利用并行遗传算法从生物数据中发现有趣的规律

S. Dash, S. Dehuri, S. Rayaguru
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引用次数: 10

摘要

本文提出了一种基于并行遗传的关联规则挖掘方法,用于从大型生物数据库中发现有趣的规则。关联规则挖掘的Apriori算法及其变体依赖于两个用户指定的阈值参数,如最小支持度和最小置信度,这显然是一个有待解决的问题。此外,大搜索空间和局部最优性等问题也吸引了许多研究者使用启发式机制。在大型生物数据库存在的情况下,为了规避这些问题,遗传算法可能是一种合适的工具,但其计算成本是主要的瓶颈。因此,我们选择并行遗传算法来减轻计算成本的痛苦。实验结果对进一步的研究,特别是在生物科学领域的研究具有重要的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering interesting rules from biological data using parallel genetic algorithm
In this paper, a parallel genetic based association rule mining method is proposed to discover interesting rules from a large biological database. Apriori algorithms and its variants for association rule mining rely on two user specified threshold parameters such as minimum support and minimum confidence which is obviously an issue to be resolved. In addition, there are other issues like large search space and local optimality attracts many researchers to use heuristic mechanism. In the presence of large biological databases and with an aim to circumvent these problems, genetic algorithm may be taken as a suitable tool, but its computational cost is the main bottle-neck. Therefore, we choose parallel genetic algorithms to get relief from the pain of computational cost. The experimental result is promising and encouraging to do further research especially in the domain of biological science.
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