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Halliwell, Leigh J. 2007. “Chain-Ladder Bias.” Variance 1 (2): 214–47.
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  • Figure 1A. First link, 12 to 24 months
  • Figure 1B. Second link, 24 to 36 months
  • Figure 1C. Third link, 36 to 48 months
  • Figure 1D. Fourth link, 48 to 60 months
  • Figure 2A. Empirical heights of fathers and sons
  • Figure 2B. Sons’ empirical heights versus fathers’ genetic heights
  • Figure 2C. Fathers’ heights after doubling environmental effect
  • Exhibit 2. Schedule P–Part D–Workers’ Compensation
    Cumulative paid net losses and defence and cost containment expenses
  • Exhibit 3. Schedule P–Part F–Section 2–Medical Malpractice–Claims-Made
    Cumulative paid net losses and defence and cost containment expenses
  • Exhibit 4. Schedule P–Part R–Section 1–Products Liability–Occurrence
    Cumulative case-incurred net losses and defence and cost containment expenses
  • Exhibit 5. 12-24 diagnosis of the Brosius triangle
  • Exhibit 7A. Additive model with solution
  • Exhibit 7B. Additive model predictions
  • Exhibit 8A. Stanard-Bühlmann model with solution
  • Exhibit 8B. Stanard-Bühlmann predictions
  • Exhibit 9A. Bornhuetter-Ferguson model with solution
  • Exhibit 9B. Bornhuetter-Ferguson predictions
  • Figure C.1.

Abstract

Over the past 20 years many actuaries have claimed and argued that the chain-ladder method of loss reserving is biased; nonetheless, the chain-ladder method remains the favorite tool of reserving actuaries. Nearly everyone who acknowledges this bias believes it to be upward. Although supporting these claims and beliefs, the author proposes herein to deal with two deeper issues. First, does something inherent in the chain-ladder method dispose it to bias? Is there a diagnostic whereby one can predict how the chain-ladder method will fare with a particular loss triangle? To resolve this issue basic regression theory will suffice, specifically, the much misunderstood concept of regression toward the mean. And second, what lessons can we learn from the phenomenon of bias; in particular, is there a difference between actuarial methods and statistical models? These two issues constitute the reason and meaning of chain-ladder bias.