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Posts feedConditional tail expectations
In a recent posting I looked at the calculation of percentiles and quantiles, which underpin many calculations for ICA and Solvency II. Simply put, an \(\alpha\)-quantile is the value which is not expected to be exceeded \(\alpha\times 100\)% of the time. This value is denoted \(Q_{\alpha}\). Mathematically, for a continuous random variable, \(X\), and a given probability level \(\alpha\) we have:
$$\Pr(X\leq Q_\alpha)=\alpha$$
Don't cut corners
Quantiles and percentiles
Creative thinking around longevity risk
Excel's limits
Wind-up and buy-out - the cheaper option?
(Un)Fit for purpose
Demography's dark matter: measuring cohort effects
My last blog generated quite a bit of interest so I thought I'd write again on cohorts. It's easy to (a) demonstrate the existence of a cohort effect and to (b) fit models with cohort terms, but not so easy to (c) interpret or forecast the fitted cohort coefficients. In this blog I'll fit the following three models:
Forecasting with cohorts for a mature closed portfolio
At a previous seminar I discussed forecasting with the age-period-cohort (APC) model:
$$ \log \mu_{i,j} = \alpha_i + \kappa_j + \gamma_{j-i}$$