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Brady, Joshua, and Donald R. Brockmeier. 2021. “Bias-Variance Tradeoff: A Property-Casualty Modeler’s Perspective.” Variance 13 (2): 207–32.
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  • Figure 1. Training and test error vs. model complexity
  • Figure 2. Visual depiction of bias and variance
  • Figure 3. Bias-variance tradeoff simulation: the “true function”
  • Figure 4. Bias-variance tradeoff simulation: the “true function”
  • Figure 5. The simplest model: high bias and low variance
  • Figure 6. Slight increase in complexity: less bias, more variance
  • Figure 7. Most complex model: virtually no bias, high variance
  • Figure 8. Prediction error, squared bias and variance by model
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Abstract

The concept of bias-variance tradeoff provides a mathematical basis for understanding the common modeling problem of underfitting vs. overfitting. While bias-variance tradeoff is a standard topic in machine learning discussions, the terminology and application differ from that of actuarial literature. In this paper we demystify the bias-variance decomposition by providing a detailed foundation for the theory. Basic examples, a simulation, and a connection to credibility theory are provided to help the reader gain an appreciation for the connections between the actuarial and machine learning perspectives for balancing model complexity. In addition, we extend the traditional bias-variance decomposition to the GLM deviance measure.