Please use this identifier to cite or link to this item: http://dspace.dtu.ac.in:8080/jspui/handle/repository/18010
Title: An Empirical Study on Various Stock Valuation Models & Application of DCF Valuation Model in Valuation of Amazon Inc.
Authors: Jasra, Sarthak
Keywords: Empirical Study
Various Stock Valuation Models
DCF Valuation Model
Valuation of Amazon Inc.
Issue Date: 18-Aug-2020
Description: EXECUTIVE SUMMARY Purpose/scope of Research: • To study about various valuation methods to value stocks. • To apply industry’s most relevant valuation methods i.e. discounted cash flow. • Valuation method to carry out valuation of Amazon Inc. • Emergence of use of machine and deep learning in stock price predictions. • Emergence of robo-advisors in financial investment industry. • Is covid-19 a boon or ban on amazon’s stock price? The research discusses in detail about the valuation methods or, matrix to value a stock. Such as: divide and discount model, discounted cash flow model and excess returns model. The use of all models depends upon from industry to industry and form availability of information to carry out the research. At the end, industries most relevant model i.e. discounted cash flow model is going to be used to carry out valuation of international behemoth: ‘Amazon inc.’. Technique used for research: • There are 2 industry standardized techniques used in this project report, which are : o Quantitative analysis carried out via DCF valuation to judge profitability of the company. o Quantitative analysis of financial statement to judge credibility of management  At the end, both the analysis leads to a conclusion whether the company will create value for its shareholders hence, a ‘buy/sell/hold’ rating will be issued.
URI: http://dspace.dtu.ac.in:8080/jspui/handle/repository/18010
Appears in Collections:MBA

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