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Mean-variance-utility portfolio selection with time and state dependent risk aversion

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 Added by Ben-Zhang Yang
 Publication date 2020
  fields Financial
and research's language is English




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Under mean-variance-utility framework, we propose a new portfolio selection model, which allows wealth and time both have influences on risk aversion in the process of investment. We solved the model under a game theoretic framework and analytically derived the equilibrium investment (consumption) policy. The results conform with the facts that optimal investment strategy heavily depends on the investors wealth and future income-consumption balance as well as the continuous optimally consumption process is highly dependent on the consumption preference of the investor.



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