Martinez Josue G, Bohn Kirsten M, Carroll Raymond J, Morris Jeffrey S
(Deceased) was recently at the Department of Radiation Oncology, The University of Texas M D Anderson Cancer Center, PO Box 301402, Houston, TX 77230-1402, USA.
J Am Stat Assoc. 2013 Jun 1;108(502):514-526. doi: 10.1080/01621459.2013.793118.
We describe a new approach to analyze chirp syllables of free-tailed bats from two regions of Texas in which they are predominant: Austin and College Station. Our goal is to characterize any systematic regional differences in the mating chirps and assess whether individual bats have signature chirps. The data are analyzed by modeling spectrograms of the chirps as responses in a Bayesian functional mixed model. Given the variable chirp lengths, we compute the spectrograms on a relative time scale interpretable as the relative chirp position, using a variable window overlap based on chirp length. We use 2D wavelet transforms to capture correlation within the spectrogram in our modeling and obtain adaptive regularization of the estimates and inference for the regions-specific spectrograms. Our model includes random effect spectrograms at the bat level to account for correlation among chirps from the same bat, and to assess relative variability in chirp spectrograms within and between bats. The modeling of spectrograms using functional mixed models is a general approach for the analysis of replicated nonstationary time series, such as our acoustical signals, to relate aspects of the signals to various predictors, while accounting for between-signal structure. This can be done on raw spectrograms when all signals are of the same length, and can be done using spectrograms defined on a relative time scale for signals of variable length in settings where the idea of defining correspondence across signals based on relative position is sensible.
我们描述了一种新方法,用于分析来自德克萨斯州两个它们占主导地位的地区(奥斯汀和大学城)的无尾蝙蝠的啁啾音节。我们的目标是刻画求偶啁啾中任何系统性的地区差异,并评估个体蝙蝠是否有独特的啁啾。通过将啁啾的频谱图建模为贝叶斯功能混合模型中的响应来分析数据。鉴于啁啾长度可变,我们使用基于啁啾长度的可变窗口重叠,在可解释为相对啁啾位置的相对时间尺度上计算频谱图。我们在建模中使用二维小波变换来捕捉频谱图内的相关性,并获得针对特定区域频谱图的估计和推断的自适应正则化。我们的模型包括蝙蝠水平的随机效应频谱图,以考虑来自同一蝙蝠的啁啾之间的相关性,并评估蝙蝠内部和之间啁啾频谱图的相对变异性。使用功能混合模型对频谱图进行建模是一种用于分析重复的非平稳时间序列(如我们的声学信号)的通用方法,以便在考虑信号间结构的同时,将信号的各个方面与各种预测变量联系起来。当所有信号长度相同时,可以在原始频谱图上进行此操作;在基于相对位置定义信号间对应关系的想法合理的情况下,对于长度可变的信号,可以使用在相对时间尺度上定义的频谱图来进行此操作。