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FPGA/GPU-based Acceleration for Frequent Itemsets Mining: A Comprehensive Review

Journal

ACM COMPUTING SURVEYS
Volume 54, Issue 9, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3472289

Keywords

Frequent itemsets mining; data streams; GPU/FPGA custom hardware architectures

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Frequent Itemsets Mining is a data mining technique that has achieved notable results in various domains. However, the large volume of data in modern datasets has increased the processing time, leading to the need for new methods to accelerate the mining process. Hardware acceleration using GPUs and FPGAs is a successful alternative that can improve performance.
In data mining, Frequent Itemsets Mining is a technique used in several domains with notable results. However, the large volume of data in modern datasets increases the processing time of Frequent Itemset Mining algorithms, making them unsuitable for many real-world applications. Accordingly, proposing new methods for Frequent Itemset Mining to obtain frequent itemsets in a realistic amount of time is still an open problem. A successful alternative is to employ hardware acceleration using Graphics Processing Units (GPU) and Field Programmable Gates Arrays (FPGA). In this article, a comprehensive review of the state of the art of Frequent Itemsets Mining hardware acceleration is presented. Several approaches (FPGA and GPU based) were contrasted to show their weaknesses and strengths. This survey gathers the most relevant and the latest research efforts for improving the performance of Frequent Itemsets Mining regarding algorithms advances and modern development platforms. Furthermore, this survey organizes the current research on Frequent Itemsets Mining from the hardware perspective considering the source of the data, the development platform, and the baseline algorithm.

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