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Statistical and computational techniques for extraction of underlying systematic risk factors: a comparative study in the Mexican Stock Exchange
Author(s) -
Rogelio Ladrón de Guevara Cortés,
Salvador Torra Porras,
Enric Monte
Publication year - 2021
Publication title -
revista finanzas y política económica/revista finanzas y política económica
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.121
H-Index - 3
eISSN - 2248-6046
pISSN - 2011-7663
DOI - 10.14718/revfinanzpolitecon.v13.n2.2021.9
Subject(s) - principal component analysis , computer science , stock exchange , econometrics , independent component analysis , systematic risk , dimension (graph theory) , dimensionality reduction , artificial intelligence , mathematics , economics , finance , pure mathematics
This paper compares the dimension reduction or feature extraction techniques, e.g., Principal Component Analysis, Factor Analysis, Independent Component Analysis and Neural Networks Principal Component Analysis, which are used as techniques for extracting the underlying systematic risk factors driving the returns on equities of the Mexican Stock Exchange, under a statistical approach to the Arbitrage Pricing Theory. We carry out our research according to two different perspectives. First, we evaluate them from a theoretical and matrix scope, making a parallelism among their particular mixing and demixing processes, as well as the attributes of the factors extracted by each method. Secondly, we accomplish an empirical study in order to measure the level of accuracy in the reconstruction of the original variables.

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