Suppr超能文献

病媒及病媒传播疾病的模型。

Models for vectors and vector-borne diseases.

作者信息

Rogers D J

机构信息

TALA Research Group, Tinbergen Building, Department of Zoology, University of Oxford, South Parks Road, Oxford, UK.

出版信息

Adv Parasitol. 2006;62:1-35. doi: 10.1016/S0065-308X(05)62001-5.

Abstract

The development of models for species' distributions is briefly reviewed, concentrating on logistic regression and discriminant analytical methods. Improvements in each type of modelling approach have led to increasingly accurate model predictions. This review addresses several key issues that now confront those wishing to choose the "right" sort of model for their own application. One major issue is the number of predictor variables to retain in the final model. Another is the problem of sparse datasets, or of data reported to administrative levels only, not to points. A third is the incorporation of spatial co-variance and auto-covariance in the modelling process. It is suggested that many of these problems can be resolved by adopting an information-theoretic approach whereby a group of reasonable potential models is specified in advance, and the "best" candidate model is selected among them. This approach of model selection and multi-model inference, using various derivatives of the Kullback-Leibler information or distance statistic, puts the biologist, with her or his insight, back in charge of the modelling process that is usually the domain of statisticians. Models are penalized when they contain too many variables; careful specification of the right set of candidate models may also be used to identify the importance of each predictor variable individually; and finally the degree to which the current "best" model improves on all the other models in the candidate set may be quantified. The ability definitely to exclude some models from the realm of all possible models appropriate for any particular distribution problem may be as important as the ability to identify the best current model.

摘要

本文简要回顾了物种分布模型的发展,重点关注逻辑回归和判别分析方法。每种建模方法的改进都使得模型预测越来越准确。本综述探讨了当前那些希望为自己的应用选择“正确”类型模型的人所面临的几个关键问题。一个主要问题是最终模型中要保留的预测变量数量。另一个问题是稀疏数据集的问题,或者是仅按行政级别报告而不是按点报告的数据问题。第三个问题是在建模过程中纳入空间协方差和自协方差。建议通过采用信息论方法来解决这些问题中的许多问题,即预先指定一组合理的潜在模型,并在其中选择“最佳”候选模型。这种使用库尔贝克-莱布勒信息或距离统计量的各种导数进行模型选择和多模型推断的方法,使生物学家凭借其洞察力重新掌控通常属于统计学家领域的建模过程。当模型包含过多变量时会受到惩罚;仔细指定正确的候选模型集也可用于单独确定每个预测变量的重要性;最后,可以量化当前“最佳”模型比候选集中所有其他模型改进的程度。明确地将某些模型排除在适用于任何特定分布问题的所有可能模型范围之外的能力,可能与识别当前最佳模型的能力同样重要。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验