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仅仅达到最佳状态是不够的。

Optimal isn't good enough.

作者信息

Loeb Gerald E

机构信息

Department of Biomedical Engineering, University of Southern California, Los Angeles, CA, USA.

出版信息

Biol Cybern. 2012 Dec;106(11-12):757-65. doi: 10.1007/s00422-012-0514-6. Epub 2012 Aug 16.

Abstract

The notion that biological systems come to embody optimal solutions seems consistent with the competitive drive of evolution. It has been used to interpret many examples of sensorimotor behavior. It is attractive from the viewpoint of control engineers because it solves the redundancy problem by identifying the one optimal motor strategy out of many similarly acceptable possibilities. This perspective examines whether there is sufficient basis to apply the formal engineering tools of optimal control to a reductionist understanding of biological systems. For an experimental biologist, this translates into whether the theory of optimal control generates nontrivial and testable hypotheses that accurately predict novel phenomena, ideally at deeper levels of structure than the observable behavior. The methodology of optimal control is applicable when there is (i) a single, known cost function to be optimized, (ii) an invertible model of the plant, and (iii) simple noise interfering with optimal performance. None of these is likely to be true for biological organisms. Furthermore, their motivation is usually good-enough rather than globally optimal behavior. Even then, the performance of a biological organism is often much farther from optimal than the physical limits of its hardware because the brain is continuously testing the acceptable limits of performance as well as just performing the task. This perspective considers an alternative strategy called "good-enough" control, in which the organism uses trial-and-error learning to acquire a repertoire of sensorimotor behaviors that are known to be useful, but not necessarily optimal. This leads to a diversity of solutions that tends to confer robustness on the individual organism and its evolution. It is also more consistent with the capabilities of higher sensorimotor structures, such as cerebral cortex, which seems to be designed to classify and recall complex sets of information, thereby allowing the organism to learn from experience, rather than to compute new strategies online. Optimal control has been a useful metaphor for understanding some superficial aspects of motor psychophysics. Reductionists who want to understand the underlying neural mechanisms need to move on.

摘要

生物系统能够体现最优解决方案这一观点,似乎与进化的竞争驱动力相一致。它已被用于解释许多感觉运动行为的例子。从控制工程师的角度来看,它很有吸引力,因为它通过从众多同样可行的可能性中识别出一种最优运动策略,解决了冗余问题。这个观点探讨了是否有足够的依据将最优控制的形式工程工具应用于对生物系统的还原论理解。对于实验生物学家而言,这意味着最优控制理论是否能产生非平凡且可检验的假设,这些假设能准确预测新现象,理想情况下是在比可观察行为更深层次的结构上。当存在以下情况时,最优控制方法适用:(i)有一个单一的、已知的要优化的成本函数;(ii)对象的可逆模型;(iii)干扰最优性能的简单噪声。而对于生物有机体来说,这些情况可能都不成立。此外,它们的动机通常是足够好的行为,而非全局最优行为。即便如此,生物有机体的表现往往比其硬件的物理极限远非最优,因为大脑不仅在执行任务,还在不断测试可接受的性能极限。这个观点考虑了一种名为“足够好”控制的替代策略,在这种策略中,有机体通过试错学习来获取一系列已知有用但不一定最优的感觉运动行为。这导致了多种解决方案,这些方案往往赋予个体有机体及其进化以稳健性。它也更符合诸如大脑皮层等高级感觉运动结构的能力,大脑皮层似乎旨在分类和回忆复杂的信息集,从而使有机体能够从经验中学习,而不是在线计算新策略。最优控制一直是理解运动心理物理学一些表面方面的有用隐喻。想要理解潜在神经机制的还原论者需要继续前进。

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