<--- Back to Details
First PageDocument Content
Categorical data / Statistical models / Logistic regression / Ensemble learning / Gradient boosting / Predictive analytics / Regression dilution / Statistics / Regression analysis / Econometrics
Date: 2014-01-28 17:09:59
Categorical data
Statistical models
Logistic regression
Ensemble learning
Gradient boosting
Predictive analytics
Regression dilution
Statistics
Regression analysis
Econometrics

Thesis_summary_expanded.indd

Add to Reading List

Source URL: info.alaska.edu

Download Document from Source Website

File Size: 153,08 KB

Share Document on Facebook

Similar Documents

Regression analysis / Linear regression / Regression dilution / Logistic regression / Statistics / Prediction / Dependent and independent variables / Generalized linear model / Errors and residuals / Observational error / Multivariate adaptive regression splines

Methods in Ecology and Evolution 2015, 6, 412–423 doi: 210XSPECIAL FEATURE NEW OPPORTUNITIES AT THE INTERFACE BETWEEN ECOLOGY AND STATISTICS

DocID: 1ptRv - View Document

Regression analysis / Statistics / Linear regression / Homoscedasticity / Simple linear regression / Logistic regression / Regression dilution / Outline of regression analysis

Microsoft PowerPoint - cs559f15_Week7.pptx

DocID: 1mTa4 - View Document

Linear regression / Bootstrapping / Regression dilution / Statistics / Regression analysis / Econometrics

cover-datafirst-saldru_latest.indd

DocID: 1ghso - View Document

Units of measure / Wireless / Weather radars / Radar / Acoustics / Calibration / Decibel / Regression dilution / DBZ / Radar meteorology / Measurement / Technology

X-band Weather Radar Workshop, Delft, 14-16 NovemberPolarimetric Variables Calibration at Météo France

DocID: 1fFgf - View Document

Regression dilution / Mean squared error / Generalized linear model / Logistic regression / Multivariate adaptive regression splines / Instrumental variable / Variance inflation factor / Statistics / Regression analysis / Linear regression

Methods in Ecology and Evolution 2015, 6, 412–423 doi: 210XSPECIAL FEATURE NEW OPPORTUNITIES AT THE INTERFACE BETWEEN ECOLOGY AND STATISTICS

DocID: 1a6lz - View Document