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Add weighted voting to Ensemble Vote meta-learner

Telcontar120Telcontar120 Moderator, RapidMiner Certified Analyst, RapidMiner Certified Expert, MemberPosts:1,635Unicorn
edited December 2018 inProduct Ideas

合奏meta-learner投票允许你梳子ine predictions from individual models, but it currently only provides simple majority voting for classification problems. For classification problems, it would be helpful to add a parameter to allow weighted voting (basically to average the confidences of the individual components rather than 0/1 voting by classification). This is similar to what is already supported in individual learners like k-nn for example. With only majority voting, the resulting classification confidences are very "lumpy" which is unfavorable for many reasons.

Brian T.
Lindon Ventures
Data Science Consulting from Certified RapidMiner Experts
JEdward yzan Thomas_Ott laith_s_khalaf Telcontar120
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IC-1095

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