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Sparsity and stability for minimum-variance portfolios
by
Steinert, Rick
, Shivarova, Antoniya
, Husmann, Sven
in
Analysis of covariance
/ Assets
/ Estimation
/ Optimization
/ Popularity
/ Portfolios
/ Risk assessment
/ Sample variance
/ Sparsity
/ Stability
2022
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Do you wish to request the book?
Sparsity and stability for minimum-variance portfolios
by
Steinert, Rick
, Shivarova, Antoniya
, Husmann, Sven
in
Analysis of covariance
/ Assets
/ Estimation
/ Optimization
/ Popularity
/ Portfolios
/ Risk assessment
/ Sample variance
/ Sparsity
/ Stability
2022
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Journal Article
Sparsity and stability for minimum-variance portfolios
2022
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Overview
The popularity of modern portfolio theory has decreased among practitioners because of its unfavorable out-of-sample performance. Estimation risk tends to affect the optimal weight calculation noticeably, especially when a large number of assets are considered. To overcome these issues, many methods have been proposed in recent years, but only a few address practically relevant questions related to portfolio allocation. This study therefore uses different covariance estimation techniques, combines them with sparse model approaches, and includes a turnover constraint that induces stability. We use two datasets of the S&P 500 to create a realistic data foundation for our empirical study. We discover that it is possible to maintain the low-risk profile of efficient estimation methods while automatically selecting only a subset of assets and further inducing low portfolio turnover. Moreover, we find that simply using LASSO is insufficient to lower turnover when the model’s tuning parameter can change over time.
Publisher
Palgrave Macmillan
Subject
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