Power Daniel A, Watson Richard A, Szathmáry Eörs, Mills Rob, Powers Simon T, Doncaster C Patrick, Czapp Błażej
Electronics and Computer Science, University of Southampton, Southampton, SO17 1BJ, UK.
Institute for Life Sciences/Electronics and Computer Science, University of Southampton, Southampton, UK.
Biol Direct. 2015 Dec 8;10:69. doi: 10.1186/s13062-015-0094-1.
The structure and organisation of ecological interactions within an ecosystem is modified by the evolution and coevolution of the individual species it contains. Understanding how historical conditions have shaped this architecture is vital for understanding system responses to change at scales from the microbial upwards. However, in the absence of a group selection process, the collective behaviours and ecosystem functions exhibited by the whole community cannot be organised or adapted in a Darwinian sense. A long-standing open question thus persists: Are there alternative organising principles that enable us to understand and predict how the coevolution of the component species creates and maintains complex collective behaviours exhibited by the ecosystem as a whole?
Here we answer this question by incorporating principles from connectionist learning, a previously unrelated discipline already using well-developed theories on how emergent behaviours arise in simple networks. Specifically, we show conditions where natural selection on ecological interactions is functionally equivalent to a simple type of connectionist learning, 'unsupervised learning', well-known in neural-network models of cognitive systems to produce many non-trivial collective behaviours. Accordingly, we find that a community can self-organise in a well-defined and non-trivial sense without selection at the community level; its organisation can be conditioned by past experience in the same sense as connectionist learning models habituate to stimuli. This conditioning drives the community to form a distributed ecological memory of multiple past states, causing the community to: a) converge to these states from any random initial composition; b) accurately restore historical compositions from small fragments; c) recover a state composition following disturbance; and d) to correctly classify ambiguous initial compositions according to their similarity to learned compositions. We examine how the formation of alternative stable states alters the community's response to changing environmental forcing, and we identify conditions under which the ecosystem exhibits hysteresis with potential for catastrophic regime shifts.
This work highlights the potential of connectionist theory to expand our understanding of evo-eco dynamics and collective ecological behaviours. Within this framework we find that, despite not being a Darwinian unit, ecological communities can behave like connectionist learning systems, creating internal conditions that habituate to past environmental conditions and actively recalling those conditions.
生态系统内生态相互作用的结构和组织会因其中所含个体物种的进化和共同进化而改变。了解历史条件如何塑造这种结构对于理解从微生物层面向上的不同尺度系统对变化的响应至关重要。然而,在缺乏群体选择过程的情况下,整个群落所展现的集体行为和生态系统功能无法从达尔文主义的意义上进行组织或适应。因此,一个长期存在的开放性问题依然存在:是否存在其他组织原则,使我们能够理解和预测组成物种的共同进化如何创造和维持整个生态系统所展现的复杂集体行为?
在这里,我们通过纳入联结主义学习的原则来回答这个问题,联结主义学习是一个此前无关的学科,已经有关于简单网络中涌现行为如何产生的成熟理论。具体而言,我们展示了在哪些条件下,对生态相互作用的自然选择在功能上等同于一种简单的联结主义学习类型,即“无监督学习”,这在认知系统的神经网络模型中是众所周知的,可产生许多非平凡的集体行为。相应地,我们发现一个群落可以在一种明确且非平凡的意义上进行自我组织,而无需在群落层面进行选择;其组织可以像联结主义学习模型适应刺激那样,受到过去经验的制约。这种制约驱使群落形成对多个过去状态的分布式生态记忆,使群落能够:a)从任何随机初始组成收敛到这些状态;b)从小片段中准确恢复历史组成;c)在受到干扰后恢复状态组成;d)根据与已学习组成的相似性正确分类模糊的初始组成。我们研究了替代稳定状态的形成如何改变群落对不断变化的环境强迫的响应,并确定了生态系统表现出滞后现象以及具有灾难性状态转变可能性的条件。
这项工作凸显了联结主义理论在扩展我们对进化 - 生态动力学和集体生态行为理解方面的潜力。在这个框架内,我们发现,尽管生态群落不是一个达尔文主义单元,但它可以表现得像联结主义学习系统,创造出适应过去环境条件并积极回忆这些条件的内部条件。