From Demography (R0) to State Dependent Life

The second chapter of the book was a development of State Dependent Life History 15 Theory (SDLHT) implemented by Stochastic Dynamic Programming (SDP). Although I 16 have written two books (Mangel and Clark (1988) and Clark and Mangel (2000)) and a 17 review article (Mangel and Ludwig 1992) on this topic, my skill at presenting the ideas 18 has continued to develop in the last two decades. This tutorial is the best that I can do 19 at the present time. 20 Topics incude 21 • An introduction laying out the general approach, including a brief discussion of the 22 underlying genetic basis and the choice of fitness proxies, and the notion of the 23

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