Understanding Volatility-Managed Portfolios

2020 ◽  
Author(s):  
Georg Cejnek ◽  
Florian Mair
Keyword(s):  
2018 ◽  
Author(s):  
Xiao Qiao ◽  
Sibo Yan ◽  
Binbin Deng
Keyword(s):  

2019 ◽  
Vol 46 (4) ◽  
pp. 530-547
Author(s):  
Elizabeth Tashjian

Purpose Many undergraduates major in business in hopes of being well-prepared for a career. However, Arum and Roksa (2010) find business students perform poorly relative to peers on measures of academic gains and employers report that few college graduates are well-prepared for business careers (Lumina Foundation, 2013). Experiential courses have the potential to engage students deeply and encourage critical thinking while developing important business skills. The paper aims to discuss these issues. Design/methodology/approach This paper proposes several attributes of successful experiential courses and uses a student-managed portfolio as an example of a successful model. Findings Student-managed portfolios can improve educational and career outcomes for students. Practical implications Student-managed investment funds can provide a vehicle for teaching students research, critical thinking and writing skills while encouraging them to integrate knowledge from a broad range of business disciplines to understand a firm’s business model. Originality/value While experiential programs are touted as addressing these shortcomings, many academics remain skeptical of experiential programs which too often focus on showy trips, passively listening to important people or performing shallow analyses at the expense of developing a deep understanding of how to identify and solve complex problems. This paper offers some insight into important features of a successful experiential program.


2019 ◽  
Vol 182 ◽  
pp. 59-63
Author(s):  
Bernd Hanke ◽  
Aneel Keswani ◽  
Garrett Quigley ◽  
David Stolin ◽  
Maxim Zagonov

2018 ◽  
Vol 18 (4) ◽  
pp. 656-714 ◽  
Author(s):  
Bertille Antoine ◽  
Kevin Proulx ◽  
Eric Renault

Abstract This article is motivated by the need to bridge some gap between modern asset pricing theory and recent developments in econometric methodology. While asset pricing theory enhances the use of conditional pricing models, econometric inference of conditional models can be challenging due to misspecification or weak identification. To tackle the case of misspecification, we utilize the conditional Hansen and Jagannathan (1997) (HJ) distance as studied by Gagliardini and Ronchetti (2016), but we set the focus on interpretation and estimation of the pseudo-true value defined as the argument of the minimum of this distance. While efficient Generalized Method of Moments (GMM) has no meaning for estimation of a pseudo-true value, the HJ-distance not only delivers a meaningful loss function, but also features an additional advantage for the interpretation and estimation of managed portfolios whose exact pricing characterizes the pseudo-true pricing kernel (stochastic discount factor (SDF)). For conditionally affine pricing kernels, we can display some managed portfolios which are well-defined independently of the pseudo-true value of the parameters, although their exact pricing is achieved by the pseudo-true SDF. For the general case of nonlinear SDFs, we propose a smooth minimum distance (SMD) estimator (Lavergne and Patilea, 2013) that avoids a focus on specific directions as in the case of managed portfolios. Albeit based on kernel smoothing, the SMD approach avoids instabilities and the resulting need of trimming strategies displayed by classical local GMM estimators when the density function of the conditioning variables may take arbitrarily small values. In addition, the fact that SMD may allow fixed bandwidth asymptotics is helpful regarding the curse of dimensionality. In contrast with the true unknown value for a well-specified model, the estimated pseudo-true value, albeit defined in a time-invariant (unconditional) way, may actually depend on the choice of the state variables that define fundamental factors and their scaling weights. Therefore, we may not want to be overly parsimonious about the set of explanatory variables. Finally, following Antoine and Lavergne (2014), we show how SMD can be further robustified to deal with weaker identification contexts. Since SMD can be seen as a local extension of the method of jackknife GMM (Newey and Windmeijer, 2009), we characterize the Gaussian asymptotic distribution of the estimator of the pseudo-true value using classical U-statistic theorems.


2016 ◽  
Vol 33 (3-4) ◽  
Author(s):  
Weilong Guo ◽  
Andreea Minca ◽  
Li Wang

AbstractThis paper analyzes the topology of the network of common asset holdings, where nodes represent managed portfolios and edge weights capture the impact of liquidations. Asset holdings data is extracted from the 13F filings. We consider the degree centrality as the degree in the subnetwork of weak links, where weak links are those that lead to significant liquidations. We explore the applications of this network representation to clustering and forecasting. To validate the weight attribution and the threshold used to define the weak links, we show that the degree centrality is correlated with excess returns, and is significant after we control for the Carhart four factors. The network of weak links has a scale free structure, similar to financial networks of balance sheet exposures. Moreover, a small number of clusters, densely linked, concentrate a significant proportion of the portfolios.


2020 ◽  
Vol 83 ◽  
pp. 01031
Author(s):  
Miroslav Kmeťko ◽  
Eduard Hyránek

One of the best-known Capital Asset Pricing Model (CAP/M) provides us with a methodology for measuring the relationship between the risk premium and the impact of leverage on expected returns. However, this model is not used only to value the cost of capital but also to evaluate the performance of managed portfolios. We will test how the expected return changes in percent by changing the debt-equity ratio and the tax rate based on following assumptions: market return 7%, risk-free rate of return 1% and beta 1.2. These assumptions will be constant and we will change the debt-equity ratio and tax rate. Based on these results, it is clear that the change in profitability varies, in relation to the change of the DE ratio by one tenth. As for changes I n tax rates, changes in expected profitability are not entirely in direct proportion to these changes.


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