Dynamic portfolio insurance strategy: a robust machine learning approach
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- @Article{Dehghanpour:jit,
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author = "Siamak Dehghanpour and Akbar Esfahanipour",
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title = "Dynamic portfolio insurance strategy: a robust machine
learning approach",
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journal = "Journal of Information and Telecommunication",
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year = "2018",
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volume = "2",
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number = "4",
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pages = "392--410",
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keywords = "genetic algorithms, genetic programming, Robust
genetic programming (RGP), portfolio insurance
strategy, machine learning, portfolio optimization
model, constant proportion portfolio insurance (CPPI)",
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publisher = "Taylor \& Francis",
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ISSN = "2475-1839",
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DOI = "doi:10.1080/24751839.2018.1431447",
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size = "19 pages",
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abstract = "we propose a robust genetic programming (RGP) model
for a dynamic strategy of stock portfolio insurance.
With portfolio insurance strategy, we divide the money
in a risky asset and a risk-free asset. Our applied
strategy is based on a constant proportion portfolio
insurance strategy. For determining the amount for
investing in the risky asset, a critical parameter is a
constant risk multiplier that is calculated in our
proposed model using RGP to reflect market dynamics.
Our model includes four main steps: (1) Selecting the
best stocks for constructing a portfolio using a
density-based clustering strategy. (2) Enhancing the
robustness of our proposed model with an application of
the Adaptive Neuro-Fuzzy Inference Systems (ANFIS) for
forecasting the future prices of the selected stocks.
The findings show that using ANFIS, instead of a
regular multi-layer artificial neural network improves
the prediction accuracy and our model's robustness. (3)
Implementing the RGP model for calculating the risk
multiplier. Risk variables are used to generate
equation trees for calculating the risk multiplier. (4)
Determining the optimal portfolio weights of the assets
using the well-known Markowitz portfolio optimization
model. Experimental results show that our proposed
strategy outperforms our previous model.",
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notes = "Published online: 27 Feb 2018",
- }
Genetic Programming entries for
Siamak Dehghanpour
Akbar Esfahanipour
Citations