Literature DB >> 32802211

Tree-based Machine Learning Methods for Survey Research.

Christoph Kern1, Thomas Klausch2, Frauke Kreuter1.   

Abstract

Predictive modeling methods from the field of machine learning have become a popular tool across various disciplines for exploring and analyzing diverse data. These methods often do not require specific prior knowledge about the functional form of the relationship under study and are able to adapt to complex non-linear and non-additive interrelations between the outcome and its predictors while focusing specifically on prediction performance. This modeling perspective is beginning to be adopted by survey researchers in order to adjust or improve various aspects of data collection and/or survey management. To facilitate this strand of research, this paper (1) provides an introduction to prominent tree-based machine learning methods, (2) reviews and discusses previous and (potential) prospective applications of tree-based supervised learning in survey research, and (3) exemplifies the usage of these techniques in the context of modeling and predicting nonresponse in panel surveys.

Entities:  

Keywords:  adaptive design; machine learning; nonresponse; panel attrition; predictive models

Year:  2019        PMID: 32802211      PMCID: PMC7425836     

Source DB:  PubMed          Journal:  Surv Res Methods        ISSN: 1864-3361


  4 in total

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Journal:  Psychol Methods       Date:  2009-12

3.  Bias in random forest variable importance measures: illustrations, sources and a solution.

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Journal:  BMC Bioinformatics       Date:  2007-01-25       Impact factor: 3.169

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Authors:  Nikhil R Garge; Georgiy Bobashev; Barry Eggleston
Journal:  BMC Bioinformatics       Date:  2013-04-11       Impact factor: 3.169

  4 in total
  5 in total

1.  Comparing the Ability of Regression Modeling and Bayesian Additive Regression Trees to Predict Costs in a Responsive Survey Design Context.

Authors:  James Wagner; Brady T West; Michael R Elliott; Stephanie Coffey
Journal:  J Off Stat       Date:  2020-12-09       Impact factor: 0.920

2.  The power of online panel paradata to predict unit nonresponse and voluntary attrition in a longitudinal design.

Authors:  Sebastian Kocar; Nicholas Biddle
Journal:  Qual Quant       Date:  2022-04-25

3.  Machine learning methods to predict attrition in a population-based cohort of very preterm infants.

Authors:  Raquel Teixeira; Carina Rodrigues; Carla Moreira; Henrique Barros; Rui Camacho
Journal:  Sci Rep       Date:  2022-06-22       Impact factor: 4.996

4.  The semi-automatic classification of an open-ended question on panel survey motivation and its application in attrition analysis.

Authors:  Anna-Carolina Haensch; Bernd Weiß; Patricia Steins; Priscilla Chyrva; Katja Bitz
Journal:  Front Big Data       Date:  2022-08-11

5.  A Novel Computer Vision Model for Medicinal Plant Identification Using Log-Gabor Filters and Deep Learning Algorithms.

Authors:  Stephen Opoku Oppong; Frimpong Twum; James Ben Hayfron-Acquah; Yaw Marfo Missah
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  5 in total

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