National Research Institute of Fisheries Science, Fisheries Research Agency, 2-12-4 Fukuura, Kanazawa, Yokohama, Kanagawa, 236-8648, Japan.
J Fish Biol. 2013 Apr;82(4):1239-49. doi: 10.1111/jfb.12062. Epub 2013 Mar 12.
This paper proposes a new and flexible statistical method for marginal increment analysis that directly accounts for periodicity in circular data using a circular-linear regression model with random effects. The method is applied to vertebral marginal increment data for Alaska skate Bathyraja parmifera. The best fit model selected using the AIC indicates that growth bands are formed annually. Simulation, where the underlying characteristics of the data are known, shows that the method performs satisfactorily when uncertainty is not extremely high.
本文提出了一种新的灵活的边际增量分析统计方法,该方法使用具有随机效应的圆-线性回归模型直接考虑圆数据的周期性。该方法应用于阿拉斯加长尾鲛 Bathyraja parmifera 的椎骨边缘增量数据。使用 AIC 选择的最佳拟合模型表明,生长带每年形成一次。在已知数据基本特征的模拟中,当不确定性不是非常高时,该方法表现良好。