School of Psychology, University of Ottawa, Ottawa, Ont., Canada.
PLoS One. 2015 Jul 22;10(7):e0132218. doi: 10.1371/journal.pone.0132218. eCollection 2015.
Untrained, "flower-naïve" bumblebees display behavioural preferences when presented with visual properties such as colour, symmetry, spatial frequency and others. Two unsupervised neural networks were implemented to understand the extent to which these models capture elements of bumblebees' unlearned visual preferences towards flower-like visual properties. The computational models, which are variants of Independent Component Analysis and Feature-Extracting Bidirectional Associative Memory, use images of test-patterns that are identical to ones used in behavioural studies. Each model works by decomposing images of floral patterns into meaningful underlying factors. We reconstruct the original floral image using the components and compare the quality of the reconstructed image to the original image. Independent Component Analysis matches behavioural results substantially better across several visual properties. These results are interpreted to support a hypothesis that the temporal and energetic costs of information processing by pollinators served as a selective pressure on floral displays: flowers adapted to pollinators' cognitive constraints.
未经训练的、“对花一无所知”的熊蜂在呈现颜色、对称性、空间频率等视觉属性时表现出行为偏好。我们实现了两个无监督神经网络,以了解这些模型在多大程度上捕捉到了熊蜂对花状视觉属性的未经学习的视觉偏好的元素。计算模型是独立成分分析和特征提取双向联想记忆的变体,它们使用与行为研究中使用的相同的测试模式图像。每个模型的工作原理都是将花卉图案的图像分解成有意义的潜在因素。我们使用这些成分重建原始花卉图像,并将重建图像的质量与原始图像进行比较。独立成分分析在几个视觉属性上与行为结果非常吻合。这些结果的解释支持了一个假设,即传粉者信息处理的时间和能量成本对花卉表现形式起到了选择压力的作用:花朵适应了传粉者的认知限制。