Significant improvements in error metrics are shown, indicating that enclosing neighborhoods may be a promising adaptive neighborhood definition for other local learning tasks as well, depending on the density of training samples.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2008
Accession Number
ADA480004

Entities

People

  • Eric K. Garcia
  • Erika Chin
  • Maya R. Gupta

Organizations

  • University of Washington

Tags

Communities of Interest

  • Materials and Manufacturing Processes

DTIC Thesaurus Topics

  • Accuracy
  • Algorithms
  • Applied Computer Science
  • Calibration
  • Computer Science
  • Data Science
  • Electrical Engineering
  • Engineering
  • Geometry
  • Image Processing
  • Interpolation
  • Learning
  • Measurement
  • Spatial Distribution
  • Three Dimensional
  • Training
  • Validation

Readers

  • Neural Network Machine Learning.
  • Operations Research
  • Regression Analysis.