Greed is Good: From Super-Harvest to Recovery in a Stochastic Predator-Prey System

Yuanming Ni, L. Sandal, S. Kvamsdal, Diwakar Poudel
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引用次数: 1

Abstract

This paper demonstrates a predator-prey system of cod and capelin that confronts a possible scenario of prey extinction under the first-best policy in a stochastic world. We discover a novel ‘super-harvest’ phenomenon that the optimal harvest of the predator is even higher than the myopic policy, or the ‘greedy solution’, on part of the state space. This intrinsic attempt to harvest more predator to protect the prey is a critical evidence supporting the idea behind ‘greed is good’. We ban prey harvest and increase predator harvest in a designated state space area based on the optimal policy. Three heuristic recovery plans are generated following this principle. We employ stochastic simulations to analyse the probability of prey recovery and evaluate corresponding costs in terms of value loss percentage. We find that the alternative policies enhance prey recovery rates mostly around the area of 50% recovery probability under the optimal policy. When we scale up the predator harvest by 1.5, the prey recovery rate escalates for as much as 28% at a cost of 5% value loss. We establish two strategies: modest deviation from the optimal on a large area or intense measure on a small area. It seems more cost-effective to target the stock space with accuracy than to simply boost predator harvest when the aim is to achieve remarkable improvement of prey recovery probability.
贪婪是好的:从超级收获到随机捕食-猎物系统中的恢复
本文讨论了在随机世界中,在最优策略下,鳕鱼和毛鳞鱼的捕食-食饵系统可能面临猎物灭绝的情形。我们发现了一种新的“超级收获”现象,即在部分状态空间上,捕食者的最优收获甚至高于近视策略或“贪婪解决方案”。这种内在的试图获取更多的捕食者来保护猎物的行为是支持“贪婪是好的”这一观点的关键证据。基于最优策略,在指定的状态空间区域内禁止捕获猎物,增加捕食者的捕获量。根据这一原则生成了三个启发式恢复计划。我们采用随机模拟来分析猎物恢复的概率,并根据价值损失百分比评估相应的成本。研究发现,在最优策略下,可选策略对猎物恢复率的提高主要在恢复概率为50%的范围内。当我们将捕食者的收获量增加1.5倍时,猎物的恢复率会以5%的价值损失为代价上升28%。我们建立了两种策略:在大范围内适度偏离最优,或在小范围内强烈偏离最优。当目标是实现猎物恢复概率的显著提高时,精确地瞄准种群空间似乎比简单地增加捕食者的收获更具有成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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