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Home > Research > Staff Working Paper No. 575: Long-run priors for term structure models - Andrew Meldrum and Matt Roberts-Sklar
 

Staff Working Paper No. 575: Long-run priors for term structure models - Andrew Meldrum and Matt Roberts-Sklar

18 December 2015

​Long-run priors for term structure models
Andrew Meldrum and Matt Roberts-Sklar

Dynamic no-arbitrage term structure models are popular tools for decomposing bond yields into expectations of future short-term interest rates and term premia. But there is insufficient information in the time series of observed yields to estimate the unconditional mean of yields in maximally flexible models. This can result in implausibly low estimates of long-term expected future short-term interest rates, as well as considerable uncertainty around those estimates. This paper proposes a tractable Bayesian approach for incorporating prior information about the unconditional means of yields. We apply it to UK data and find that with reasonable priors it results in more plausible estimates of the long-run average of yields, lower estimates of term premia in long-term bonds and substantially reduced uncertainty around these decompositions in both affine and shadow rate term structure models.

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