Rule-based classifier, that extract a subset of induced rules to efficiently learn/mine while preserving the discernibility information, plays a crucial role in human-explainable artificial intelligence. However, in this era of big data, rule induction on the whole datasets is computationally intensive. So far, to the best of our knowledge, no known method focusing on accelerating rule induction has been reported. This is first study to consider the acceleration technique to reduce the scale of computation in rule induction. We propose an accelerator for rule induction based on fuzzy rough theory; the accelerator can avoid redundant computation and accelerate the building of a rule classifier. First, a rule induction method based on consistence degree, called Consistence-based Value Reduction (CVR), is proposed and used as basis to accelerate. Second, we introduce a compacted search space termed Key Set, which only contains the key instances required to update the induced rule, to conduct value reduction. The monotonicity of Key Set ensures the feasibility of our accelerator. Third, a rule-induction accelerator is designed based on Key Set, and it is theoretically guaranteed to display the same results as the unaccelerated version. Specifically, the rank preservation property of Key Set ensures consistency between the rule induction achieved by the accelerator and the unaccelerated method. Finally, extensive experiments demonstrate that the proposed accelerator can perform remarkably faster than the unaccelerated rule-based classifier methods, especially on datasets with numerous instances.
翻译:依据规则的分类器, 提取一组导出的规则, 以便在保存可辨识性信息的同时高效学习/ 采矿, 在人类可辨识的人工智能中发挥着关键作用。 但是, 在这个大数据时代, 整个数据集的规则感应是计算密集的。 到目前为止, 据我们所知, 目前还没有报告任何以加快规则感应为重点的已知方法。 这是第一次研究, 以考虑加速技术, 以降低规则感应的计算规模。 我们建议基于模糊粗糙的粗糙理论为规则感应设置一个加速器; 加速器可以避免冗余计算并加速规则分类器的建设。 首先, 一种基于一致性度的规则感应征方法, 称为基于一致性的降值降价( CVR), 被提议并用作加速的基础。 其次, 我们引入一个压缩的搜索空间, 仅包含更新规则所需的关键实例, 以降低值。 KeySet的单一性能确保我们的加速度的可行性。 第三, 一种基于一致性的未感应引入规则感应加速性计算器, 一个基于一致性的系统, 特别的精确性操作, 以显示最终的精确性方法, 显示, 和最终的保存。