Multiple additive regression trees with application in epidemiology.
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The global distribution of the arbovirus vectors Aedes aegypti and Ae. albopictusA Review of the Statistical and Quantitative Methods Used to Study Alcohol-Attributable CrimeThe contribution of vegetation and landscape configuration for predicting environmental change impacts on Iberian birdsAn ecological regime shift resulting from disrupted predator-prey interactions in Holocene Australia.Mapping hotspots of malaria transmission from pre-existing hydrology, geology and geomorphology data in the pre-elimination context of Zanzibar, United Republic of Tanzania.Using Historical Atlas Data to Develop High-Resolution Distribution Models of Freshwater Fishes.Using decision trees to understand structure in missing data.Finding structure in data using multivariate tree boosting.Examining current or future trade-offs for biodiversity conservation in north-eastern Australia.Methodological issues in detecting gene-gene interactions in breast cancer susceptibility: a population-based study in Ontario.Defining human embryo phenotypes by cohort-specific prognostic factorsPredictive modeling of coral disease distribution within a reef system.When do traumatic experiences alter risk-taking behavior? A machine learning analysis of reports from refugees.Time since introduction, seed mass, and genome size predict successful invaders among the cultivated vascular plants of Hawaii.Why are some plant genera more invasive than others?Regional data refine local predictions: modeling the distribution of plant species abundance on a portion of the central plains.Modelling spatial patterns of urban growth in AfricaImproving risk models for avian influenza: the role of intensive poultry farming and flooded land during the 2004 Thailand epidemic.Spatial epidemiology of porcine reproductive and respiratory syndrome in Thailand.Reconstructing population exposures to environmental chemicals from biomarkers: challenges and opportunities.A population model for predicting the successful establishment of introduced bird species.A prospective study in male recipients of kidney transplantation reveals divergent patterns for inhibin B and testosterone secretions.Testing the Effectiveness of Environmental Variables to Explain European Terrestrial Vertebrate Species Richness across Biogeographical Scales.Large-Scale Variations in Lumber Value Recovery of Yellow Birch and Sugar Maple in Quebec, Canada.Predictive Mapping of Topsoil Organic Carbon in an Alpine Environment Aided by Landsat TM.A new approach to bias correction in RNA-SeqENTPRISE: An Algorithm for Predicting Human Disease-Associated Amino Acid Substitutions from Sequence Entropy and Predicted Protein StructuresModeling habitat suitability of the invasive clam Corbicula fluminea in a Neotropical shallow lagoon, southern Brazil.Depth of bacterial invasion in resected intestinal tissue predicts mortality in surgical necrotizing enterocolitis.Assessing fracture risk using gradient boosting machine (GBM) models.Global mapping of highly pathogenic avian influenza H5N1 and H5Nx clade 2.3.4.4 viruses with spatial cross-validationGlobal climate change will increase the abundance of symbiotic nitrogen-fixing trees in much of North America.Identification of chemical components of combustion emissions that affect pro-atherosclerotic vascular responses in mice.Scale-dependent effects of nonnative plant invasion on host-seeking tick abundance.Mapping intra-urban malaria risk using high resolution satellite imagery: a case study of Dar es SalaamMapping the spatial distribution of the Japanese encephalitis vector, Culex tritaeniorhynchus Giles, 1901 (Diptera: Culicidae) within areas of Japanese encephalitis risk.Infectious keratoconjunctivitis and occurrence of Mycoplasma conjunctivae and Chlamydiaceae in small domestic ruminants from Central Karakoram, Pakistan.Classification and regression tree analysis vs. multivariable linear and logistic regression methods as statistical tools for studying haemophilia.Spatial prediction and validation of zoonotic hazard through micro-habitat properties: where does Puumala hantavirus hole - up?Environmental controls on canopy foliar nitrogen distributions in a Neotropical lowland forest.
P2860
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P2860
Multiple additive regression trees with application in epidemiology.
description
2003 nî lūn-bûn
@nan
2003年の論文
@ja
2003年論文
@yue
2003年論文
@zh-hant
2003年論文
@zh-hk
2003年論文
@zh-mo
2003年論文
@zh-tw
2003年论文
@wuu
2003年论文
@zh
2003年论文
@zh-cn
name
Multiple additive regression trees with application in epidemiology.
@en
type
label
Multiple additive regression trees with application in epidemiology.
@en
prefLabel
Multiple additive regression trees with application in epidemiology.
@en
P356
P1476
Multiple additive regression trees with application in epidemiology.
@en
P2093
Jacqueline J Meulman
P304
P356
10.1002/SIM.1501
P407
P577
2003-05-01T00:00:00Z