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Ensemble Pruning via Individual Contribution Ordering

机译:通过个人贡献排序进行整体修剪

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摘要

An ensemble is a set of learned models that make decisions collectively. Although an ensemble is usually more accurate than a single learner, existing ensemble methods often tend to construct unnecessarily large ensembles, which increases the memory consumption and computational cost. Ensemble pruning tackles this problem by selecting a subset of ensemble members to form subensembles that are subject to less resource consumption and response time with accuracy that is similar to or better than the original ensemble. In this paper, we analyze the accuracy/diversity trade-off and prove that classifiers that are more accurate and make more predictions in the minority group are more important for subensemble construction. Based on the gained insights, a heuristic metric that considers both accuracy and diversity is proposed to explicitly evaluate each individual classifier's contribution to the whole ensemble. By incorporating ensemble members in decreasing order of their contributions, subensembles are formed such that users can select the top p percent of ensemble members, depending on their resource availability and tolerable waiting time, for predictions. Experimental results on 26 UCI data sets show that subensembles formed by the proposed EPIC (Ensemble Pruning via Individual Contribution ordering) algorithm outperform the original ensemble and a state-of-the-art ensemble pruning method, Orientation Ordering (OO) [16].
机译:整体是一组集体做出决策的学习模型。尽管合奏通常比单个学习者更准确,但是现有的合奏方法通常倾向于构造不必要的大合奏,这会增加内存消耗和计算成本。合奏修剪通过选择一组合奏成员来形成子组合来解决此问题,该子组合受更少的资源消耗和响应时间的影响,其准确性与原始合奏相近或更好。在本文中,我们分析了准确性/多样性权衡,并证明了在少数群体中更准确且能做出更多预测的分类器对于子组合的构建更为重要。基于获得的见解,提出了一种兼顾准确性和多样性的启发式指标,以明确评估每个分类器对整个集成的贡献。通过按贡献的递减顺序合并合奏成员,可以形成子集合,以便用户可以根据其资源可用性和可忍受的等待时间来选择前百分之百的合奏成员进行预测。在26个UCI数据集上的实验结果表明,由提出的EPIC(通过个体贡献排序进行集合修剪)算法形成的子集合优于原始集合和最新的集合修剪方法Orientation Ordering(OO)[16]。

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