A review of the Dividend Discount Model: from deterministic to stochastic models
Guglielmo D'Amico, Riccardo De Blasis

TL;DR
This paper reviews the evolution of dividend discount models from basic deterministic forms to advanced stochastic models, emphasizing dividend process modeling and incorporating Markov chains for more realistic valuation and risk assessment.
Contribution
It provides a comprehensive overview of the progression from classical to modern stochastic dividend models, highlighting recent advancements using Markov chains.
Findings
Markov chain models improve dividend valuation accuracy.
Stochastic models offer better risk measurement for stocks.
Recent models incorporate state-dependent dividend processes.
Abstract
This chapter presents a review of the dividend discount models starting from the basic models (Williams 1938, Gordon and Shapiro 1956) to more recent and complex models (Ghezzi and Piccardi 2003, Barbu et al. 2017, D'Amico and De Blasis 2018) with a focus on the modelling of the dividend process rather than the discounting factor, that is assumed constant in most of the models. The Chapter starts with an introduction of the basic valuation model with some general aspects to consider when performing the computation. Then, Section 1.3 presents the Gordon growth model (Gordon 1962) with some of its extensions (Malkiel 1963, Fuller and Hsia 1984, Molodovsky et al. 1965, Brooks and Helms 1990, Barsky and De Long 1993), and reports some empirical evidence. Extended reviews of the Gordon stock valuation model and its extensions can be found in Kamstra (2003) and Damodaran (2012). In Section…
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