AARS:一种用于机器学习应用的基于档案的新型自适应高效计数方法

Sajib K. Biswas, Pranab K. Muhuri, Uttam K. Roy
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引用次数: 0

摘要

对于许多机器学习方法,在处理分类、聚类、预测和关联规则挖掘等问题时,计算给定查询的出现次数起着至关重要的作用。然而,这些方法通常分为两个不同的步骤,即学习和采样,由于计算成本或过多的内存消耗,对于大型数据集来说变得不切实际。因此,本文提出了一种处理计数查询的新方法。该方法是一种基于自适应归档的方法,在减少计算时间和适度的内存需求的情况下提供了有效的归档。我们进行了大量的实验来证明所提出的方法在随机查询、学习概率网络和关联规则挖掘方面的性能和可扩展性。从实验结果来看,我们所提出的方法在应用于具有更高维度和大量观测数据集的数据集时优于先前提出的ADtree, Bitmap和Radix策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AARS: A novel adaptive archive-based efficient counting method for machine learning applications
For many machine learning methods, while dealing with problems such as classification, clustering, prediction, and association rule mining, counting the occurrences of given queries plays a crucial role. However, these methods, which usually function in two different steps, i.e., learning and sampling, become impractical for large datasets due to computational costs or excessive memory consumption. Therefore, this paper proposes a novel approach to handle the counting queries. The proposed method is an adaptive archive-based method that offers efficient archiving with reduced computational time and moderate mem-ory requirements. We conduct numerous experiments to show the performance and scalability of the proposed approach on random queries, learning probabilistic networks, and association rule mining. From experimental results, we see that our proposed method outperforms the previously proposed ADtree, Bitmap and Radix strategies when applied to the datasets with higher dimensions and a large set of observations.
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