Download full text
(2.131Mb)
Citation Suggestion
Please use the following Persistent Identifier (PID) to cite this document:
https://nbn-resolving.org/urn:nbn:de:0168-ssoar-102766-3
Exports for your reference manager
Tree-Structured Model with Unbiased Variable Selection and Interaction Detection for Ranking Data
[journal article]
Abstract In this article, we propose a tree-structured method for either complete or partial rank data that incorporates covariate information into the analysis. We use conditional independence tests based on hierarchical log-linear models for three-way contingency tables to select split variables and cut po... view more
In this article, we propose a tree-structured method for either complete or partial rank data that incorporates covariate information into the analysis. We use conditional independence tests based on hierarchical log-linear models for three-way contingency tables to select split variables and cut points, and apply a simple Bonferroni rule to declare whether a node worths splitting or not. Through simulations, we also demonstrate that the proposed method is unbiased and effective in selecting informative split variables. Our proposed method can be applied across various fields to provide a flexible and robust framework for analyzing rank data and understanding how various factors affect individual judgments on ranking. This can help improve the quality of products or services and assist with informed decision making.... view less
Keywords
EVS; model; ranking; data; simulation
Classification
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods
Free Keywords
classification and regression tree; distance-based model; independence test; selection bias; EVS 1999
Document language
English
Publication Year
2023
Page/Pages
p. 448-459
Journal
Machine Learning and Knowledge Extraction, 5 (2023) 2
DOI
https://doi.org/10.3390/make5020027
ISSN
2504-4990
Status
Published Version; peer reviewed