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An Approach to Aggregating Ensembles of Lazy Learners That Supports Explanation

机译:支持解释的惰性学习者合奏的一种方法

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Ensemble research has shown that the aggregated output of an ensemble of predictors can be more accurate than a single predictor. This is true also for lazy learning systems like Case-Based Reasoning (CBR) and k-Nearest-Neighbour. Aggregation is normally achieved by voting in classification tasks and by averaging in regression tasks. For CBR, this increased accuracy comes at the cost of interpretability however. If we consider the use of retrieved cases for explanation to be one of the advantages of CBR then this is lost in an ensemble. This is because a large number of cases will have been retrieved by the ensemble members. In this paper we present a new technique for aggregation that obtains excellent results and identifies a small number of cases for use in explanation. This new approach might be viewed as a transformation process whereby cases are transformed from their feature based representation to a representation based on the predictions of ensemble members. This new representation produces very accurate predictions and allows a small number of similar neighbours to be identified.
机译:集成研究表明,一组预测变量的合计输出可能比单个预测变量更准确。对于基于案例的推理(CBR)和k-Nearest-Neighbour之类的惰性学习系统,也是如此。通常通过对分类任务进行投票并对回归任务进行平均来实现聚合。对于CBR,这种提高的准确性是以可解释性为代价的。如果我们认为使用检索到的案例进行解释是CBR的优势之一,那么这就是一个整体。这是因为合奏成员将检索到大量案例。在本文中,我们提出了一种新的聚合技术,该技术获得了出色的结果,并确定了少数情况用于解释。可以将这种新方法视为一种转换过程,通过这种转换过程,案例将从其基于特征的表示形式转换为基于整体成员的预测的表示形式。这种新的表示方式可以产生非常准确的预测,并可以识别少量相似的邻居。

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