scholarly journals Chinese securities investment funds: the role of luck in performance

2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Jun Gao ◽  
Niall O’Sullivan ◽  
Meadhbh Sherman

Purpose The Chinese fund market has witnessed significant developments in recent years. However, although there has been a range of studies assessing fund performance in developed industries, the rapidly developing fund industry in China has received very little attention. This study aims to examine the performance of open-end securities investment funds investing in Chinese domestic equity during the period May 2003 to September 2020. Specifically, applying a non-parametric bootstrap methodology from the literature on fund performance, the authors investigate the role of skill versus luck in this rapidly evolving investment funds industry. Design/methodology/approach This study evaluates the performance of Chinese equity securities investment funds from 2003–2020 using a bootstrap methodology to distinguish skill from luck in performance. The authors consider unconditional and conditional performance models. Findings The bootstrap methodology incorporates non-normality in the idiosyncratic risk of fund returns, which is a major drawback in “conventional” performance statistics. The evidence does not support the existence of “genuine” skilled fund managers. In addition, it indicates that poor performance is mainly attributable to bad stock picking skills. Practical implications The authors find that the top-ranked funds with positive abnormal performance are attributed to “good luck” not “good skill” while the negative abnormal performance of bottom funds is mainly due to “bad skill.” Therefore, sensible advice for most Chinese equity investors would be against trying to “pick winners funds” among Chinese securities investment funds but it would be recommended to avoid holding “losers.” At the present time, investors should consider other types of funds, such as index/tracker funds with lower transactions. In addition, less risk-averse investors may consider Chinese hedge funds [Zhao (2012)] or exchange-traded fund [Han (2012)]. Originality/value The paper makes several contributions to the literature. First, the authors examine a wide range (over 50) of risk-adjusted performance models, which account for both unconditional and conditional risk factors. The authors also control for the profitability and investment risks in Fama and French (2015). Second, the authors select the “best-fit” model across all risk-adjusted models examined and a single “best-fit” model from each of the three classes. Therefore, the bootstrap analysis, which is mainly based on the selected best-fit models, is more precise and robust. Third, the authors reduce the possibility that findings may be sample-period specific or may be a survivor (upward) biased. Fourth, the authors consider further analysis based on sub-periods and compare fund performance in different market conditions to provide more implications to investors and practitioners. Fifth, the authors carry out extensive robustness checks and show that the findings are robust in relation to different minimum fund histories and serial correlation and heteroscedasticity adjustments. Sixth, the authors use higher frequency weekly data to improve statistical estimation.

2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Crystal Yan Lin

PurposeThe purpose of this paper is to investigate the embedded challenges of student-managed investment funds (SMIFs) and provide recommendations to work with these issues.Design/methodology/approachThe paper analyzes and critiques the ways SMIFs are structured and operated and makes several suggestions.FindingsThe paper details seven unique challenges of SMIFs compared to professionally managed investment funds. The source of these challenges is that SMIFs are set up for educational purposes, which makes the operation and management different from performance-focused investment funds. The paper proposes several recommendations on how to align the educational focus with fund performance.Originality/valueThe paper is original and based on primary research.


2020 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Qiang Bu ◽  
Jeffrey Forrest

PurposeThe purpose of this study is to investigate whether the direct and indirect sentiment measures are similar in explaining mutual fund performance.Design/methodology/approachThe authors examine the role of direct and indirect sentiment measures on fund performance in two scenarios. One is when a sentiment measure is added to market models, and the other is when it used independently. Also, the authors propose a system science theory to explain the findings.FindingsThe authors find that both direct and indirect sentiment measures are integral to the benchmark models to explain fund performance. However, while the explanatory power of the direct sentiment index is robust when used independently or collectively, the indirect sentiment measures can explain fund performance only when used along with other market factors.Originality/valueGiven the number of sentiment measures, it is critical to determine whether these measures contain the same information of sentiment. This paper represents the first study on this topic.


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