We explore the statistical and economic importance of restrictions on the dynamics of risk compensation from the perspective of a real-time Bayesian learner who predicts bond excess returns using dynamic term structure models (DTSMs). The question on whether potential statistical predictability offered by such models can generate economically significant portfolio benefits out-of-sample, is revisited while imposing restrictions on their risk premia parameters. To address this question, we propose a methodological framework that successfully handles sequential model search and parameter estimation over the restriction space in real time, allowing investors to revise their beliefs when new information arrives, thus informing their asset allocation and maximising their expected utility. Empirical results reinforce the argument of sparsity in the market price of risk specification since we find strong evidence of out-of-sample predictability only for those models that allow for level risk to be priced and, additionally, only one or two of these risk premia parameters to be different than zero. Most importantly, such statistical evidence is turned into economically significant utility gains, across prediction horizons, different time periods and portfolio specifications. In addition to identifying successful DTSMs, the sequential version of the stochastic search variable selection (SSVS) scheme developed can be applied on its own and also offer useful diagnostics monitoring key quantities over time. Connections with predictive regressions are also provided.
翻译:我们从实时贝叶斯学习者的角度探讨风险补偿动态限制的统计和经济重要性,该学习者利用动态术语结构模型预测债券超额回报率。关于这些模型提供的潜在统计可预测性能否产生具有经济意义的投资组合好处而不具有抽样价值的问题,在对其风险溢价参数施加限制的同时,将重新审查这一问题。为解决这一问题,我们提出了一个方法框架,成功地处理实时限制空间的顺序模型搜索和参数估算,允许投资者在新信息到来时修改其信念,从而为其资产分配提供信息,并最大限度地发挥预期效用。经验性结果加强了风险市场价格规格中松散的论据,因为我们发现强有力的证据表明,只有那些允许对水平风险定价的模型,而且只有1或2个风险溢价参数不同于零。最重要的是,这类统计证据在预测范围、不同时段和组合规格中都转化为具有经济意义的使用效益的效用收益。除了确定成功的DTSMS外,SMS的顺序版本风险价格规格也加强了风险市场价格的宽松性,因为我们发现这些模型外,只有那些允许对水平风险进行定价,此外,只有1或2个风险溢值参数参数参数参数值参数的精确度预测选择。