cover image: 3D-PCA: Factor Models with Restrictions

20.500.12592/7d7ws99

3D-PCA: Factor Models with Restrictions

21 Mar 2024

This paper proposes latent factor models for multidimensional panels called 3D-PCA. Factor weights are constructed from a small set of dimension-specific building blocks, which give rise to proportionality restrictions of factor weights. While the set of feasible factors is restricted, factors with long/short structures often found in pricing factors are admissible. I estimate the model using a 3-dimensional data set of double-sorted portfolios of 11 characteristics. Factors estimated by 3D-PCA have higher Sharpe ratios and smaller cross-sectional pricing errors than models with PCA or Fama-French factors. Since factor weights are subject to restrictions, the number of free parameters is small. Consequently, the model produces robust results in short time series and performs well in recursive out-of-sample estimations.
econometrics financial economics estimation methods portfolio selection and asset pricing

Authors

Martin Lettau

Acknowledgements & Disclosure
I thank Ben Hebert, and the seminar participants at Berkeley-Haas, Columbia, and Johns Hopkins for their helpful comments. The views expressed herein are those of the author and do not necessarily reflect the views of the National Bureau of Economic Research.
DOI
https://doi.org/10.3386/w32261
Published in
United States of America

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