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Kleptoparasitic interactions modeling varying owner and intruder hunger awareness

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  • Chowdhury, Noble
  • Kentiba, Kirubel
  • Mirajkar, Yashwant
  • Nasseri, Mana
  • Rychtář, Jan
  • Taylor, Dewey

Abstract

We consider a game theoretical model of kleptoparasitic interaction between two individuals, the Owner and the Intruder. The Owner is in possession of a resource and must decide whether to defend the resource against the Intruder or flee. If the Owner defends, the Intruder must decide whether to fight with the Owner or flee. The outcome of the fight depends on the hunger of the individuals, the hungrier the individual is, the more likely they are to win the fight. We consider three scenarios: (a) both individuals know their own and their opponent’s hunger, (b) individuals only know their own hunger but not that of their opponent, and (c) individuals do not know their own nor the opponent’s hunger levels. We determine Nash equilibrium strategies in each scenario. We conclude that Owner is generally willing to defend more often than the Intruder is willing to attack. Also, the Intruder’s payoff is largest in the full information case; but the Owner may benefit in the no information or partial information cases when the cost of the fight is neither too large nor too small.

Suggested Citation

  • Chowdhury, Noble & Kentiba, Kirubel & Mirajkar, Yashwant & Nasseri, Mana & Rychtář, Jan & Taylor, Dewey, 2020. "Kleptoparasitic interactions modeling varying owner and intruder hunger awareness," Theoretical Population Biology, Elsevier, vol. 136(C), pages 31-40.
  • Handle: RePEc:eee:thpobi:v:136:y:2020:i:c:p:31-40
    DOI: 10.1016/j.tpb.2020.11.002
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    References listed on IDEAS

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