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A CMAC-based scheme for determining membership with classification of text strings

机译:基于CMAC的用于确定文本字符串分类的成员资格的方案

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摘要

Membership determination of text strings has been an important procedure for analyzing textual data of a tremendous amount, especially when time is a crucial factor. Bloom filter has been a well-known approach for dealing with such a problem because of its succinct structure and simple determination procedure. As determination of membership with classification is becoming increasingly desirable, parallel Bloom filters are often implemented for facilitating the additional classification requirement. The parallel Bloom filters, however, tend to produce additional false-positive errors since membership determination must be performed on each of the parallel layers. We propose a scheme based on CMAC, a neural network mapping, which only requires a single-layer calculation to simultaneously obtain information of both the membership and classification. A hash function specifically designed for text strings is also proposed. The proposed scheme could effectively reduce false-positive errors by converging the range of membership acceptance to the minimum for each class during the neural network mapping. Simulation results show that the proposed scheme committed significantly less errors than the benchmark, parallel Bloom filters, with limited and identical memory usage at different classification levels.
机译:确定文本字符串的成员资格已成为分析大量文本数据的重要过程,尤其是在时间是至关重要的因素时。布隆过滤器由于其简洁的结构和简单的确定过程而成为解决这种问题的一种众所周知的方法。随着确定具有分类的隶属关系变得越来越期望,并行布隆过滤器通常被实施以促进附加的分类要求。但是,由于必须在每个并行层上执行成员资格确定,因此并行Bloom过滤器往往会产生其他误报错误。我们提出了一种基于CMAC的方案,即神经网络映射,该方案只需要单层计算即可同时获得成员资格和分类的信息。还提出了专门为文本字符串设计的哈希函数。通过在神经网络映射过程中将每个类的成员资格接受范围收敛到最小,所提出的方案可以有效地减少假阳性错误。仿真结果表明,与不同的并行并行Bloom过滤器相比,该方案的错误率要低得多,并且在不同的分类级别上使用的内存有限且相同。

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