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BiasVariance Tradeoff

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Bias-Variance Tradeoff. Presented by Yang Yu. yyu3_at_glue.umd.edu. 9/27/09. 2. Outline ... Generalization performance of a learning method relates to its prediction ... – PowerPoint PPT presentation

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Title: BiasVariance Tradeoff


1
Bias-Variance Tradeoff
  • Presented by Yang Yu
  • yyu3_at_glue.umd.edu

2
Outline
  • Generalization Performance of Learning Methods
  • Bias, Variance and Model Complexity
  • The Bias-Variance Decomposition
  • Example Bias-Variance Tradeoff
  • Summary

3
Generalization Performance of Learning methods
  • Generalization performance of a learning method
    relates to its prediction capability on
    independent test data
  • Assessment of generalization performance is
    extremely important in practice
  • Bias and variance are important in assessing
    generalization performance

4
Bias, Variance and Model Complexity
  • Test error and training error
  • Test error
  • Expected prediction error over an independent
    test sample
  • Training error
  • Average loss over the training sample
  • X input vector Y target variable
  • prediction model
  • L loss function measuring error between Y
    and

5
  • Behavior of test sample and training sample error
    as the model complexity is varied

6
Bias, Variance and Model Complexity
  • The relationship of bias, variance and model
    complexity
  • The goal is to find a model with optimal
    complexity that gives minimum test error

7
The Bias-Variance Decomposition
  • Assume , where and
    the expression for the expected prediction
    error of a regression fit with squared-error loss
    is

8
The Bias-Variance Decomposition for
K-nearest-neighbor Regression
k inversely related to the model complexity
9
The Bias-Variance Decomposition for Linear Model
  • where
  • Average of the prediction error
  • The model complexity is related with p.

10
The Bias-Variance Decomposition for Linear
Modelmore on bias
Let denotes the parameters of the
best-fitting linear approximation to f , i.e,
  • The estimation bias is

11
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12
Example Bias-Variance Tradeoff
13
Summary
  • With the increase (decrease) of model complexity,
    estimation bias decreases(increases) but variance
    increases(decreases)
  • Methods of estimating the test error should be
    found out to minimize the error with optimal
    model complexity by tuning the model parameters
  • Bias-variance tradeoff behaves differently with
    different loss function, and so does the choice
    of tuning paramenters
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