Intelligent Analysis of Patent Data in the Biomedical Field Based on Spark Parallel Clustering Algorithm

Bailing Xu
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Abstract

Aiming at the problem of poor analysis performance of traditional patent data in the biomedical field, a parallel strategy based on the combination of Spark framework and K-means clustering algorithm was proposed. Firstly, Spark tool was used to initially process the big data. Then, K-means clustering algorithm was used to cluster and analyze the patent data, and obtain the optimal solution, so as to realize the intelligent analysis of patent data. Experimental results showed that in the same test sample data and sample classification results, compared with a single K-means clustering algorithm, the proposed parallel clustering analysis algorithm has a better classification effect on the quantity and category of patent data, which can prove that the analysis effect of parallel clustering algorithm is better. At the same time, the parallel strategy greatly improves the accuracy and speed of patent data analysis, thereby effectively improving the ability of clustering and analysis of massive data.
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基于Spark并行聚类算法的生物医学领域专利数据智能分析
针对生物医学领域传统专利数据分析性能差的问题,提出了一种基于Spark框架和K-means聚类算法相结合的并行策略。首先,使用Spark工具对大数据进行初步处理。然后,采用K-means聚类算法对专利数据进行聚类分析,得到最优解,从而实现专利数据的智能分析。实验结果表明,在相同的测试样本数据和样本分类结果下,与单一k均值聚类算法相比,所提出的并行聚类分析算法对专利数据的数量和类别具有更好的分类效果,可以证明并行聚类算法的分析效果更好。同时,并行策略大大提高了专利数据分析的准确性和速度,从而有效地提高了海量数据的聚类和分析能力。
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