2023
DOI: 10.3390/e25040547
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Applications of Depth Minimization of Decision Trees Containing Hypotheses for Multiple-Value Decision Tables

Abstract: In this research, we consider decision trees that incorporate standard queries with one feature per query as well as hypotheses consisting of all features’ values. These decision trees are used to represent knowledge and are comparable to those investigated in exact learning, in which membership queries and equivalence queries are used. As an application, we look into the issue of creating decision trees for two cases: the sorting of a sequence that contains equal elements and multiple-value decision tables wh… Show more

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“…The depth parameter is set between 0 and 7 based on the recommendations highlighted in Ref. [ 46 ]. After iterating the experiment 50 times, the best classification model is found with the highest training accuracy reaching 0.96 (resp.…”
Section: Resultsmentioning
confidence: 99%
“…The depth parameter is set between 0 and 7 based on the recommendations highlighted in Ref. [ 46 ]. After iterating the experiment 50 times, the best classification model is found with the highest training accuracy reaching 0.96 (resp.…”
Section: Resultsmentioning
confidence: 99%