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Simple Valuation of Compounded Deferred Tax Assets Using a Binomial Algorithm

Simple Valuation of Compounded Deferred Tax Assets Using a Binomial Algorithm
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Author(s): Joao Carlos Silva (ISCTE, University Institute of Lisbon, Portugal), Nuno Souto (ISCTE, University Institute of Lisbon, Portugal)and José Pereira (ISEG, Universidade de Lisboa, Portugal)
Copyright: 2021
Pages: 22
Source title: Using Strategy Analytics to Measure Corporate Performance and Business Value Creation
Source Author(s)/Editor(s): Sandeep Kumar Kautish (Lord Buddha Education Foundation, Nepal)
DOI: 10.4018/978-1-7998-7716-5.ch009

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Abstract

Deferred tax asset (DTA) is a tax/accounting concept that refers to an asset that may be used to reduce future tax liabilities of the holder. In a company's balance, it usually refers to situations where it has either overpaid taxes, paid taxes in advance, or has carry-over of losses (the latter being the most common situation). In fact, accounting and tax losses may be used to shield future profits from taxation, through tax loss carry-forwards. The purpose of this chapter is to propose a precise and conceptually sound approach to value DTAs. For that purpose, making use of an adapted binomial CRR (Cox, Ross, and Rubinstein) algorithm, the authors derive a precise way to value DTAs. This way, the DTAs are valued in a similar way of the binomial options pricing model, and the subjectivity of its evaluation is greatly reduced. The authors show that with the proposed evaluation techniques, the DTA's expected value will be much lower than the values normally used in today's practice, and the bank's financial analysis will lead to much more sound and realistic results.

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