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On the Differential Analysis of Enterprise Valuation
Methods as a Guideline for Unlisted Companies
Assessment (II): Applying Machine-Learning
Techniques for Unbiased Enterprise Value
Assessment
Título : On the Differential Analysis of Enterprise Valuation
Methods as a Guideline for Unlisted Companies
Assessment (II): Applying Machine-Learning
Techniques for Unbiased Enterprise Value
Assessment |
Autor : Vayas-Ortega, Germania Soguero-Ruiz, Cristina Rodríguez Ibáñez, Margarita Rojo-Álvarez, José Luis Gimeno Blanes, Francisco Javier |
Editor : MDPI |
Departamento: Departamentos de la UMH::Ingeniería de Comunicaciones |
Fecha de publicación: 2020-07 |
URI : https://hdl.handle.net/11000/30607 |
Resumen :
The search for an unbiased company valuation method to reduce uncertainty, whether
or not it is automatic, has been a relevant topic in social sciences and business development for
decades. Many methods have been described in the literature, but consensus has not been reached.
In the companion paper we aimed to review the assessment capabilities of traditional company
valuation model, based on company’s intrinsic value using the Discounted Cash Flow (DCF).
In this paper, we capitalized on the potential of exogenous information combined with Machine
Learning (ML) techniques. To do so, we performed an extensive analysis to evaluate the predictive
capabilities with up to 18 different ML techniques. Endogenous variables (features) related to
value creation (DCF) were proved to be crucial elements for the models, while the incorporation of
exogenous, industry/country specific ones, incrementally improves the ML performance. Bagging
Trees, Supported Vector Machine Regression, Gaussian Process Regression methods consistently
provided the best results. We concluded that an unbiased model can be created based on endogenous
and exogenous information to build a reference framework, to price and benchmark Enterprise Value
for valuation and credit risk assessment.
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Palabras clave/Materias: company valuation enterprise value machine learning feature selection supervised techniques supported vector machine decision trees boosting trees |
Tipo documento : application/pdf |
Derechos de acceso: info:eu-repo/semantics/openAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional |
DOI : https://doi.org/ 10.3390/app10155334 |
Aparece en las colecciones: Artículos Ingeniería Comunicaciones
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La licencia se describe como: Atribución-NonComercial-NoDerivada 4.0 Internacional.