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CBR Meets Big Data: A Case Study of Large-Scale Adaptation Rule Generation

机译:CBR遇到大数据:以大规模适应规则生成为例

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Adaptation knowledge generation is a difficult problem for CBR. In previous work we developed ensembles of adaptation for regression (EAR), a family of methods for generating and applying ensembles of adaptation rules for case-based regression. EAR has been shown to provide good performance, but at the cost of high computational complexity. When efficiency problems result from case base growth, a common CBR approach is to focus on case base maintenance, to compress the case base. This paper presents a case study of an alternative approach, harnessing big data methods, specifically MapReduce and locality sensitive hashing (LSH), to make the EAR approach feasible for large case bases without compression. Experimental results show that the new method, BEAR, substantially increases accuracy compared to a baseline big data k-NN method using LSH. BEAR's accuracy is comparable to that of traditional k-NN without using LSH, while its processing time remains reasonable for a case base of millions of cases. We suggest that increased use of big data methods in CBR has the potential for a departure from compression-based case-base maintenance methods, with their concomitant solution quality penalty, to enable the benefits of full case bases at much larger scales.
机译:适应知识的产生对于社区康复来说是一个难题。在先前的工作中,我们开发了适应回归的合奏(EAR),这是一种用于为基于案例的回归生成和应用适应规则的合奏的方法。 EAR已被证明可以提供良好的性能,但是却以高计算复杂度为代价。当案例库增长导致效率问题时,常见的CBR方法是关注案例库维护,以压缩案例库。本文介绍了一种替代方法的案例研究,该方法利用大数据方法(尤其是MapReduce和局部敏感哈希(LSH))来使EAR方法适用于无需压缩的大型案例库。实验结果表明,与使用LSH的基线大数据k-NN方法相比,新方法BEAR大大提高了准确性。 BEAR的精度与不使用LSH的传统k-NN相当,而对于数百万个案例而言,其处理时间仍然合理。我们建议,在CBR中增加使用大数据方法可能会偏离基于压缩的案例库维护方法,并伴随其解决方案质量下降,从而在更大范围内实现完整案例库的好处。

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