Nickerson Carly M, Bloomfield Laurie L, Dawson Michael R W, Charrier Isabelle, Sturdy Christopher B
Department of Psychology, University of Alberta, Edmonton, Alberta T6G 2E9, Canada.
J Acoust Soc Am. 2007 Oct;122(4):2451-8. doi: 10.1121/1.2770540.
Artificial neural networks were trained to discriminate between different note types from the black-capped chickadee (Poecile atricapillus) "chick-a-dee" call. Each individual note was represented as a vector of summary features taken from note spectrograms and networks were trained to respond to exemplar notes of one type and to fail to respond to exemplar notes of another type. Following initial network training, the network was presented novel notes in which individual acoustic features had been modified. The strength of the response of the network to each novel and shifted note was recorded. When network responses were plotted as a function of the degree of acoustic feature modification and training context, it became clear that modifications of some acoustic features had significant effects on network responses, while others did not. Moreover, the training context of the network also played a role in the responses of networks to manipulated test notes. The implications of using artificial neural networks to generate testable hypotheses for animal research and the role of context are discussed.
人工神经网络被训练用于区分黑顶山雀(Poecile atricapillus)“chick-a-dee”叫声中的不同音符类型。每个单独的音符都被表示为从音符频谱图中提取的一组摘要特征向量,并且网络被训练对一种类型的示例音符做出响应,而对另一种类型的示例音符不做出响应。在网络初始训练之后,向网络呈现了其中单个声学特征已被修改的新音符。记录了网络对每个新的和经过改变的音符的响应强度。当将网络响应绘制为声学特征修改程度和训练背景的函数时,很明显某些声学特征的修改对网络响应有显著影响,而其他特征则没有。此外,网络的训练背景在网络对经过处理的测试音符的响应中也起到了作用。本文讨论了使用人工神经网络为动物研究生成可测试假设的意义以及背景的作用。