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Incorporating Boosted Regression Trees into Ecological Latent Variable Models

机译:将增强回归树纳入生态潜变量模型

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摘要

Important ecological phenomena are often observed indirectly. Consequently, probabilistic latent variable models provide an important tool, because they can include explicit models of the ecological phenomenon of interest and the process by which it is observed. However, existing latent variable methods rely on hand-formulated parametric models, which are expensive to design and require extensive preprocessing of the data. Nonparametric methods (such as regression trees) automate these decisions and produce highly accurate models. However, existing tree methods learn direct mappings from inputs to outputs-they cannot be applied to latent variable models. This paper describes a methodology for integrating non-parametric tree methods into probabilistic latent variable models by extending functional gradient boosting. The approach is presented in the context of occupancy-detection (OD) modeling, where the goal is to model the distribution of a species from imperfect detections. Experiments on 12 real and 3 synthetic bird species compare standard and tree-boosted OD models (latent variable models) with standard and tree-boosted logistic regression models (without latent structure). All methods perform similarly when predicting the observed variables, but the OD models learn better representations of the latent process. Most importantly, tree-boosted OD models learn the best latent representations when non-linearities and interactions are present.
机译:重要的生态现象通常是间接观察到的。因此,概率潜在变量模型提供了重要的工具,因为它们可以包含感兴趣的生态现象及其观测过程的显式模型。但是,现有的潜在变量方法依赖于手工编制的参数模型,这种模型的设计成本很高,并且需要对数据进行大量的预处理。非参数方法(例如回归树)可自动执行这些决策,并生成高度准确的模型。然而,现有的树方法学习从输入到输出的直接映射-它们不能应用于潜变量模型。本文介绍了一种通过扩展功能梯度提升将非参数树方法集成到概率潜在变量模型中的方法。在占用检测(OD)建模的背景下介绍了该方法,其目的是根据不完善的检测对物种的分布进行建模。在12种真实鸟类和3种人工鸟类上进行的实验将标准OD和树增强的OD模型(潜变量模型)与标准和树增强的逻辑回归模型(无潜在结构)进行了比较。当预测观察到的变量时,所有方法的表现都相似,但是OD模型可以更好地表示潜伏过程。最重要的是,当存在非线性和相互作用时,树增强型OD模型学习最佳的潜在表示。

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