国债收益的可预测性和投资者情绪

IF 1.5 3区 经济学 Q3 BUSINESS, FINANCE
Chen Gu, Xu Guo, Ruwan Adikaram, Kam C. Chan, Jing Lu
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引用次数: 0

摘要

我们记录了机构投资者的国债市场投资者情绪(TSENT)对债券风险溢价的有力预测。具体来说,TSENT 可以正向预测样本内外的国债超额收益。与传统的债券收益预测指标相比,TSENT 的预测收益是递增的:这些因素包括:法玛-布利斯(Fama-Bliss)远期利差、科克伦-皮亚泽西(Cochrane-Piazzesi)远期利率因子、路德维格森-纳格(Ludvigson-Ng)宏观因子,以及投资者情绪指数和偏最小二乘法情绪指数等股票市场情绪代用指标。资产配置分析表明,TSENT 的预测能力对投资者具有经济价值。最后,我们表明,与 TSENT 相关的时间序列债券风险溢价预测能力与其对宏观经济表现的预测能力有关,如薪资就业、失业率和工业生产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Treasury return predictability and investor sentiment

We document that the Treasury market investor sentiment (TSENT) of institutional investors is a powerful predictor of bond risk premia. Specifically, TSENT positively predicts Treasury bond excess returns in and out of sample. The forecasting gains of TSENT are incremental to those in conventional bond return predictors: Fama–Bliss forward spreads, Cochrane–Piazzesi forward rate factor, and Ludvigson–Ng macro factor, as well as equity market sentiment proxies such as the investor sentiment index and the partial least squares sentiment index. Asset allocation analysis indicates the forecasting power of TSENT is economically valuable to investors. Finally, we show that the time-series bond risk premia predictability associated with TSENT relates to its predictive power for macroeconomic performance, such as payroll employment, unemployment rate, and industrial production.

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来源期刊
Journal of Financial Research
Journal of Financial Research BUSINESS, FINANCE-
CiteScore
1.70
自引率
0.00%
发文量
0
期刊介绍: The Journal of Financial Research(JFR) is a quarterly academic journal sponsored by the Southern Finance Association (SFA) and the Southwestern Finance Association (SWFA). It has been continuously published since 1978 and focuses on the publication of original scholarly research in various areas of finance such as investment and portfolio management, capital markets and institutions, corporate finance, corporate governance, and capital investment. The JFR, also known as the Journal of Financial Research, provides a platform for researchers to contribute to the advancement of knowledge in the field of finance.
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