预测未来收益和风险溢价:蓝点仿射模型

R. Rebonato, R. Ronzani
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引用次数: 1

摘要

作者提出了一个新的仿射模型,它可以预测过去十年货币条件下的未来收益率和风险溢价,比目前最先进的统计模型更有说服力。尽管使用了非常不同的信息来源,但它在风险溢价方面产生的变化与最流行的统计回报预测因素非常相似。然而,它预测的风险溢价和预期水平非常不同,而且他们认为更可信。该模型非常简洁,具有财务动机,可以用很少的可解释参数准确地拟合市场收益率,并且自然地恢复收益率的联合动态的重要定性特征。主题:个体因素/风险溢价分析,基于因素的模型,统计方法主要发现•与当前最先进的收益率曲线统计模型相比,一个新的期限结构仿射模型显示出更合理的风险溢价和预期估计。•该模型使用的信息来自美联储对未来联邦基金利率的预期。•该模型在财务上是合理的,非常节俭,并且非常适合观察到的市场收益率。
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Predicting Future Yields and Risk Premia: The Blue-Dot Affine Model
The authors present a new affine model that can predict future yields and risk premia in the monetary conditions of the past decade more convincingly than current state-of-the-art statistical models. Despite making use of very different sources of information, it produces remarkably similar changes in risk premia as the most popular statistical return-predicting factors. However, it predicts very different—and, they argue, more believable—levels for risk premia and expectations. The model is extremely parsimonious, is financially motivated, fits market yields accurately with very few interpretable parameters, and naturally recovers important qualitative features of the joint ℙ and ℚ dynamics of yields. TOPICS: Analysis of individual factors/risk premia, factor-based models, statistical methods Key Findings • A new affine model of the term structure is shown to give more plausible estimates of risk premia and expectations than the current state-of-the-art yield curve statistical models. • The model uses information from the Fed expectations of the future federal funds rate. • The model is financially justifiable, very parsimonious, and fits observed market yields very well.
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来源期刊
Journal of Fixed Income
Journal of Fixed Income Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
1.10
自引率
0.00%
发文量
23
期刊介绍: The Journal of Fixed Income (JFI) provides sophisticated analytical research and case studies on bond instruments of all types – investment grade, high-yield, municipals, ABSs and MBSs, and structured products like CDOs and credit derivatives. Industry experts offer detailed models and analysis on fixed income structuring, performance tracking, and risk management. JFI keeps you on the front line of fixed income practices by: •Staying current on the cutting edge of fixed income markets •Managing your bond portfolios more efficiently •Evaluating interest rate strategies and manage interest rate risk •Gaining insights into the risk profile of structured products.
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