回归预测因子的进化选择以提高微化石古温度代理的性能

A. Assareh, L. Volkert, J. Ortiz
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引用次数: 0

摘要

利用基于微化石的传递函数,苍白海洋学领域的领域科学家试图重建过去不同时期的环境条件。这是通过首先确定强迫函数(如温度)与现代动物响应之间的定量关系来实现的,使用的校准数据集基于海洋地图集的环境数据和通常从沉积物岩心顶部提取的动物群。该方法可用于各种环境变量,但重建表面温度往往是目标。使用该训练或校准数据集建立的关系然后应用于下岩心数据,以推断过去的环境条件。以前在这一领域应用的统计方法可分为三类:基于线性回归的方法、局部加权回归和神经网络。除了在该领域引入回归树、bagging树、随机森林和支持向量回归等学习算法外,本研究还建议使用模型组合方法来提高估计精度。通过使用各种学习算法和来自训练集和属性集的不同样本初始化不同预测器池,应用遗传算法选择最佳预测器组。最优的团队由人工神经网络预测器主导,这表明它们比用这类数据测试的其他方法更优越。结果还表明,与其他模型相比,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Selection of Regressional Predictors to Enhance the Performance of Microfossil-Based Paleotemperture Proxies
Using microfossil-based transfer functions, domain scientists from the field of pale oceanography seek to reconstruct environmental conditions at various times in the past. This is accomplished by first determining a quantitative relationship between a forcing function, such as temperature, and the modern for aminiferal response using a calibration data set based on environmental data from an oceanographic atlas and faunas generally extracted from sediment core tops. The method can be employed with a variety of environmental variables, but reconstruction of surface temperature is often the objective. The relationship developed using this training or calibration data set is then applied to down core data to infer past environmental conditions. The statistical methods that have been previously applied in this area can be grouped into three categories: linear regression based approaches, locally weighted regressions and neural networks. In addition to introducing some other learning algorithms including regression trees, bagging trees, random forest and support vector regression to this domain, in this study we suggest the use of model combination approaches to enhance the precision of estimation. By initializing with a pool of diverse predictors using a variety of learning algorithms and different samplings from the training and attribute set, a genetic algorithm was applied to select the best team of predictors. The optimal team was dominated by artificial neural network predictors suggesting their superiority over other methods tested with this type of data. The results also show the efficacy of the proposed approach compared to the other models.
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