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Dynamic Portfolio Selection: Asset-Liability Management Model

Dynamic Portfolio Selection: Asset-Liability Management Model
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Copyright: 2018
Pages: 25
Source title: Alternative Decision-Making Models for Financial Portfolio Management: Emerging Research and Opportunities
Source Author(s)/Editor(s): Narela Spaseski (International University of Sarajevo, Bosnia and Herzegovina)
DOI: 10.4018/978-1-5225-3259-0.ch005

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Abstract

In this chapter I recognize the importance of the stochastic programming as a significant tool in financial planning. The current practice of portfolio optimization is still limited to the simple formulation of linear programming (LR) or quadratic programming (QR) type. For that reason, relevant literature on asset-liability management (ALM) model has been reviewed and two different ALM approaches are compared: first piecewise linear function; and second a nonlinear utility function. This chapter shows that the mathematical programming methodology is ready to challenge the huge problem arising from LP portfolio optimization. A special emphasis was put on the shape of the investors' payoff functions in asset price equilibrium. The results underpin our claim that the nonlinear ALM model generated better asset allocation. An algorithmic construction of ALM model is developed in Wolfram Mathematica 9.

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