Statistical Models
Mack-Method
The Mack chain ladder method is a statistical method to estimate developmental factors in the chain ladder method. The method assumes the following:
- Distinct rows of the array/matrix [math]C_{ij}[/math] are independent.
- [math]\operatorname{E}[C_{i,k+1} | C_{i1},\ldots,C_{ik}] = f_k C_{i,k}[/math] with [math]f_k[/math] a constant.
- [math]\operatorname{Var}[C_{i,k+1} | C_{i1},\ldots,C_{ik}] = \sigma_{k}^2 C_{i,k}[/math] with [math]\sigma_k[/math] a constant.
The goal of the Mack-method is to estimate the factors [math]f_k[/math] using the observable [math]C_{ik}[/math]. The estimators, denoted [math]\hat{f}_k[/math], then become selected age-to-age factors. The estimators are defined as follows:
They have the following desirable properties:
- [math]\hat{f_k}[/math] is an unbiased estimator for [math]f_k[/math]: [math]\operatorname{E}[\hat{f_k}] = f_k[/math].
- The estimator [math]\hat{f_k}[/math] is a minimum variance estimator in the following sense:
with [math]A_k = \cup_{i=1}^{I-k}\{C_{i1},\ldots,C_{ik}\} [/math] the claims information contained in the first [math]k[/math] periods.
<proofs page="guide_proofs:A523054c80" section="mack-minvar" label="Mack-Method Estimator" />
Applying the method to the (reported claims) data in Standard Estimation Techniques , we obtain the following selected factors:
12-24 | 24-36 | 36-48 | 48-60 |
---|---|---|---|
1.186 | 1.059 | 1.027 | 1.012 |