Lateralization is ubiquitous in vertebrate brains which, as well as its role in locomotion, is considered an important factor in biological intelligence. Lateralization has been associated with both poor and good performance. It has been hypothesized that lateralization has benefits that may counterbalance its costs. Given that lateralization is ubiquitous, it likely has advantages that can benefit artificial intelligence. In turn, lateralized artificial intelligent systems can be used as tools to advance the understanding of lateralization in biological intelligence. Recently lateralization has been incorporated into artificially intelligent systems to solve complex problems in computer vision and navigation domains. Here we describe and test two novel lateralized artificial intelligent systems that simultaneously represent and address given problems at constituent and holistic levels. The experimental results demonstrate that the lateralized systems outperformed state-of-the-art non-lateralized systems in resolving complex problems. The advantages arise from the abilities, (i) to represent an input signal at both the constituent level and holistic level simultaneously, such that the most appropriate viewpoint controls the system; (ii) to avoid extraneous computations by generating excite and inhibit signals. The computational costs associated with the lateralized AI systems are either less than the conventional AI systems or countered by providing better solutions.
翻译:横向化在脊椎骨大脑中是无处不在的,这种大脑及其在运动中的作用被认为是生物智能中的一个重要因素。横向化与表现不佳和表现良好有关。人们假设横向化的好处可能抵消其成本。鉴于横向化是无处不在的,它可能具有有利于人工智能的优势。反过来,横向化人工智能系统可以用作工具,增进对生物情报中横向化的理解。最近,横向化已经纳入人工智能系统,以解决计算机视觉和导航领域的复杂问题。在这里,我们描述和测试两种新型横向化人工智能系统,这些系统同时在组成和整体层面代表并处理特定问题。实验结果表明,横向化系统在解决复杂问题时,超越了状态的、非多边化系统。这些优势来自能力,(一)在组成和整体层面同时代表一个输入信号,因此最合适的观点控制着系统;(二)通过生成较不那么先进的AI和抑制性信号,避免通过制造较先进的AI和反式的系统进行不那么先进的计算。