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During the past decade, the Chinese bond market has been rapidly developing. The percentage of bond to total social funding is constantly increasing. The structure and behavior of investors are crucial to the construction of China’s bond market. Due to specific credit risks, bond market regulation usually involves in rules

During the past decade, the Chinese bond market has been rapidly developing. The percentage of bond to total social funding is constantly increasing. The structure and behavior of investors are crucial to the construction of China’s bond market. Due to specific credit risks, bond market regulation usually involves in rules to control investor adequancy. It is heatedly discussed among academia and regulators about whether individual investors are adequate to directly participate in bond trading. This paper focuses on the comparison between individual and institutional bond investors, especially their returns and risks. Based on the comparison, this paper provides constructive suggestions for China’s bond market development and the bond market investor structure.
ContributorsLiu, Shaotong (Author) / Gu, Bin (Thesis advisor) / Zhu, Ning (Thesis advisor) / Yan, Hong (Committee member) / Arizona State University (Publisher)
Created2016
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Description近年来,中国内地FOF业务发展迅速,但在业务发展初期的实践中,FOF管理人在遴选基金资产和预测其未来收益等方面遇到诸多困难,传统的FOF组合构建技术往往不理想。本文借鉴海外因子配置相关理论,尝试通过归因分析基金的收益来源,寻找能深度刻画基金经理管理能力的特质因子,创新性地提出了基于权益类基金的特质因子构建FOF组合的新方法。本文选择100家权益类私募基金,通过因子拆解剥离了市场、行业、风格等共同影响因素,遴选出特质因子表现更优的基金经理,而不是仅仅选择过往业绩好的基金经理,并基于特质因子构建一组FOF组合,与此同时,运用传统方法构建基于基金资产的另一组FOF组合,对比两种组合方法的组合绩效,实证结果显示基于特质因子的FOF组合绩效更优。本文进一步运用转移概率矩阵和相关性分析,找到了基于特质因子的FOF组合绩效更优的证据,即特质因子延续性更好和相关性更低。与基于基金资产的FOF组合配置传统方法相比,由于基金的特质因子延续性更好,运用历史数据预测未来收益的确定性相对更好;基金的特质因子之间的相关性低,大幅增强了FOF组合配置的稳定性和分散性。总体来讲,基于特质因子的FOF组合配置方法为FOF管理人提供了一个更量化、更有效、更稳健的组合配置新路径,能有效提升FOF组合配置的绩效。

关键词: FOF、因子投资、组合配置、特质因子
ContributorsLi, Jie (Author) / Zhu, Hongquan (Thesis advisor) / Yan, Hong (Thesis advisor) / Liang, Bing (Committee member) / Arizona State University (Publisher)
Created2020