
doi: 10.3982/ecta8446
Summary: This paper investigates the behavior of asset prices in an endowment economy in which a representative agent with power utility consumes the dividends of multiple assets. The assets are Lucas trees; a collection of Lucas trees is a Lucas orchard. The model generates return correlations that vary endogenously, spiking at times of disaster. Since disasters spread across assets, the model generates large risk premia even for assets with stable cashflows. Very small assets may comove endogenously and hence earn positive risk premia even if their cashflows are independent of the rest of the economy. I provide conditions under which the variation in a small asset's price-dividend ratio can be attributed almost entirely to variation in its risk premium.
comovement, small assets, Lucas tree, disasters, complex analysis, Asset pricing models, multiple assets, cumulant-generating function, Fourier transform, Special types of economic markets (including Cournot, Bertrand), jel: jel:G12
comovement, small assets, Lucas tree, disasters, complex analysis, Asset pricing models, multiple assets, cumulant-generating function, Fourier transform, Special types of economic markets (including Cournot, Bertrand), jel: jel:G12
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