
doi: 10.2139/ssrn.1368769
In the paper, I simulate the games with a joint presence of 95% VaR-rule and return-rule groups of agents in the game. Simulations highlighted the level of omniscience, next being the rule, which agents follow at the decision-making, and the third the presence of liquidity agents in the game. Omniscient agents make different decisions than non-omniscient agents with non-omniscient return-rule agents performed a little better than the omniscient return-rule agents did, and omniscient VaR-rule agents performed slightly better than non-omniscient VaR-rule agents did. VaR-rule agents clearly outperform return-rule agents, with omniscient return-rule agents performing the worst. The role of liquidity agents has proved to be very significant with none of the two observed performed worst in the neither case.
social networks, portfolio decision-making, stochastic finance, Value-at-Risk, jel: jel:Z13, jel: jel:C73, jel: jel:G32, jel: jel:G11
social networks, portfolio decision-making, stochastic finance, Value-at-Risk, jel: jel:Z13, jel: jel:C73, jel: jel:G32, jel: jel:G11
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