This paper develops a methodology, building on a local principal component analysis approach, for inference on the pricing ability of conditional asset pricing models designed to mitigate the effect of omitted risk factors and misspecified conditional dynamics. The methodology is designed to exploit the rich information available in large cross sections of individual stocks. Monte Carlo experiments and an empirical application demonstrate the benefits of this methodology over existing approaches.

Factor Models for Conditional Asset Pricing / Zaffaroni, Paolo. - In: JOURNAL OF POLITICAL ECONOMY. - ISSN 0022-3808. - 133:8(2025), pp. 2615-2642.

Factor Models for Conditional Asset Pricing

ZAFFARONI
2025

Abstract

This paper develops a methodology, building on a local principal component analysis approach, for inference on the pricing ability of conditional asset pricing models designed to mitigate the effect of omitted risk factors and misspecified conditional dynamics. The methodology is designed to exploit the rich information available in large cross sections of individual stocks. Monte Carlo experiments and an empirical application demonstrate the benefits of this methodology over existing approaches.
2025
cross sectional asset pricing
01 Pubblicazione su rivista::01a Articolo in rivista
Factor Models for Conditional Asset Pricing / Zaffaroni, Paolo. - In: JOURNAL OF POLITICAL ECONOMY. - ISSN 0022-3808. - 133:8(2025), pp. 2615-2642.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1768346
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