Algorithms (May 2016)

Mining Branching Rules from Past Survey Data with an Illustration Using a Geriatric Assessment Survey for Older Adults with Cancer

  • Daniel R. Jeske,
  • Jeffrey Longmate,
  • Vani Katheria,
  • Arti Hurria

DOI
https://doi.org/10.3390/a9020033
Journal volume & issue
Vol. 9, no. 2
p. 33

Abstract

Read online

We construct a fast data mining algorithm that can be used to identify high-frequency response patterns in historical surveys. Identification of these patterns leads to the derivation of question branching rules that shorten the time required to complete a survey. The data mining algorithm allows the user to control the error rate that is incurred through the use of implied answers that go along with each branching rule. The context considered is binary response questions, which can be obtained from multi-level response questions through dichotomization. The algorithm is illustrated by the analysis of four sections of a geriatric assessment survey used by oncologists. Reductions in the number of questions that need to be asked in these four sections range from 33% to 54%.

Keywords