{"title":"Machine learning reveals that climate, geography, and cultural drift all predict bird song variation in coastal Zonotrichia leucophrys","authors":"Jiaying Yang, Bryan C Carstens, Kaiya L Provost","doi":"10.1093/ornithology/ukad062","DOIUrl":null,"url":null,"abstract":"Previous work has demonstrated that there is extensive variation in the songs of White-crowned Sparrow (Zonotrichia leucophrys) throughout the species range, including between neighboring (and genetically distinct) subspecies Z. l. nuttalli and Z. l. pugetensis. Using a machine learning approach to bioacoustic analysis, we demonstrate that variation in song is correlated with year of recording (representing cultural drift), geographic distance, and climatic differences, but the response is subspecies- and season-specific. Automated machine learning methods of bird song annotation can process large datasets more efficiently, allowing us to examine 1,913 recordings across ~60 years. We utilize a recently published artificial neural network to automatically annotate White-crowned Sparrow vocalizations. By analyzing differences in syllable usage and composition, we recapitulate the known pattern where Z. l. nuttalli and Z. l. pugetensis have significantly different songs. Our results are consistent with the interpretation that these differences are caused by the changes in characteristics of syllables in the White-crowned Sparrow repertoire. This supports the hypothesis that the evolution of vocalization behavior is affected by the environment, in addition to population structure.","PeriodicalId":501265,"journal":{"name":"The Auk","volume":"1 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-12-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"The Auk","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1093/ornithology/ukad062","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Previous work has demonstrated that there is extensive variation in the songs of White-crowned Sparrow (Zonotrichia leucophrys) throughout the species range, including between neighboring (and genetically distinct) subspecies Z. l. nuttalli and Z. l. pugetensis. Using a machine learning approach to bioacoustic analysis, we demonstrate that variation in song is correlated with year of recording (representing cultural drift), geographic distance, and climatic differences, but the response is subspecies- and season-specific. Automated machine learning methods of bird song annotation can process large datasets more efficiently, allowing us to examine 1,913 recordings across ~60 years. We utilize a recently published artificial neural network to automatically annotate White-crowned Sparrow vocalizations. By analyzing differences in syllable usage and composition, we recapitulate the known pattern where Z. l. nuttalli and Z. l. pugetensis have significantly different songs. Our results are consistent with the interpretation that these differences are caused by the changes in characteristics of syllables in the White-crowned Sparrow repertoire. This supports the hypothesis that the evolution of vocalization behavior is affected by the environment, in addition to population structure.
以前的研究表明,白冠麻雀(Zonotrichia leucophrys)的鸣声在整个物种分布区存在广泛的差异,包括相邻亚种 Z. l. nuttalli 和 Z. l. pugetensis 之间的差异。利用生物声学分析的机器学习方法,我们证明了鸟鸣的变化与记录年份(代表文化漂移)、地理距离和气候差异相关,但其反应是亚种和季节特异性的。鸟类鸣唱注释的自动化机器学习方法可以更高效地处理大型数据集,使我们能够研究约 60 年间的 1,913 次录音。我们利用最近发表的人工神经网络自动注释白冠麻雀的发声。通过分析音节用法和构成的差异,我们再现了已知的模式,即 Z. l. nuttalli 和 Z. l. pugetensis 的鸣声有显著差异。我们的结果与以下解释一致,即这些差异是由白冠麻雀曲目中音节特征的变化引起的。这支持了发声行为的进化除受种群结构影响外,还受环境影响的假说。