Bertschinger Nils, Olbrich Eckehard, Ay Nihat, Jost Jürgen
Max Planck Institute for Mathematics in the Sciences, Inselstr. 22, D 04103 Leipzig, Germany.
Biosystems. 2008 Feb;91(2):331-45. doi: 10.1016/j.biosystems.2007.05.018. Epub 2007 Aug 11.
We present a tentative proposal for a quantitative measure of autonomy. This is something that, surprisingly, is rarely found in the literature, even though autonomy is considered to be a basic concept in many disciplines, including artificial life. We work in an information theoretic setting for which the distinction between system and environment is the starting point. As a first measure for autonomy, we propose the conditional mutual information between consecutive states of the system conditioned on the history of the environment. This works well when the system cannot influence the environment at all and the environment does not interact synergetically with the system. When, in contrast, the system has full control over its environment, we should instead neglect the environment history and simply take the mutual information between consecutive system states as a measure of autonomy. In the case of mutual interaction between system and environment there remains an ambiguity regarding whether system or environment has caused observed correlations. If the interaction structure of the system is known, we define a "causal" autonomy measure which allows this ambiguity to be resolved. Synergetic interactions still pose a problem since in this case causation cannot be attributed to the system or the environment alone. Moreover, our analysis reveals some subtle facets of the concept of autonomy, in particular with respect to the seemingly innocent system-environment distinction we took for granted, and raises the issue of the attribution of control, i.e. the responsibility for observed effects. To further explore these issues, we evaluate our autonomy measure for simple automata, an agent moving in space, gliders in the game of life, and the tessellation automaton for autopoiesis of Varela et al. [Varela, F.J., Maturana, H.R., Uribe, R., 1974. Autopoiesis: the organization of living systems, its characterization and a model. BioSystems 5, 187-196].
我们提出了一种关于自主性定量测度的初步建议。令人惊讶的是,尽管自主性在包括人工生命在内的许多学科中被视为一个基本概念,但在文献中却很少见到这样的测度。我们在一个信息论的框架下展开工作,其中系统与环境的区分是出发点。作为自主性的首个测度,我们提出以环境历史为条件的系统连续状态之间的条件互信息。当系统完全无法影响环境且环境与系统不存在协同相互作用时,这种方法效果良好。相反,当系统对其环境具有完全控制权时,我们应忽略环境历史,仅将连续系统状态之间的互信息作为自主性的测度。在系统与环境相互作用的情况下,关于是系统还是环境导致了观察到的相关性仍存在模糊性。如果系统的相互作用结构已知,我们定义一种“因果”自主性测度,以解决这种模糊性。协同相互作用仍然是个问题,因为在这种情况下,因果关系不能仅归因于系统或环境。此外,我们的分析揭示了自主性概念的一些微妙方面,特别是关于我们视为理所当然的看似无害的系统 - 环境区分,并提出了控制归因的问题,即对观察到的效果的责任归属问题。为了进一步探讨这些问题,我们对简单自动机、在空间中移动的智能体、生命游戏中的滑翔机以及瓦雷拉等人 [瓦雷拉,F.J.,马图拉纳,H.R.,乌里韦,R.,1974 年。自组织:生命系统的组织、其特征及一个模型。生物系统 5,187 - 196] 的自生成镶嵌自动机评估了我们的自主性测度。